ASystematicReviewofSimulationStudies Investigating Emergency Department Overcrowding

Size: px
Start display at page:

Download "ASystematicReviewofSimulationStudies Investigating Emergency Department Overcrowding"

Transcription

1 ASystematicReviewofSimulationStudies Investigating Emergency Department Overcrowding Sharoda A. Paul Madhu C. Reddy College of Information Sciences and Technology, The Pennsylvania State University, University Park, PA , USA Christopher J. DeFlitch Department of Emergency Medicine, Penn State Hershey Medical Center, 500 University Drive, Hershey, PA , USA The problem of emergency department (ED) overcrowding has reached crisis proportions in the last decade. In 2005, the National Academy of Engineering and the Institute of Medicine reported on the important role of simulation as a systems analysis tool that can have an impact on care processes at the care-team, organizational, and environmental levels. Simulation has been widely used to understand causes of ED overcrowding and to test interventions to alleviate its effects. In this paper, we present a systematic review of ED simulation literature from 1970 to 2006 from healthcare, systems engineering, operations research and computer science publication venues. The goals of this review are to highlight the contributions of these simulation studies to our understanding of ED overcrowding and to discuss how simulation can be better used as a tool to address this problem. We found that simulation studies provide important insights into ED overcrowding but they also had major limitations that must be addressed. Keywords: emergency department simulations, literature review, emergency department, overcrowding, simulation 1. Introduction The major role of the emergency department (ED) is to provide care for acutely ill and injured patients 24 hours SIMULATION, Vol. 86, Issue 8-9, August-September c 2010 The Society for Modeling and Simulation International DOI: / Figure 1appearsincoloronline: aday,7daysaweek.theusemergencymedicaltreatment and Active Labor Act (EMTALA) requires that all ED patients must be provided with medical screening and stabilization of their conditions, irrespective of their ability to pay [1]. As a result, EDs care not only for acutely ill patients but also for under-served populations who have no other options for medical care because of socioeconomic barriers [2]. Thus, the ED is the safety net of the healthcare system due to its role in providing care to uninsured, indigent and otherwise vulnerable patients [3, 4]. Volume 86, Numbers 8-9 SIMULATION 559

2 Paul, Reddy, and DeFlitch One of the main problems facing EDs is overcrowding this problem has now reached crisis proportions [2, 5 8]. Between 1993 and 2003, ED visits in the United States increased by 23.6 million, while at the same time 425 EDs closed and total hospital beds declined by 198,000 [9]. ED overcrowding manifests itself in many different ways: an excessive number of patients in the ED, patients being treated in hallways [8], ambulance diversions [10], long patient wait times, and patients leaving without treatment. ED overcrowding leads to increased medical errors [2], poor patient outcomes [11, 12], high levels of stress, decreased morale among ED staff, and decreased capacity of EDs to respond to mass casualty incidents [9]. Other effects of ED overcrowding are patient dissatisfaction, decreased physician productivity, violence, negative effects on teaching missions in academic EDs, and miscommunication [13]. Research on addressing the problem of ED overcrowding has primarily fallen into three categories: descriptive, predictive and intervention-oriented. Descriptive studies have focused on defining overcrowding [14], examining the causes and effects of overcrowding [2, 7, 8, 10] and proposing models [15] to describe the problem and measures to quantify it [16 23]. Predictive studies have focused on measures [20] to predict when an ED will become overcrowded and development of early warning systems for impending overcrowding episodes [24, 25]. Such predictive models assume that extra resources, such as reserve personnel and auxiliary treatment bays, will be deployed once the ED is alerted to an impending overcrowding episode. However, given the limited availability of resources caused by cuts in hospital funding [13], a third stream of research, intervention-oriented studies, has focused on interventions to optimize available resources and processes. These interventions include monitoring code red hours and patient length of stay (LOS), educating physicians regarding non-ed options for patients [26], and re-designing processes [27] and patient flows [28, 29]. In 2000 and 2001, the Institute of Medicine (IOM) published two reports, To Err is Human [30] and Crossing the Quality Chasm [31], which highlighted the deficiencies in current care processes and urged stakeholders in the American healthcare system to take steps to improve quality and efficiency of care. In response, the National Academy of Engineering (NAE) collaborated with the IOM to report on the important role of systems engineering tools in improving and optimizing care processes [32]. This report stressed that there is a knowledge/awareness divide separating healthcare professionals from their potential partners in the engineering fields and that bridging this gap is key to increasing the quality and productivity of healthcare. It emphasized the utility of simulation as a systems analysis tool that can have a positive impact on care processes at the care-team, organizational, and environmental levels. In the ED, simulation has been has been extensively applied to test what if scenarios to combat overcrowding [33 35]. These simulation studies have proposed several solutions to alleviate overcrowding. In this paper, we present a systematic review of the ED simulation literature from 1970 to 2006 from the fields of healthcare, systems engineering, operations research, and computer science. The goals of this review are to highlight the contributions that simulation studies make to our understanding of the problem of ED overcrowding, and discuss how simulation can be better used as a tool to address this problem. This paper is organized in the following manner. The next section provides background on the role of simulation in understanding ED overcrowding. Then, the Section 3 describes the process we used for selecting studies. Next, we report the findings of the simulation studies in Section 4. In Section 5, we present insights gained from these studies, the limitations of current studies, and directions for future research. We conclude with some final thoughts of how simulation can be used as a tool to address ED overcrowding. 2. The Role of Simulation in ED Overcrowding Several solutions have been proposed to alleviate the effects of ED overcrowding including providing patients with better access to clinics, expanding ED square footage and beds, improving support by radiology, laboratory, and consultant services, and reducing incoming transfers to the ED during busy periods [13]. Fatovich and Hirsch [10] proposed stop-gap measures such as increasing ED capacity, increasing human and physical resources, and improving discharge processes to deal with overcrowding. Most of these proposed solutions call for increasing capacity and resources. However, because of economic constraints, most hospitals do not have extra resources to deploy. Therefore, there is a need to focus on optimizing existing resources and processes. Systems analysis tools can play an important role in this process. Systems analysis tools are used by engineers to understand how complex systems operate, how well these systems meet operational goals, and how they can be improved [32]. Such tools can be used for enterprise management, financial engineering and risk analysis, and knowledge discovery. Simulation, an important systems analysis tool, provides great flexibility in testing scenarios, hypotheses, policies, and re-engineering ideas in healthcare settings. It can be used as research tool, education device, decisionmaking tool and planning model [36]. Pritsker [37] defined simulation as the development of a mathematical/logical model of a system and the experimental manipulation of the model on a computer. To study a system, a model, which is a set of mathematical or logical assumptions about the system, is created. The model is then either solved via mathematical methods (i.e. an analytic solution) or evaluated numerically using a computer (i.e. a simulation) [38]. Simulation has been used in an array of healthcare settings ranging from hospital sub-systems and outpatient 560 SIMULATION Volume 86, Numbers 8-9

3 A SYSTEMATIC REVIEW OF SIMULATION STUDIES INVESTIGATING EMERGENCY DEPARTMENT OVERCROWDING Figure 1. Identified simulation studies by year departments [39] to national healthcare systems [40]. In the late 1970s, England and Roberts [41] reported 21 areas of application of simulation in healthcare including hospitals, ambulatory care, manpower planning and forecasting, community, regional and national health systems, and education. In hospitals, simulation research has been applied to areas such as admission control systems, bed planning, ambulance and emergency services, labs and radiology, and surgery. Simulation studies have also focused on understanding the care planning process [42], tracing the spread of diseases and epidemics, and virtual reality simulations for training [43]. The earliest efforts in simulating emergency services date back to the mid-1960s [44]. Starting with Bolling s study [45] in 1972, simulation studies of EDs have provided valuable insight into factors and reasons for overcrowding [46]. 3. Methods We used a two-phase approach to identify simulation studies relevant to ED overcrowding. In the first phase, we searched the databases of Proquest, PubMed, ACM, IEEE, and the Systems Dynamics Conference from 1970 to These databases are the comprehensive sources of literature in computer science, operations management, healthcare, and engineering fields. We used the search phrases emergency department simulation, emergency department patient flows and other combinations of these phrases (e.g. emergency department flow simulation ). We defined relevant documents as those studies that used simulation to understand the problem of overcrowding, effects of overcrowding (e.g. long patient wait times), and/or proposed solutions to the overcrowding problem. We did not include studies that had merely modeled the ED but did not perform computer simulations of the model. Using the various search phrases, we found 37 relevant documents. In the second phase, we examined the references of these 37 documents for additional studies that met our criteria and found 6 additional studies. After this phase, we had a total of 43 simulation studies. Most of these studies were conducted after 1990 (Figure 1 shows the distribution of studies by year). Of the 43 simulation studies, 24 (56%) studies were published in computer science venues, 9 (21%) in medical and health sciences venues, 5 (12%) in operations research and management venues, 4 (9%) in industrial engineering venues, and 1 (2%) in other venues. Of these studies, we were able to access 32 via online and print sources. Some of the early studies were not available online and we did not have access to the print versions. 4. Results We analyzed the simulation studies with respect to: (1) their motivation and goals (2) the modeling techniques used (3) the data sources and collection methods (4) patient classification and patient flows and (5) study findings. 4.1 Motivation and Goals Few studies mentioned explicitly that their motivation was the desire to create a general model of overcrowding in EDs [47], or to decrease levels of overcrowding [48]. Instead, the motivations for most studies were related to costs and competition, efficiency, re-engineering, and quality of service (Table 1). Given the motivations to cut costs and increase efficiency, one of the primary goals of these studies were to examine causes of inefficiencies in processes and resource utilization. Therefore, studies examined patient flows [49] and bottlenecks in flows [34, 50], causes of excessive wait times [49, 51], and patient throughput [35]. A few studies also evaluated the effects of introducing fast care for low acuity patients [33, 52], Volume 86, Numbers 8-9 SIMULATION 561

4 Paul, Reddy, and DeFlitch Table 1. Motivation of the simulation studies Costs and competition Rising costs [33, 64] Motivations Decrease or control costs of operation [65 67] High costs of building, equipment, and staffing [62] Reduce staffing levels without decreasing efficiency [68] Rising competition [59, 65] Reduced patient visits [69] Increase corporate customer base without decreasing quality [54] Efficiency Inefficiencies [33] Increase efficiency [67] More efficient staff utilization [59] Overloaded ED staff [70] Staff scheduling to meet unpredictable workload patterns [60] Doctors had the highest average utilization, were not appropriately assigned and were the bottlenecks of the system [55] Develop a general tool for evaluating policy changes for improving productivity and efficiency in the ED [53] Re-engineering Increase in ED size and separation of ambulance patients from outpatients [49] Improve the ER process [71] New ED with lab and X-ray facilities [72]. Quality of service Excessive patient wait times [34, 50, 51, 56, 63, 66, 70, 73, 74] Long patient wait times for low acuity patients [52, 73] High LOS of patients [35] Lack of ED capacity [70, 74] High withdrawal rates of patients [70] ED on ambulance diversion status often [35] Increased patient dissatisfaction [69] not providing care to low acuity patients [53], and redesigning processes to reduce patient LOS [54]. A second major goal was to optimize resources such as staff and beds. Several studies examined alternative staff schedules [55 57], assessed the effect of different staff schedules on wait times [58, 59], and quality of service [60] in order to recommend cost-effective schedules. Since beds are an important resource in the ED, studies examined critical bed requirements [61, 62] and the impact of bed availability on wait times of admitted patients [50, 63]. 4.2 Modeling Techniques The studies utilized a variety of modeling techniques including discrete-event [47 49, 51, 55, 58, 60, 67, 73, 75], systems dynamics [63], and conceptual [64, 71] and mathematical modeling [68]. Asimulationmodelcanbedeterministic (if it does not contain any random variables) or stochastic (if it contains one or more random variables) [38]. Stochastic processes are governed by probabilistic laws and have been applied to study various aspects of health systems since the early 1950s [76]. We found that most often the ED was modeled as a stochastic system since the inter-arrival times and service times of patients are considered random variables. The ED was also primarily modeled as a discrete system. Discrete event simulation has been used extensively in examining patient flows and allocation of resources in healthcare clinics [77] and was the most popular simulation technique in the studies we reviewed. Queuing models are discrete-event models used to represent customers queuing to gain access to limited resources and have been used to simulate unscheduled patient arrivals in EDs, operating rooms (ORs), intensive care units (ICUs), blood clinics, and X-ray departments. For instance, Liyanage and Gale [74] used queuing theory to develop a simulation to find the optimal number of resources that would minimize the mean operating cost of the ED. Some discrete-event models [53, 57, 70] were written in SLAM (Simulation Language for Alternative Modeling), a process-oriented simulation language developed by Pegden and Pritsker (see [38]). Using SLAM, the ED can be pictorially represented as a network of nodes and branches through which patients flow. Other discrete-event modeling tools include Arena [34, 35, 49, 51, 54, 56, 59, 65, 68], Extend [48, 64], SIMAN [60, 73], and SIMUL-8 [58]. Another modeling technique used was systems dynamics [78]. This technique is used to model the complexity in large systems and has been successfully applied to business modeling [79]. The systems dynamics tool ithink was used for such models [63]. While discrete-event simulations can be used to create detailed models of subsystems within healthcare, systems dynamics enables a systemic view of the interactions of patient flows and information. Finally, conceptual modeling was used in some studies to create process maps and documentation. 4.3 Data Sources and Collection Methods The simulation studies used a wide variety of data sources as inputs to their models. The data collection techniques included interviews with care providers and management, observations, historical data from ED databases, patient charts, time and motion studies, and using automated datetime stamping machines (Table 2). Hospital databases and information systems, patient charts and medical records all play an important role in obtaining data on arrival patterns, time spent on different activities by care providers, and inter-arrival times and LOS distributions. Data obtained about inter-arrival times and service times [34, 35, 52], volume and mix of patients 562 SIMULATION Volume 86, Numbers 8-9

5 A SYSTEMATIC REVIEW OF SIMULATION STUDIES INVESTIGATING EMERGENCY DEPARTMENT OVERCROWDING Table 2. Data collection sources for modeling the ED Data source Hospital databases information and systems Medical records Data obtained Historical patient data Arrival patterns of patients and number in each priority category [58] Time spent for each activity [58] Distribution of patients arrival times by time of day and day of the week [59] Determine inter-arrival time and LOS distributions [61] Arrival rates and service times Observations Shift patterns [73] Patient charts Arrival times, mode of arrival, tests performed, discharge time [69] Surveys Identify patient flows and common CCU configurations [61] ED logs Patient volume and mix data [75] Interviews ED staff activity data [75] Time studies Registration time of patients [60] Paid ED staff Bed management Times of entry, service, exit etc. Data on admissions [50], staffing levels [60, 74], and types and duration of treatment [54] were used to determine model inputs and outputs. 4.4 Patient Classification and Flows There was no single approach to classifying patients. Different studies categorized patients along different dimensions. The three main dimensions of categorization were mode of arrival, level of acuity, and case type. The mode of arrival of patients was helicopter, ambulance, or walkin. In the emergency care domain, the most common way to categorize patients according to acuity is emergency, urgency, and non-urgency [72]. However, different EDs used different terms to track levels of acuity including degrees (e.g. first, second), levels [60, 80] (e.g. I V), trauma levels (e.g. major, minor), and ESI-5 levels [33]. Similarly, there was a variety of ways to categorize patients by case type, including by chief complaint [69] (e.g. abdominal pain, laceration), specialty (e.g. internal, surgical), and even treatment areas [50] (e.g. fast-track patients, observation room patients). Some studies categorized patients by combining these dimensions, such as Clark and Waring [57] who combined mode of arrival with level of acuity (e.g. critical walk-in), and Sinreich and Marmor [67] who combined mode of arrival with case type (e.g. walk-in surgical). In most studies, different patient flows were modeled for each category of patients. The wide variety of patient categories lead to a variety of patient flows across studies. Patient flows were based on patient entry mode [52, 75], patient acuity [60, 73], number and types of resources needed [72], and the need for auxiliary services such as labs and X-rays [55]. Some flows were based on a combination of these factors. 4.5 Study Findings The scenarios tested by the simulation studies can be broadly categorized as resource-related, process-related, and environment-related (Table 3). Resources in the ED were human, equipment, and space resources. Resource-related scenarios focused on changing levels of resources, allocation, and reallocation of resources. Process-related scenarios focused on changing processes in the ED, including how processes were performed, as well as when certain processes were done. Environment-related scenarios focused on variables external to EDs such as demand patterns and characteristics of hospital units which interface with the ED Resource-Related Findings Space Space in the ED, defined in terms of beds or rooms, is an important resource. During periods of overcrowding, patients experience their most significant delay waiting for an ED bed [81]. Takakuwa and Shiozaki [49] found that 59% of the waiting time in the ED was for beds. Komashie and Mousavi [51] tested two different scenarios regarding beds in the minor treatment area or minors of their ED. In scenario 1, they added an extra bed to the minors area, but, in scenario 2, they added six extra beds to the area. Surprisingly, they found very little improvement in LOS in scenario 2 as compared with scenario 1. They did find that queuing time for beds went down 83% in scenario 2 however, there was a significant increase in wait times for nurses and doctors. Their study highlighted that adding extra beds merely shifted the queues from the waiting room to the bed. Samaha et al. [35] also found that adding beds or square footage to the ED did not shorten LOS. These results are corroborated by recent findings that increase in ED bed capacity does not decrease ambulance diversions (an indicator of overcrowding) and might even lead to an increase in LOS [82]. Studies also examined the effects of re-using space or rooms in the absence of adequate beds. Kirtland et al. [69] found that placing patients in the treatment area when beds were not available instead of sending them back to waiting area saved 14.1 minutes. McGuire [66] found that having aseparateholdingareaforadmittedpatientswaitingfor test results saved 22 minutes per patient on average, and Kirtland et al. [69] found that using an internal waiting room for patients awaiting lab and X-ray results would be useful when the ED is very busy. Volume 86, Numbers 8-9 SIMULATION 563

6 Paul, Reddy, and DeFlitch Table 3. Categorization of scenarios tested Resource-related Process-related Space Varying the number of beds or rooms available [49, 51, 62, 63, 70] Having a single holding area instead of one room per patient [71] Using an internal waiting room for patients waiting for lab results [66, 69] Human resources Alternative staff scheduling [55 60, 68, 71, 75] Varying the number of ED staff available [34, 35, 69, 70, 80] Varying resident availability [35, 73] Varying the number of non-ed staff [49] Adding a dedicated triage nurse [34] Addition of a registration clerk during peak hours [66] Estimating the optimal number of servers that will minimize the mean operating cost of the system [74] Equipment Varying the number of implements in the drip room and stretchers [49] Installing lab and X-ray facilities in ED [72] Procedural Addition of fast-track [35, 52, 69, 71] Take patient back to open treatment rooms instead of keeping in waiting rooms [69] Change triage protocols so triage nurse can order certain tests [69, 71] Allowing nurse to order testing/treatment without participation of physician [71] Changing criteria used for sending patients to fast-track areas [66] Priority given to only Category 1 patients, rest treated on a first-come-first-served basis [80] Not serving Category 5 patients [80] Triaging patients into different categories [72] Scheduling non-emergency patients so as to smooth demand [72] Temporal Reducing lab turn-around time [64, 66, 69] Initiate search for admission room earlier [69] Discharging inpatients earlier [64] Extend hours of fast-track and pediatric clinic [66] Environment-related Varying patient demand [54, 63, 70, 72] Varying percentage of true emergency patients [72] Adding inpatient beds [64] Varying number of beds in different locations or units of hospital [34, 50] Reduce time for bed notifications from Medical Telemetry Unit (MTU) to ED, decrease number of patients being admitted to MTU [34] Varying queue discipline [73] Human and Equipment Resources Simulation studies focused on two major resources other than beds: human and equipment resources. One cause of inefficiency in EDs is that due to the sporadic demand, the staff are idle at times and overworked at other times [72]. Hence, several simulation studies were interested in examining the effects of alternative staff schedules on waiting times and LOS [55 60, 68, 71, 75]. Rossetti et al. [59] simulated 18 attending staff schedules and identified a schedule that decreased average patient time in the ED by 14.5 minutes/patient. Based on the simulation, they found that this schedule also decreased physician utilization and percentage of long visits. Coats and Michalis [58] compared different shift patterns via simulation and found that the doctor shift pattern that best matched the patient arrival pattern gave the shortest wait times. Queuing analysis techniques were used to match staffing patterns to ED demand [83]. Tan et al. [55] used preliminary queuing analysis to develop an alternative doctor schedule and compared it with the current schedule via simulation. The results identified the doctor s station as the bottleneck. The new schedule increased the capacity of the bottleneck and hence reduced patient time in the system. Clark and Waring [57] tested whether doctor and nurse scheduling would affect the time spent waiting 564 SIMULATION Volume 86, Numbers 8-9

7 A SYSTEMATIC REVIEW OF SIMULATION STUDIES INVESTIGATING EMERGENCY DEPARTMENT OVERCROWDING to see a doctor, the total time in the system, the utilization rate of doctors, and the utilization rate of nurses. They found that scheduling of physicians will have a significant effect on waiting times. However, the nurses schedule did not have the same impact. Evans et al. [56] tested alternative schedules containing different numbers of nurses and technicians but the same number of doctors as the actual system and found only a 5-minute reduction in average LOS. These finding, which seem to indicate that nurse scheduling does not significantly impact waiting times, are interesting given the large amount of research focusing on optimizing nursing allocation in various parts of the hospital [76]. Although equipment is an important resource, only a few studies examined the effects of adding equipment to the ED. Hannan et al. [72] found that installation of lab and X-rays in the ED had the same effect as hiring an additional nurse and physician. Takakuwa and Shiozaki [49] looked at the effects of varying the number of stretchers and implements in the drip room. Some studies aimed at determining the optimal resources required to minimize the mean operating cost of the system [74] and successfully support the patient demand [70]. Takakuwa and Shiozaki [49] adjusted the number of rooms, internists, surgeons, pediatricians, implements in the drip room, stretchers, etc., and found that there was no optimal configuration of these resources which can lead to the lowest waiting time Process-Related Findings The simulation studies examined several procedural changes to alleviate the effects of ED overcrowding. Most studies found that establishing a fast-track path for low acuity patients was effective in decreasing wait times without negatively impacting quality of care [84]. Samaha et al. [35] simulated all routine patients being directed to fast-track and found a considerable reduction in LOS. Similarly, Kirtland et al. [69] found that fast-track saved 15.5 minutes in the ED. Pallin and Kittell [71] simulated fast-tracking by eliminating return visits and found a 50% reduction in staff and resources due to the fast-tracking. Garcia et al. [52] found that taking one nurse and bed from the ED and using them in a fast-track would significantly lower flow time for low acuity patients. McGuire [66] also found that extending the hours of the fast-track led to a 16- minute decrease in LOS. However, they found that waiting time was not affected by initiating search for admission rooms earlier in the process. Samaha et al. [35] found that bedside registration would not reduce LOS and would be costly to implement but, a recent empirical study found that including bedside registration in the process did decrease LOS [85]. Some procedural scenarios looked at changing standard protocols in the ED to reduce wait-times. Studies found that changing triage protocols so triage nurses could order tests and X-rays saved 3.6 minutes [69]. Pallin and Kittell [71] tested a protocol to allow nurses to order testing/treatment without participation of physician but did not mention the results of simulating this scenario. Laboratory turnaround times add to waiting times in the ED and can be decreased significantly with point-of-care lab testing [86]. McGuire [66] found that reducing lab turnaround time decreased LOS. Kirtland et al. [69] found that using I-stat machines in the ED for point-of-care testing saved 8.4 minutes Environment-Related Findings Many simulation studies also focused on the effects of factors external to EDs that can cause overcrowding. A major cause of overcrowding is the unavailability of inpatient beds and inpatient bed occupancy has been found to be strongly correlated with ED LOS [87]. Miller et al. [64] found that adding 30 inpatients beds would cut LOS by half. Gonzalez et al. [70] found that increasing the number of beds to which ED patients can be admitted would maximize profits and minimize waiting time. Lane et al. [63] examined how reductions in bed capacity in the hospital wards affected patient waiting times in the ED. They examined the ED as part of the larger hospitalwide system and considered emergency patients and elective treatment patients. They found that removing hospital beds did not increase ED waiting time, but did cause more cancellations of elective procedures. Elbeyli and Krishnan [50] found that adding beds to step-down units and other specialized units decreased the average time of patients waiting to be admitted from the ED. Blasak et al. [34] investigated how the interface between the ED and the Medical Telemetry Unit (MTU) affected wait times in the ED. They found that they needed to reduce the time for bed notifications from MTU to ED, decrease number of non-ed patients being admitted to MTU and decrease LOS in MTU [34] to reduce waiting times for ED patients. Two of the primary uncontrollable external features of the ED environment are patient demand and mix of patient types. Studies have examined the effects of changes in patient demand on wait times. Hannan et al. [72] tested the effects of increased demand and increased percentage of true emergency patients. They also examined scheduling non-emergency patients to reduce demand. They found that when demand increased above 20%, the waiting times for emergency patients did not change much, but the nonemergency patients had to wait longer. Baesler et al. [54] used their simulation to find the maximum demand that the ED would be able to handle without the average patient time exceeding 100 minutes. They found that this would happen when the demand increased by 130%. To handle this increase in demand and keep the wait time under 100 minutes, the ED would need four full-time doctors and one half-time doctor. Volume 86, Numbers 8-9 SIMULATION 565

8 Paul, Reddy, and DeFlitch 5. Discussion After analyzing the simulation studies, we found that they provided useful insights into the problems of ED overcrowding. However, at the same time, we found major limitations to the studies that must be addressed if they are to help us to better understand and alleviate ED overcrowding. 5.1 Insights from Simulation Studies The simulation studies highlighted a number of important issues that we must consider as we try to address ED overcrowding. First, the conventional solution to ED overcrowding is increasing available ED space (e.g. increase the number of ED beds). However, the simulation studies have clearly shown that while increasing ED space may provide shortterm relief by allowing more patients to be admitted to the ED, this would not necessarily reduce patient wait times. The patient queues would merely shift from the waiting rooms to the bedside. Therefore, although beds are an important resource, a more critical resource are the physicians because they are often the bottleneck of the system and the most utilized resource [55]. Most improvements in waiting times and LOS resulted from more effective scheduling of doctors [55, 57, 59], eliminating non-patient care duties from doctors duties [73] and using doctors in the fast-track. Blake and Carter [73] came to an interesting but counter-intuitive finding that while most processes with service problems are improved by adding manpower, the performance of the ED is negatively affected by the addition of residents since the time spent by attending physicians in resident education as opposed to direct patient care decreases the benefits of adding more manpower. Second, many studies found that the problems in the ED were process-related [35]. Improvements in processes, such as fast-tracking and reducing lab turn-around times, reduced wait times. Changing procedures and protocols in the ED such as placing patients in separate areas when they are waiting for test results, and having the triage nurse order tests and X-rays, also saved time. However, although afewprocessessuchasfast-trackingprovidedpositiveresults across studies, most process improvements were EDspecific. For instance, Kirtland et al. [69] found no significant time saving for using an internal waiting room for patients waiting for lab and X-ray results except when the ED was very busy but McGuire [66] found that having a separate holding area for admitted patients waiting for test results saved 22 minutes per patient. Similarly, Blasak et al. [34] found that adding a dedicated triage nurse would create a bottleneck but Gonzalez et al. [70] recommended the addition of a nurse to perform administrative work such as following up room availability. Therefore, while there is consensus that process-related issues are critical to an ED s ability to handle overcrowding, there is little consensus on the specific process changes that can be applied across all EDs. Rather, each ED must identify its own unique characteristics and processes when trying to deal with the problem of overcrowding. Third, the ED is part of a larger and more complex hospital system and is affected by many external factors. As the recent IOM report on ED overcrowding states [9], overcrowding is a system-wide issue that must be addressed across multiple hospital units and care settings. Hence, it is important to understand the relationships of the ED with other units of the hospital. Environmentrelated changes, such as variable patient demand, are outside the control of EDs. However, simulation of various demand patterns can help EDs predict resource levels needed to meet those demands. In the simulation studies, adding beds to units that interfaced with the ED invariably led to decrease in LOS for ED patients waiting to be admitted to those units. Reducing time for bed notifications from other units to the ED also improved wait times. These results indicate that there is a strong interconnectedness between the ED and the rest of the hospital. Lane et al. s study [63] revealed that the effects of changes in the ED may not be reflected within the ED but in other parts of the hospital. For instance, they found that reductions in hospital beds did not have an impact on ED wait times but resulted in cancellations of elective procedures. They concluded that policy changes must be based on an understanding of how EDs connected to pre-hospital services, to the rest of the hospital, and the surrounding community. 5.2 Limitations of Simulation Studies Although the simulation studies provided important insights into the problem of ED overcrowding, they had limitations that affected their usefulness in helping deal with the problem. First, patient flows were viewed in these studies in an overly simplistic manner. There are two aspects of patient flows in healthcare: clinical and operational [88]. From a clinical perspective, a patient flow is the progression of a patient s health status from an operational perspective, a patient flow is the movement of a patient through various locations or stations in a hospital. In the ED, the clinical and operational aspects of flows are often intertwined since the patient s health status (case type and level of acuity) typically determines which treatment stations they visit. This leads to a large variety of patient flows in the ED. For instance, Takakuwa and Shiozaki [49] found 70 patterns of patient flows for 9 patient categories in a single ED. The process of modeling this variety of patient flows is difficult and time-consuming. Therefore, for the sake of simplicity, most flows were modeled as linear, that is, patients moved in a sequential manner from station to station. However, in reality patients might undergo several care processes at the same time. The overlaps and interde- 566 SIMULATION Volume 86, Numbers 8-9

9 A SYSTEMATIC REVIEW OF SIMULATION STUDIES INVESTIGATING EMERGENCY DEPARTMENT OVERCROWDING pendencies between components of patient flows were not modeled in the simulation studies. Second, many studies did not incorporate information flows when modeling patient flows. The healthcare process can be viewed as a series of informationprocessing steps starting from the initial collection of data about the patient s condition to forming a hypothesis and testing it by collection of more data [32]. Given the variety of information required at each step of the patient flow, and the multitude of information and communication technologies used in modern EDs [32], information flows are closely linked to patient flows. These information flows are a crucial aspect of the modeling in an ED but have not been addressed by the simulation literature. Also, simulation studies have not considered the role of information and communication technologies (ICTs) within EDs. ICTs such as electronic medical record (EMR) systems, electronic dashboards, radio frequency identification (RFID), wireless registration, and mobile computing devices are being used in EDs to help with clinical documentation, decision-support, information management, and coordination of patient flows [9]. These ICTs have the potential to significantly impact ED overcrowding. By not incorporating ICTs into the simulations, the studies have failed to capture an important resource. Third, the lack of standardization of workflow, care practices, patient categories, and patient flows across EDs makes it hard to design a generic model of an ED for use in a simulation. Sinreich and Marmor [67] developed a generictoolflexibleenoughtomodelanyed.they classified EDs into four basic types based on two factors: ED physician type, i.e. whether the ED physician specialized in emergency medicine or other areas, and patients condition, i.e. how the ED processed acute and ambulatory patients. However, given the wide variety of processes, this classification may not be sufficient. As a result, most simulation studies had to create ED-specific models, which in turn lead to ED-specific solutions that could not be generalized to other EDs. Fourth, the purpose of data acquisition is to estimate the parameters of the system and to validate the model. The time, cost, and difficulty associated with obtaining empirical data for simulation models has been a challenge [36]. Although arrival patterns and patient volume/mix data can usually be obtained from information systems and medical charts, service times can only be obtained through observation and time/motion studies. However, placing researchers in overcrowded EDs is often difficult due to the fast-paced nature of the environment and patient privacy issues. One approach is to pay ED staff for data collection [72] or to use self-reported work sampling techniques to gather data [59]. However, the success of these techniques depends on the busy care-giver to collect the data. The difficulty of collecting this type of data was highlighted in the following study. Rossetti et al. [59] obtained a list of 16,250 standardized elements, i.e. operations that a patient goes through or which a member of the staff performs, from five hospitals it took 1,350 man-hours to conduct time and motion studies to measure service times for all elements. A simulation model is only as accurate as the data used to build it. Therefore, the difficulty in capturing reliable data can lead to inaccurate simulation results. 5.3 Future Research Directions We have three suggestions for future research directions for simulation studies. First, simulation models need to capture human behavior. In 1975, Valinsky [36] noted that there had been little work on modeling the human elements of the healthcare system, such as the patient, medical staff, and administrators within the health field. More than 30 years later, this is still the case. The simulation models we reviewed have not examined the physiological, psychological, and social aspects of patient care in EDs. Providers and patients behavior is directed by beliefs, attitudes, and expectations. Therefore, an important question to answer is how these beliefs and attitudes can be modeled or if this is an aspect of patient care that is irrelevant to simulation modeling. To incorporate elements of human behavior in healthcare simulations, simulation research can draw on the fields of human computer interaction (HCI) and computer-supported cooperative work (CSCW) which have studied the cognitive and social aspects of human behavior, such as emotion [89], communication [90], collaboration [91, 92], and the social organization of work [93] in healthcare settings. Simulation researchers can apply findings from these fields about the behavior of patients and healthcare providers to model human interactions as part of the ED. Second, we need to study the ED as part of a larger system. In simulation modeling, the choice of system depends on the objectives of the study [38]. In most studies, the objective was to improve efficiency and cut costs of operation and the ED was studied as an isolated unit. The interactions/interfaces between ED and other services such as EMS, labs, and the rest of the hospital were not modeled in most studies. However, factors external to the ED, such as hospital bed occupancy, strongly affect ED length of stay [87]. Research has also shown that interventions aimed at factors external to the ED have been most successful in reducing ED overcrowding [26]. Therefore, simulation studies need to focus more on the role of the ED with the context of the larger hospital system. This can be done by incorporating other hospital units that interface with the ED as part of the model. Simulation studies can draw on research from fields such as CSCW which have examined the effects of patient flows between the ED and other hospital units [94]. Incorporating external factors might lead to complex models and certain types of simulation are better suited for such models. Discrete-event simulation, the most popular technique in the reviewed studies, is not well suited Volume 86, Numbers 8-9 SIMULATION 567

10 Paul, Reddy, and DeFlitch to studying complex integrated systems in healthcare because of the high level of complexity and data requirements of such simulations, as well as the time and cost associated [77]. However, it provides excellent micro-level analysis of the ED. Systems dynamics techniques can be used to understand the inter-relations between the ED and the rest of the healthcare system but do not assist managers in micro-level analysis. Therefore, researchers need to examine ways to combine different techniques such as discrete-event and systems dynamics techniques to provide multi-level views of the problem [95]. Third, we need to focus on the individual level of care and incorporate the patient perspective. The IOM report [32] states that the ultimate purpose of systems tools should be to ensure that the system is responsive to patient needs. However, systems tools have not been widely applied at the individual level of care because the focus of these tools has been at the team and organization level. Therefore, systems tools may need to be combined with other individual level tools such as quality function deployment, to design processes that meet the level of service a patient/customer wants, and human factors engineering to improve the patient provider interactions. Furthermore, researchers have focused on the problem from the perspective of the healthcare manager instead of the patient. In studying ED overcrowding, little attention has been paid to how overcrowding affects quality of care and patient outcomes [96]. Therefore, measures of overcrowding have only been weakly associated with quality of care [18]. The simulation studies reflected the same bias by focusing mostly on improving efficiency, cutting costs, and optimizing processes and resources. Only a few studies were concerned with the direct impact on patient care or were motivated by reducing patient wait times, LOS, and dissatisfaction with care. Therefore, we need to examine how to incorporate patient care needs into the simulation models. 6. Conclusions ED overcrowding is a serious and growing problem threatening the safety net of the healthcare system. Simulation tools provide an important method to investigate overcrowding issues and explore solutions to this problem. Through a review of the last 30 years of simulation research focusing on ED overcrowding, we have identified a variety of features that these studies have in common. Although simulation has been useful in identifying critical resources and process improvements that can alleviate overcrowding, these studies still have severe limitations that must be addressed. Most interventions proposed by the simulation studies have been EDspecific and are not generalizable. Future simulation efforts must incorporate a patient perspective, the role of information and communication technologies, and environmental features in order to develop solutions to ED overcrowding. Simulation is a powerful tool that researchers can deploy to confront the problem of ED overcrowding. 7. References [1] Lee, T.M An EMTALA primer: the impact of changes in the emergency medicine landscape on EMTALA compliance and enforcement.annalsofhealthlaw, 13: [2] Trzeciak, S. and E.P. Rivers Emergency department overcrowding in the United States: an emerging threat to patient safety and public health. EmergencyMedicineJournal, 20: [3] Altman, S.H Statement from the Chair. Committee on the Changing Market, Managed Care, and the Future Viability of Safety Net Providers. Available at: Accessed 1 April [4] Institute of Medicine Committee on the Changing Market and the Future Viability of Safety Net Providers America s Health Care Safety Net: Intact but Endangered, ed.m.lewinands. Altman. Washington, DC: National Academies Press. [5] Richardson, L. and U. Hwang America s health care safety net: intact or unraveling. AcademicEmergencyMedicine, 8(11): [6] American Academy of Pediatrics Committee on Pediatric Emergency Medicine Overcrowding crisis in our nation s emergency departments: is our safety net unraveling? Pediatrics 114: [7] Derlet, R.W Overcrowding in emergency departments: increased demand and decreased capacity. AnnalsofEmergency Medicine, 39(4): [8] Derlet, R.W., J. R. Richards and R.L. Kravitz Frequent overcrowding in U.S. emergency departments. AcademicEmergency Medicine, 8(2): [9] Committee on the Future of Emergency Care in the United States Health Care System/Board on Health Care Services Hospital-based Emergency Care: At the Breaking Point. Washington, DC: National Academies Press. [10] Fatovich, D.M. and R.L. Hirsch Entry overload, emergency department overcrowding, and ambulance bypass. Emergency Medicine Journal, 20: [11] Derlet, R. and J. Richards Emergency department overcrowding in Florida, New York, and Texas. SouthernMedicalJournal, 95(8): [12] Sprivulis, P., J. Da Silva, I. Jacobs, et al The association between hospital overcrowding and mortality among patients admitted via Western Australian emergency departments. The Medical Journal of Australia, 184(5): [13] Derlet, R.W. and J.R. Richards Overcrowding in the nation s emergency departments: complex causes and disturbing effects. Annals of Emergency Medicine, 35(1): [14] Hwang, U. and J. Concato Care in the emergency department: how crowded is overcrowded? Academic Emergency Medicine, 11(10): [15] Asplin, B.R., D.J. Magid, K.V. Rhodes, et al A conceptual model of emergency department crowding.annalsofemergency Medicine, 42(2): [16] Weiss, S.J., R. Derlet and J. Arndahl Estimating the degree of emergency department overcrowding in academic medical centers: results of the National ED Overcrowding Study (NEDOCS). Academic Emergency Medicine, 11: [17] Reeder, T.J. and H.G. Garrison When the safety net is unsafe: real-time assessment of the overcrowded emergency department. Academic Emergency Medicine, 8(11): [18] Bernstein, S.L., V. Verghese, L. Leung, et al Development and validation of a new index to measure emergency department crowding.academicemergencymedicine, 10(9): SIMULATION Volume 86, Numbers 8-9

Healthcare Informatics: Supporting Collaborative Sensemaking in the Emergency Department

Healthcare Informatics: Supporting Collaborative Sensemaking in the Emergency Department Healthcare Informatics: Supporting Collaborative Sensemaking in the Emergency Department It is a busy day in the emergency room with the monitors beeping, the alarms blaring intermittently, the phones

More information

APPLICATION OF SIMULATION MODELING FOR STREAMLINING OPERATIONS IN HOSPITAL EMERGENCY DEPARTMENTS

APPLICATION OF SIMULATION MODELING FOR STREAMLINING OPERATIONS IN HOSPITAL EMERGENCY DEPARTMENTS APPLICATION OF SIMULATION MODELING FOR STREAMLINING OPERATIONS IN HOSPITAL EMERGENCY DEPARTMENTS Igor Georgievskiy Alcorn State University Department of Advanced Technologies phone: 601-877-6482, fax:

More information

Proceedings of the 2016 Winter Simulation Conference T. M. K. Roeder, P. I. Frazier, R. Szechtman, E. Zhou, T. Huschka, and S. E. Chick, eds.

Proceedings of the 2016 Winter Simulation Conference T. M. K. Roeder, P. I. Frazier, R. Szechtman, E. Zhou, T. Huschka, and S. E. Chick, eds. Proceedings of the 2016 Winter Simulation Conference T. M. K. Roeder, P. I. Frazier, R. Szechtman, E. Zhou, T. Huschka, and S. E. Chick, eds. IDENTIFYING THE OPTIMAL CONFIGURATION OF AN EXPRESS CARE AREA

More information

Emergency-Departments Simulation in Support of Service-Engineering: Staffing, Design, and Real-Time Tracking

Emergency-Departments Simulation in Support of Service-Engineering: Staffing, Design, and Real-Time Tracking Emergency-Departments Simulation in Support of Service-Engineering: Staffing, Design, and Real-Time Tracking Yariv N. Marmor Advisor: Professor Mandelbaum Avishai Faculty of Industrial Engineering and

More information

The Impact of Input and Output Factors on Emergency Department Throughput

The Impact of Input and Output Factors on Emergency Department Throughput The Impact of Input and Output Factors on Emergency Department Throughput Phillip V. Asaro, MD, Lawrence M. Lewis, MD, Stuart B. Boxerman, DSc Abstract Objectives: To quantify the impact of input and output

More information

The Impact of Emergency Department Use on the Health Care System in Maryland. Deborah E. Trautman, PhD, RN

The Impact of Emergency Department Use on the Health Care System in Maryland. Deborah E. Trautman, PhD, RN The Impact of Emergency Department Use on the Health Care System in Maryland Deborah E. Trautman, PhD, RN The Future of Emergency Care in the United States Health System Institute of Medicine June 2006

More information

STUDY OF PATIENT WAITING TIME AT EMERGENCY DEPARTMENT OF A TERTIARY CARE HOSPITAL IN INDIA

STUDY OF PATIENT WAITING TIME AT EMERGENCY DEPARTMENT OF A TERTIARY CARE HOSPITAL IN INDIA STUDY OF PATIENT WAITING TIME AT EMERGENCY DEPARTMENT OF A TERTIARY CARE HOSPITAL IN INDIA *Angel Rajan Singh and Shakti Kumar Gupta Department of Hospital Administration, All India Institute of Medical

More information

Emergency Department Throughput

Emergency Department Throughput Emergency Department Throughput Patient Safety Quality Improvement Patient Experience Affordability Hoag Memorial Hospital Presbyterian One Hoag Drive Newport Beach, CA 92663 www.hoag.org Program Managers:

More information

Using discrete event simulation to improve the patient care process in the emergency department of a rural Kentucky hospital.

Using discrete event simulation to improve the patient care process in the emergency department of a rural Kentucky hospital. University of Louisville ThinkIR: The University of Louisville's Institutional Repository Electronic Theses and Dissertations 6-2013 Using discrete event simulation to improve the patient care process

More information

Analytics to Improve Service in a Pre-Admission Testing Clinic

Analytics to Improve Service in a Pre-Admission Testing Clinic 2015 48th Hawaii International Conference on System Sciences Analytics to Improve Service in a Pre-Admission Testing Clinic Saligrama Agnihothri Binghamton University agni@binghamton.edu Anu Banerjee Binghamton

More information

Improving patient satisfaction by adding a physician in triage

Improving patient satisfaction by adding a physician in triage ORIGINAL ARTICLE Improving patient satisfaction by adding a physician in triage Jason Imperato 1, Darren S. Morris 2, Leon D. Sanchez 2, Gary Setnik 1 1. Department of Emergency Medicine, Mount Auburn

More information

The Effect of Emergency Department Crowding on Paramedic Ambulance Availability

The Effect of Emergency Department Crowding on Paramedic Ambulance Availability EMERGENCY MEDICAL SERVICES/ORIGINAL RESEARCH The Effect of Emergency Department Crowding on Paramedic Ambulance Availability Marc Eckstein, MD Linda S. Chan, PhD From the Department of Emergency Medicine

More information

Matching Capacity and Demand:

Matching Capacity and Demand: We have nothing to disclose Matching Capacity and Demand: Using Advanced Analytics for Improvement and ecasting Denise L. White, PhD MBA Assistant Professor Director Quality & Transformation Analytics

More information

Proceedings of the 2005 Systems and Information Engineering Design Symposium Ellen J. Bass, ed.

Proceedings of the 2005 Systems and Information Engineering Design Symposium Ellen J. Bass, ed. Proceedings of the 2005 Systems and Information Engineering Design Symposium Ellen J. Bass, ed. ANALYZING THE PATIENT LOAD ON THE HOSPITALS IN A METROPOLITAN AREA Barb Tawney Systems and Information Engineering

More information

THE USE OF SIMULATION TO DETERMINE MAXIMUM CAPACITY IN THE SURGICAL SUITE OPERATING ROOM. Sarah M. Ballard Michael E. Kuhl

THE USE OF SIMULATION TO DETERMINE MAXIMUM CAPACITY IN THE SURGICAL SUITE OPERATING ROOM. Sarah M. Ballard Michael E. Kuhl Proceedings of the 2006 Winter Simulation Conference L. F. Perrone, F. P. Wieland, J. Liu, B. G. Lawson, D. M. Nicol, and R. M. Fujimoto, eds. THE USE OF SIMULATION TO DETERMINE MAXIMUM CAPACITY IN THE

More information

Report on Feasibility, Costs, and Potential Benefits of Scaling the Military Acuity Model

Report on Feasibility, Costs, and Potential Benefits of Scaling the Military Acuity Model Report on Feasibility, Costs, and Potential Benefits of Scaling the Military Acuity Model June 2017 Requested by: House Report 114-139, page 280, which accompanies H.R. 2685, the Department of Defense

More information

Hospital Care and Trauma Management Nakhon Tipsunthonsak Witaya Chadbunchachai Trauma Center Khonkaen, Thailand

Hospital Care and Trauma Management Nakhon Tipsunthonsak Witaya Chadbunchachai Trauma Center Khonkaen, Thailand Hospital Care and Trauma Management Nakhon Tipsunthonsak Witaya Chadbunchachai Trauma Center Khonkaen, Thailand Health protection and disease prevention Needs Assessment Disasters usually have an unforeseen,

More information

University of Michigan Emergency Department

University of Michigan Emergency Department University of Michigan Emergency Department Efficient Patient Placement in the Emergency Department Final Report To: Jon Fairchild, M.S., R.N. C.E.N, Nurse Manager, fairchil@med.umich.edu Samuel Clark,

More information

Measure Information Form. Admit Decision Time to ED Departure Time for Admitted Patients Overall Rate

Measure Information Form. Admit Decision Time to ED Departure Time for Admitted Patients Overall Rate Last Updated: Version 4.4 Measure Set: Emergency Department Set Measure ID #: ED-2 Measure Information Form Set Measure ID# ED-2a ED-2b ED-2c Performance Measure Name Admit Decision Time to ED Departure

More information

Hospital Patient Flow Capacity Planning Simulation Model at Vancouver Coastal Health

Hospital Patient Flow Capacity Planning Simulation Model at Vancouver Coastal Health Hospital Patient Flow Capacity Planning Simulation Model at Vancouver Coastal Health Amanda Yuen, Hongtu Ernest Wu Decision Support, Vancouver Coastal Health Vancouver, BC, Canada Abstract In order to

More information

Specifications Manual for National Hospital Inpatient Quality Measures Discharges (1Q17) through (4Q17)

Specifications Manual for National Hospital Inpatient Quality Measures Discharges (1Q17) through (4Q17) Last Updated: Version 5.2a EMERGENCY DEPARTMENT (ED) NATIONAL HOSPITAL INPATIENT QUALITY MEASURES ED Measure Set Table Set Measure ID # ED-1a ED-1b ED-1c ED-2a ED-2b ED-2c Measure Short Name Median Time

More information

Teaching Case Hippi Care Hospital: Towards Proactive Business Processes in Emergency Room Services

Teaching Case Hippi Care Hospital: Towards Proactive Business Processes in Emergency Room Services Teaching Case Hippi Care Hospital: Towards Proactive Business Processes in Emergency Room Services Kar Way Tan Venky Shankararaman School of Information Systems Singapore Management University Singapore

More information

An analysis of the average waiting time during the patient discharge process at Kashani Hospital in Esfahan, Iran: a case study

An analysis of the average waiting time during the patient discharge process at Kashani Hospital in Esfahan, Iran: a case study An analysis of the average waiting time during the patient discharge process at Kashani Hospital in Esfahan, Iran: a case study Sima Ajami and Saeedeh Ketabi Abstract Strategies for improving the patient

More information

AMBULANCE diversion policies are created

AMBULANCE diversion policies are created 36 AMBULANCE DIVERSION Scheulen et al. IMPACT OF AMBULANCE DIVERSION POLICIES Impact of Ambulance Diversion Policies in Urban, Suburban, and Rural Areas of Central Maryland JAMES J. SCHEULEN, PA-C, MBA,

More information

January 1, 20XX through December 31, 20XX. LOINC(R) is a registered trademark of the Regenstrief Institute.

January 1, 20XX through December 31, 20XX. LOINC(R) is a registered trademark of the Regenstrief Institute. e Title Median Admit Decision Time to ED Departure Time for Admitted Patients e Identifier ( Authoring Tool) 111 e Version number 5.1.000 NQF Number 0497 GUID 979f21bd-3f93-4cdd- 8273-b23dfe9c0513 ment

More information

Health care process improvement teams often

Health care process improvement teams often Original Article Causal Analysis of Emergency Department Delays Raya E. Kheirbek, MD; Shervin Beygi, PhD; Manaf Zargoush, PhD; Farrokh Alemi, PhD; Alyshia W. Smith, DNP, RN; Ross D. Fletcher, MD; Philip

More information

Median Time from Emergency Department (ED) Arrival to ED Departure for Admitted ED Patients ED-1 (CMS55v4)

Median Time from Emergency Department (ED) Arrival to ED Departure for Admitted ED Patients ED-1 (CMS55v4) PIONEERS IN QUALITY: EXPERT TO EXPERT: Median Time from Emergency Department (ED) Arrival to ED Departure for Admitted ED Patients ED-1 (CMS55v4) Median Admit Decision Time to ED Departure Time for Admitted

More information

CMS-0044-P; Proposed Rule: Medicare and Medicaid Programs; Electronic Health Record Incentive Program Stage 2

CMS-0044-P; Proposed Rule: Medicare and Medicaid Programs; Electronic Health Record Incentive Program Stage 2 May 7, 2012 Submitted Electronically Ms. Marilyn Tavenner Acting Administrator Centers for Medicare and Medicaid Services Department of Health and Human Services Room 445-G, Hubert H. Humphrey Building

More information

Make the most of your resources with our simulation-based decision tools

Make the most of your resources with our simulation-based decision tools CHALLENGE How to move 152 children to a new facility in a single day without sacrificing patient safety or breaking the budget. OUTCOME A simulation-based decision support tool helped CHP move coordinators

More information

Using Queuing Theory and Simulation Modelling to Reduce Waiting Times in An Iranian Emergency Department

Using Queuing Theory and Simulation Modelling to Reduce Waiting Times in An Iranian Emergency Department Original Article Using Queuing Theory and Simulation Modelling to Reduce Waiting Times in An Iranian Emergency Department Hourvash Akbari Haghighinejad 1, MD; Erfan Kharazmi 2, PhD; Nahid Hatam 3, PhD;

More information

PG snapshot Nursing Special Report. The Role of Workplace Safety and Surveillance Capacity in Driving Nurse and Patient Outcomes

PG snapshot Nursing Special Report. The Role of Workplace Safety and Surveillance Capacity in Driving Nurse and Patient Outcomes PG snapshot news, views & ideas from the leader in healthcare experience & satisfaction measurement The Press Ganey snapshot is a monthly electronic bulletin freely available to all those involved or interested

More information

Thank you for joining us today!

Thank you for joining us today! Thank you for joining us today! Please dial 1.800.732.6179 now to connect to the audio for this webinar. To show/hide the control panel click the double arrows. 1 Emergency Room Overcrowding A multi-dimensional

More information

Putting It All Together: Strategies to Achieve System-Wide Results

Putting It All Together: Strategies to Achieve System-Wide Results 1 Putting It All Together: Strategies to Achieve System-Wide Results Katharine Luther, Lloyd Provost, Pat Rutherford Hospital Flow Professional Development Program April 4-7, 2016 Cambridge, MA Session

More information

How to deal with Emergency at the Operating Room

How to deal with Emergency at the Operating Room How to deal with Emergency at the Operating Room Research Paper Business Analytics Author: Freerk Alons Supervisor: Dr. R. Bekker VU University Amsterdam Faculty of Science Master Business Mathematics

More information

Identifying step-down bed needs to improve ICU capacity and costs

Identifying step-down bed needs to improve ICU capacity and costs www.simul8healthcare.com/case-studies Identifying step-down bed needs to improve ICU capacity and costs London Health Sciences Centre and Ivey Business School utilized SIMUL8 simulation software to evaluate

More information

Managing Queues: Door-2-Exam Room Process Mid-Term Proposal Assignment

Managing Queues: Door-2-Exam Room Process Mid-Term Proposal Assignment Concept/Objectives Managing Queues: Door--Exam Process Mid-Term Proposal ssignment Children s Healthcare of tlanta (CHO has plans to build a new facility that will be over 00,000 sq. ft., and they are

More information

Models for Bed Occupancy Management of a Hospital in Singapore

Models for Bed Occupancy Management of a Hospital in Singapore Proceedings of the 2010 International Conference on Industrial Engineering and Operations Management Dhaka, Bangladesh, January 9-10, 2010 Models for Bed Occupancy Management of a Hospital in Singapore

More information

A QUEUING-BASE STATISTICAL APPROXIMATION OF HOSPITAL EMERGENCY DEPARTMENT BOARDING

A QUEUING-BASE STATISTICAL APPROXIMATION OF HOSPITAL EMERGENCY DEPARTMENT BOARDING A QUEUING-ASE STATISTICAL APPROXIMATION OF HOSPITAL EMERGENCY DEPARTMENT OARDING James R. royles a Jeffery K. Cochran b a RAND Corporation, Santa Monica, CA 90401, james_broyles@rand.org b Department of

More information

Asking Questions: Information Needs in a Surgical Intensive Care Unit

Asking Questions: Information Needs in a Surgical Intensive Care Unit Asking Questions: Information Needs in a Surgical Intensive Care Unit Madhu C. Reddy M.S. 1, Wanda Pratt Ph.D. 2, Paul Dourish Ph.D. 1, M. Michael Shabot M.D. 3 2 1 Information and Computer Science Department,

More information

Models and Insights for Hospital Inpatient Operations: Time-of-Day Congestion for ED Patients Awaiting Beds *

Models and Insights for Hospital Inpatient Operations: Time-of-Day Congestion for ED Patients Awaiting Beds * Vol. 00, No. 0, Xxxxx 0000, pp. 000 000 issn 0000-0000 eissn 0000-0000 00 0000 0001 INFORMS doi 10.1287/xxxx.0000.0000 c 0000 INFORMS Models and Insights for Hospital Inpatient Operations: Time-of-Day

More information

OP ED-THROUGHPUT GENERAL DATA ELEMENT LIST. All Records

OP ED-THROUGHPUT GENERAL DATA ELEMENT LIST. All Records Material inside brackets ( [ and ] ) is new to this Specifications Manual version. HOSPITAL OUTPATIENT QUALITY MEASURES ED-Throughput Set Measure ID # OP-18 OP-20 OP-22 Measure Short Name Median Time from

More information

LV Prasad Eye Institute Annotated Bibliography

LV Prasad Eye Institute Annotated Bibliography Annotated Bibliography Finkler SA, Knickman JR, Hendrickson G, et al. A comparison of work-sampling and time-and-motion techniques for studies in health services research.... 2 Zheng K, Haftel HM, Hirschl

More information

Building a Smarter Healthcare System The IE s Role. Kristin H. Goin Service Consultant Children s Healthcare of Atlanta

Building a Smarter Healthcare System The IE s Role. Kristin H. Goin Service Consultant Children s Healthcare of Atlanta Building a Smarter Healthcare System The IE s Role Kristin H. Goin Service Consultant Children s Healthcare of Atlanta 2 1 Background 3 Industrial Engineering The objective of Industrial Engineering is

More information

A Mixed Integer Programming Approach for. Allocating Operating Room Capacity

A Mixed Integer Programming Approach for. Allocating Operating Room Capacity A Mixed Integer Programming Approach for Allocating Operating Room Capacity Bo Zhang, Pavankumar Murali, Maged Dessouky*, and David Belson Daniel J. Epstein Department of Industrial and Systems Engineering

More information

Ways to reduce patient turnaround

Ways to reduce patient turnaround The Emerald Research Register for this journal is available at www.emeraldinsight.com/researchregister The current issue and full text archive of this journal is available at www.emeraldinsight.com/477-766.htm

More information

Leveraging Clinical Communications Technology to Prevent Missed Nursing Care

Leveraging Clinical Communications Technology to Prevent Missed Nursing Care Leveraging Clinical Communications Technology to Prevent Missed Nursing Care Maintaining a competitive edge in the value-based purchasing era Patricia Smith MBA, BSN, RN Preventing Missed Nursing Care

More information

Improving Patient Throughput in the Emergency Department

Improving Patient Throughput in the Emergency Department University of Michigan Health System Program and Operations Analysis Improving Patient Throughput in the Emergency Department To: Jennifer Holmes, Director of Operations, Emergency Department Sam Clark,

More information

Big Data Analysis for Resource-Constrained Surgical Scheduling

Big Data Analysis for Resource-Constrained Surgical Scheduling Paper 1682-2014 Big Data Analysis for Resource-Constrained Surgical Scheduling Elizabeth Rowse, Cardiff University; Paul Harper, Cardiff University ABSTRACT The scheduling of surgical operations in a hospital

More information

The attitude of nurses towards inpatient aggression in psychiatric care Jansen, Gradus

The attitude of nurses towards inpatient aggression in psychiatric care Jansen, Gradus University of Groningen The attitude of nurses towards inpatient aggression in psychiatric care Jansen, Gradus IMPORTANT NOTE: You are advised to consult the publisher's version (publisher's PDF) if you

More information

Emergency Department Patient Flow Strategies. University of Maryland Medical Center

Emergency Department Patient Flow Strategies. University of Maryland Medical Center Emergency Department Patient Flow Strategies University of Maryland Medical Center Medical Admitting Officer Attending Hospitalist Hours: 9a 11p Mon Friday Goal to partner with ED team and provide oversight

More information

The Trauma System. Prevention Pre-hospital care and transport Acute hospital care Rehab Research

The Trauma System. Prevention Pre-hospital care and transport Acute hospital care Rehab Research An Overview The Trauma System The Office of Emergency Medical Services & Trauma System (OEMSTS) is responsible for oversight of the trauma system. The ideal trauma system includes; Prevention Pre-hospital

More information

OP ED-THROUGHPUT GENERAL DATA ELEMENT LIST. All Records

OP ED-THROUGHPUT GENERAL DATA ELEMENT LIST. All Records Material inside brackets ( [ and ] ) is new to this Specifications Manual version. HOSPITAL OUTPATIENT QUALITY MEASURES ED-Throughput Set Measure ID # OP-18 OP-20 OP-22 Measure Short Name Median Time from

More information

Part 4. Change Concepts for Improving Adult Cardiac Surgery. In this section, you will learn a group. of change concepts that can be applied in

Part 4. Change Concepts for Improving Adult Cardiac Surgery. In this section, you will learn a group. of change concepts that can be applied in Change Concepts for Improving Adult Cardiac Surgery Part 4 In this section, you will learn a group of change concepts that can be applied in different ways throughout the system of adult cardiac surgery.

More information

The PCT Guide to Applying the 10 High Impact Changes

The PCT Guide to Applying the 10 High Impact Changes The PCT Guide to Applying the 10 High Impact Changes This Guide has been produced by the NHS Modernisation Agency. For further information on the Agency or the 10 High Impact Changes please visit www.modern.nhs.uk

More information

Eliminating Common PACU Delays

Eliminating Common PACU Delays Eliminating Common PACU Delays Jamie Jenkins, MBA A B S T R A C T This article discusses how one hospital identified patient flow delays in its PACU. By using lean methods focused on eliminating waste,

More information

University of Michigan Health System. Current State Analysis of the Main Adult Emergency Department

University of Michigan Health System. Current State Analysis of the Main Adult Emergency Department University of Michigan Health System Program and Operations Analysis Current State Analysis of the Main Adult Emergency Department Final Report To: Jeff Desmond MD, Clinical Operations Manager Emergency

More information

OP ED-Throughput General Data Element List. All Records All Records. All Records All Records All Records. All Records. All Records.

OP ED-Throughput General Data Element List. All Records All Records. All Records All Records All Records. All Records. All Records. Material inside brackets ([and]) is new to this Specifications Manual version. Hospital Outpatient Quality Measures ED-Throughput Set Measure ID # OP-18 OP-20 OP-22 Measure Short Name Median Time from

More information

Executive Summary November 2008

Executive Summary November 2008 November 2008 Purpose of the Study This study analyzes short-term risks and provides recommendations on longer-term policy opportunities for the Marin County healthcare delivery system in general as well

More information

uncovering key data points to improve OR profitability

uncovering key data points to improve OR profitability REPRINT March 2014 Robert A. Stiefel Howard Greenfield healthcare financial management association hfma.org uncovering key data points to improve OR profitability Hospital finance leaders can increase

More information

Improving Mott Hospital Post-Operative Processes

Improving Mott Hospital Post-Operative Processes Improving Mott Hospital Post-Operative Processes Program and Operation Analysis Submitted To: Sheila Trouten, Client Nurse Manager, PACU, Mott OR Jesse Wilson, Coordinator Administrative Manager of Surgical

More information

Emergency department visit volume variability

Emergency department visit volume variability Clin Exp Emerg Med 215;2(3):15-154 http://dx.doi.org/1.15441/ceem.14.44 Emergency department visit volume variability Seung Woo Kang, Hyun Soo Park eissn: 2383-4625 Original Article Department of Emergency

More information

Hospital Patient Flow Capacity Planning Simulation Models

Hospital Patient Flow Capacity Planning Simulation Models Hospital Patient Flow Capacity Planning Simulation Models Vancouver Coastal Health Fraser Health Interior Health Island Health Northern Health Vancouver Coastal Health Ernest Wu, Amanda Yuen Vancouver

More information

NEW INNOVATIONS TO IMPROVE PATIENT FLOW IN THE ED AND HOSPITAL OCTOBER 12, Mike Williams, MPH/HSA The Abaris Group

NEW INNOVATIONS TO IMPROVE PATIENT FLOW IN THE ED AND HOSPITAL OCTOBER 12, Mike Williams, MPH/HSA The Abaris Group NEW INNOVATIONS TO IMPROVE PATIENT FLOW IN THE ED AND HOSPITAL OCTOBER 12, 2010 Mike Williams, MPH/HSA The Abaris Group Outline Page 2 1. Top Innovations ED and Hospital 2. Top Barriers 3. Steps to Eliminate

More information

St. Vincent s Health System Page 1 of 11. TITLE: Mass Casualty Plan Code Yellow 12/11/07 12/11/07

St. Vincent s Health System Page 1 of 11. TITLE: Mass Casualty Plan Code Yellow 12/11/07 12/11/07 St. Vincent s Health System Page 1 of 11 TITLE: Mass Casualty Plan Code Yellow FACILITY: St. Vincent s East FUNCTION: ORIGINATING DEPT: Safety HOSPITAL SHARED POLICY? Yes No DOCUMENT NUMBER: 802 ORIGINATION

More information

January 1, 20XX through December 31, 20XX. LOINC(R) is a registered trademark of the Regenstrief Institute.

January 1, 20XX through December 31, 20XX. LOINC(R) is a registered trademark of the Regenstrief Institute. e Title Median Time from ED Arrival to ED Departure for Admitted ED Patients e Identifier ( Authoring Tool) 55 e Version number 5.1.000 NQF Number 0495 GUID 9a033274-3d9b- 11e1-8634- 00237d5bf174 ment

More information

Health Quality Ontario

Health Quality Ontario Health Quality Ontario The provincial advisor on the quality of health care in Ontario November 15, 2016 Under Pressure: Emergency department performance in Ontario Technical Appendix Table of Contents

More information

An Analysis of Waiting Time Reduction in a Private Hospital in the Middle East

An Analysis of Waiting Time Reduction in a Private Hospital in the Middle East University of Tennessee Health Science Center UTHSC Digital Commons Applied Research Projects Department of Health Informatics and Information Management 2014 An Analysis of Waiting Time Reduction in a

More information

Boarding Impact on patients, hospitals and healthcare systems

Boarding Impact on patients, hospitals and healthcare systems Boarding Impact on patients, hospitals and healthcare systems Dan Beckett Consultant Acute Physician NHSFV National Clinical Lead Whole System Patient Flow Project Scottish Government May 2014 Important

More information

Improving Hospital Performance Through Clinical Integration

Improving Hospital Performance Through Clinical Integration white paper Improving Hospital Performance Through Clinical Integration Rohit Uppal, MD President of Acute Hospital Medicine, TeamHealth In the typical hospital, most clinical service lines operate as

More information

Massachusetts ICU Acuity Meeting

Massachusetts ICU Acuity Meeting Massachusetts ICU Acuity Meeting Acuity Tool Certification and Reporting Requirements Acuity Tool Certification Template Suggested Guidance Acuity Tool Submission Details Submitting your acuity tool for

More information

Using Computer Simulation to Study Hospital Admission and Discharge Processes

Using Computer Simulation to Study Hospital Admission and Discharge Processes University of Massachusetts Amherst ScholarWorks@UMass Amherst Masters Theses 1911 - February 2014 2013 Using Computer Simulation to Study Hospital Admission and Discharge Processes Edwin S. Kim University

More information

A Publication for Hospital and Health System Professionals

A Publication for Hospital and Health System Professionals A Publication for Hospital and Health System Professionals S U M M E R 2 0 0 8 V O L U M E 6, I S S U E 2 Data for Healthcare Improvement Developing and Applying Avoidable Delay Tracking Working with Difficult

More information

Root Cause Analysis of Emergency Department Crowding and Ambulance Diversion in Massachusetts

Root Cause Analysis of Emergency Department Crowding and Ambulance Diversion in Massachusetts Root Cause Analysis of Emergency Department Crowding and Ambulance Diversion in Massachusetts A report submitted by the Boston University Program for the Management of Variability in Health Care Delivery

More information

Same day emergency care: clinical definition, patient selection and metrics

Same day emergency care: clinical definition, patient selection and metrics Ambulatory emergency care guide Same day emergency care: clinical definition, patient selection and metrics Published by NHS Improvement and the Ambulatory Emergency Care Network June 2018 Contents 1.

More information

The Science of Emotion

The Science of Emotion The Science of Emotion I PARTNERS I JAN/FEB 2011 27 The Science of Emotion Sentiment Analysis Turns Patients Feelings into Actionable Data to Improve the Quality of Care Faced with patient satisfaction

More information

ED crowding: Causes, Consequences, Solutions

ED crowding: Causes, Consequences, Solutions ED crowding: Causes, Consequences, Solutions Jesse M. Pines, MD, MBA, MSCE Associate Professor of Emergency Medicine and Health Policy George Washington University Urgent Matters Webinar April 23, 2010

More information

PHYSICIAN AND RESIDENT STAFFING IN AN ACADEMIC EMERGENCY DEPARTMENT

PHYSICIAN AND RESIDENT STAFFING IN AN ACADEMIC EMERGENCY DEPARTMENT PHYSICIAN AND RESIDENT STAFFING IN AN ACADEMIC EMERGENCY DEPARTMENT By Amar Sasture Thesis document submitted in partial fulfillment of the requirements for the degree of Master of Science In Industrial

More information

Critique of a Nurse Driven Mobility Study. Heather Nowak, Wendy Szymoniak, Sueann Unger, Sofia Warren. Ferris State University

Critique of a Nurse Driven Mobility Study. Heather Nowak, Wendy Szymoniak, Sueann Unger, Sofia Warren. Ferris State University Running head: CRITIQUE OF A NURSE 1 Critique of a Nurse Driven Mobility Study Heather Nowak, Wendy Szymoniak, Sueann Unger, Sofia Warren Ferris State University CRITIQUE OF A NURSE 2 Abstract This is a

More information

Reducing Harm Improving Healthcare Protecting Canadians MEDICATION RECONCILIATION IN THE ICU. Change Package.

Reducing Harm Improving Healthcare Protecting Canadians MEDICATION RECONCILIATION IN THE ICU. Change Package. Reducing Harm Improving Healthcare Protecting Canadians MEDICATION RECONCILIATION IN THE ICU Change Package January 2012 Background The ultimate goal of medication reconciliation is to prevent adverse

More information

Improving ED Flow through the UMLN II

Improving ED Flow through the UMLN II Improving ED Flow through the UMLN II Good Samaritan Hospital Medical Center West Islip, NY 437 beds, 50 ED beds http://www.goodsamaritan.chsli.org Good Samaritan Hospital Medical Center, a member of Catholic

More information

Staffing and Scheduling

Staffing and Scheduling Staffing and Scheduling 1 One of the most critical issues confronting nurse executives today is nurse staffing. The major goal of staffing and scheduling systems is to identify the need for and provide

More information

Envisioning enhanced primary care in Singapore: a group model building approach

Envisioning enhanced primary care in Singapore: a group model building approach Envisioning enhanced primary care in Singapore: a group model building approach 2 nd Asia-Pacific Region System Dynamics Conference John P. Ansah, PhD Assistant Professor Program in Health Services and

More information

"Pull Don't Push A Paradigm Shift for Patient Throughput" Elizabeth Carlton, RN, MSN, CCRN-K, CPHQ The University of Kansas Hospital

Pull Don't Push A Paradigm Shift for Patient Throughput Elizabeth Carlton, RN, MSN, CCRN-K, CPHQ The University of Kansas Hospital "Pull Don't Push A Paradigm Shift for Patient Throughput" Elizabeth Carlton, RN, MSN, CCRN-K, CPHQ The University of Kansas Hospital The University of Kansas Hospital Leading the Nation in Caring, Healing,

More information

Keep watch and intervene early

Keep watch and intervene early IntelliVue GuardianSoftware solution Keep watch and intervene early The earlier, the better Intervene early, by recognizing subtle signs Clinical realities on the general floor and in the emergency department

More information

How Allina Saved $13 Million By Optimizing Length of Stay

How Allina Saved $13 Million By Optimizing Length of Stay Success Story How Allina Saved $13 Million By Optimizing Length of Stay EXECUTIVE SUMMARY Like most large healthcare systems throughout the country, Allina Health s financial health improves dramatically

More information

Target condition for today:

Target condition for today: James Hereford President and CEO Target condition for today: Challenge us as a community to further our understanding of why lean works This is critical if we want to transform health care organizations.

More information

Proceedings of the 2010 Winter Simulation Conference B. Johansson, S. Jain, J. Montoya-Torres, J. Hugan, and E. Yücesan, eds.

Proceedings of the 2010 Winter Simulation Conference B. Johansson, S. Jain, J. Montoya-Torres, J. Hugan, and E. Yücesan, eds. Proceedings of the 2010 Winter Simulation Conference B. Johansson, S. Jain, J. Montoya-Torres, J. Hugan, and E. Yücesan, eds. BI-CRITERIA ANALYSIS OF AMBULANCE DIVERSION POLICIES Adrian Ramirez Nafarrate

More information

A SIMULATION MODEL FOR BIOTERRORISM PREPAREDNESS IN AN EMERGENCY ROOM. Lisa Patvivatsiri

A SIMULATION MODEL FOR BIOTERRORISM PREPAREDNESS IN AN EMERGENCY ROOM. Lisa Patvivatsiri Proceedings of the 2006 Winter Simulation Conference L. F. Perrone, F. P. Wieland, J. Liu, B. G. Lawson, D. M. Nicol, and R. M. Fujimoto, eds. A SIMULATION MODEL FOR BIOTERRORISM PREPAREDNESS IN AN EMERGENCY

More information

The Point of Care Ecosystem Four Benefits of a Fully Connected Outpatient Experience

The Point of Care Ecosystem Four Benefits of a Fully Connected Outpatient Experience Midmark White Paper The Point of Care Ecosystem Four Benefits of a Fully Connected Outpatient Experience Introduction This white paper from Midmark is the first in a series that defines the outpatient

More information

NURSING SPECIAL REPORT

NURSING SPECIAL REPORT 2017 Press Ganey Nursing Special Report The Influence of Nurse Manager Leadership on Patient and Nurse Outcomes and the Mediating Effects of the Nurse Work Environment Nurse managers exert substantial

More information

The following policy was adopted by the San Luis Obispo County EMS Agency and will become effective March 1, 2012 at 0800 hours.

The following policy was adopted by the San Luis Obispo County EMS Agency and will become effective March 1, 2012 at 0800 hours. SLO County Emergency Medical Services Agency Bulletin 2012-02 PLEASE POST New Trauma System Policies and Procedures February 9, 2012 To All SLO County EMS Providers and Training Institutions: The following

More information

Scenario Planning: Optimizing your inpatient capacity glide path in an age of uncertainty

Scenario Planning: Optimizing your inpatient capacity glide path in an age of uncertainty Scenario Planning: Optimizing your inpatient capacity glide path in an age of uncertainty Scenario Planning: Optimizing your inpatient capacity glide path in an age of uncertainty Examining a range of

More information

THE INTEGRATED EMERGENCY POST

THE INTEGRATED EMERGENCY POST THE INTEGRATED EMERGENCY POST THE SOLUTION FOR ED OVERCROWDING? Footer text: to modify choose 'Insert' (or View for Office 2003 2/4/13 or 1 earlier) then 'Header and footer' AGENDA Introduction ZonMw Simulation

More information

ED Facility Design and Informatics. Disclosure Information. Stock Ownership Forerun. Objectives. A Must Have Book. Estimating Treatment Spaces

ED Facility Design and Informatics. Disclosure Information. Stock Ownership Forerun. Objectives. A Must Have Book. Estimating Treatment Spaces ED Facility Design and Informatics Cambridge Health Alliance Harvard Medical School Cambridge, MA Disclosure Information Stock Ownership Forerun Objectives A Must Have Book! Review planning considerations

More information

System design and improvement of an emergency department using Simulation-Based Multi-Objective Optimization

System design and improvement of an emergency department using Simulation-Based Multi-Objective Optimization Journal of Physics: Conference Series PAPER OPEN ACCESS System design and improvement of an emergency department using Simulation-Based Multi-Objective Optimization To cite this article: A Goienetxea Uriarte

More information

Organisational factors that influence waiting times in emergency departments

Organisational factors that influence waiting times in emergency departments ACCESS TO HEALTH CARE NOVEMBER 2007 ResearchSummary Organisational factors that influence waiting times in emergency departments Waiting times in emergency departments are important to patients and also

More information

4.09. Hospitals Management and Use of Surgical Facilities. Chapter 4 Section. Background. Follow-up on VFM Section 3.09, 2007 Annual Report

4.09. Hospitals Management and Use of Surgical Facilities. Chapter 4 Section. Background. Follow-up on VFM Section 3.09, 2007 Annual Report Chapter 4 Section 4.09 Hospitals Management and Use of Surgical Facilities Follow-up on VFM Section 3.09, 2007 Annual Report Background Ontario s public hospitals are generally governed by a board of directors

More information

LAC+USC Healthcare Network 1707 E Highland, Suite North State Street

LAC+USC Healthcare Network 1707 E Highland, Suite North State Street Proceedings of the 2008 Winter Simulation Conference S. J. Mason, R. R. Hill, L. Mönch, O. Rose, T. Jefferson, J. W. Fowler eds. DISCRETE EVENT SIMULATION: OPTIMIZING PATIENT FLOW AND REDESIGN IN A REPLACEMENT

More information

BEDSIDE REGISTRATION CAPE CANAVERAL HOSPITAL

BEDSIDE REGISTRATION CAPE CANAVERAL HOSPITAL Publication Year: 2004 BEDSIDE REGISTRATION CAPE CANAVERAL HOSPITAL Summary: Cape Canaveral hospital implemented a streamlined bedside registration process in order to reduce the time patients spent waiting

More information

Health Management Information Systems: Computerized Provider Order Entry

Health Management Information Systems: Computerized Provider Order Entry Health Management Information Systems: Computerized Provider Order Entry Lecture 2 Audio Transcript Slide 1 Welcome to Health Management Information Systems: Computerized Provider Order Entry. The component,

More information