Skip to main content
  • Research article
  • Open access
  • Published:

Models and methods for determining the optimal number of beds in hospitals and regions: a systematic scoping review

Abstract

Background

Determining the optimal number of hospital beds is a complex and challenging endeavor and requires models and techniques which are sensitive to the multi-level, uncertain, and dynamic variables involved. This study identifies and characterizes extant models and methods that can be used to determine the required number of beds at hospital and regional levels, comparing their advantages and challenges.

Methods

A systematic search was conducted using Web of Science, Scopus, Embase and PubMed databases, with the search terms hospital bed capacity, hospital bed need, hospital, bed size, model, and method.

Results

Twenty-three studies met the criteria to be included in the review. Of these studies, a total of 11 models and 5 methods were identified, mainly designed to determine hospital bed capacity at the regional level. Common determinants of the required number of hospital beds in these models included demographic changes, average length of stay, admission rates, and bed occupancy rates.

Conclusions

There are no specific norms for the required number of beds at hospital and regional levels, but some of the identified models and methods may be used to estimate this number in different contexts. Moreover, it is important to consider alternative approaches to planning hospital capacity like care pathways to fix the limitations of “bed numbers”.

Peer Review reports

Background

Hospital capacity planning is an important issue in many developed and developing countries due to the increasing costs of inpatient care, constrained resources, and the growing demand for hospital care. In many countries, bed capacity and associated indices such as bed occupancy and the ratio of beds to population are the key metrics used to determine the availability of inpatient care. The number of beds in a hospital can be conceived as a capital stock, which is influenced by the performance of medical staff and equipment [1,2,3]. Indeed, a shortage of available beds can seriously impact on how a hospital functions. Indeed, it is the primary cause of admission and surgery cancellations, delays in emergency admissions, early patient transfers from intensive care units, delays in patient transfers between units, and early patient discharge [2, 4]. Conversely, excess bed capacity may lead to additional costs and stagnant capital. Therefore, hospital capacity planning should consider hospital bed availability alongside issues related to productivity, and clinical efficiency [5,6,7].

Decisions about hospital bed capacity are made by policymakers and managers at different levels of the health system. Here, two main points should be considered: the time horizon for the number of hospital beds (short, medium, or long term) and levels of hospital bed capacity planning (strategic, tactical and operational levels). Strategic planning of hospital capacity at the regional level is concerned with anticipating long-term regional needs, while tactical planning occurs at the hospital level. The operational level focuses on determining the optimal number of beds to allocate to each hospital unit [8]. Changing hospital bed capacities is a highly sensitive political issue, involving complex negotiations, often with little use of economic indicators to inform decision making [9].

The number of beds required to provide quality healthcare depends on a range of factors including models of care, patient need, national policies, and local circumstances. National policies focus on how to meet this demand. Local circumstances include internal hospital processes, the availability of other services, and influence demand management at the local level. Given that the interaction of these factors varies over time and within countries, the number of beds required to deliver health services also varies [10].

Hospital bed capacity cannot be determined without taking into account hospital needs, policies, existing services, staffing patterns, and other relevant aspects. Any projections regarding hospital services and future inpatient care should also be alert to wider health system changes (e.g. demographic trends, the substitution of day care for inpatient care, and changes in average length of stay) [11]. This is because in many healthcare systems there is concerted effort to shift towards more ambulatory forms of care [12, 13]. New technologies make it possible for more complex interventions to be undertaken in ambulatory or outpatient settings. Therefore, estimating the required number of hospital beds is a challenging task as many complex factors need to be taken into account, some of which are difficult to model and predict in advance. This creates the need for sophisticated modelling and sensitivity analyses to better estimate the numbers of hospital beds required to meet changing patient needs [14]. Because of these changes and complexities, we need modular architecture and to be flexible in the design of hospitals. Therefore, heavily top-down approaches are inappropriate and it is important to allow some level of local adaptation in the designing of hospitals. Most studies focus on the optimal allocation of hospital beds and use tools such as simulation methods for this purpose. The results of these studies show that this model can be a helpful tool for hospital managers in the planning and management of hospital beds [14,15,16].

Against this background, the purpose of this article is to review critically the various models and methods that have been developed and deployed for determining the required number of hospital beds at hospital and regional levels, as part of strategic and tactical planning. In this review, identified models and methods will be described and compared based on their key affecting factors, their advantages, and their challenges. This review follows the methodology of a scoping review, as the aim of the present research is to provide an overview of models and methods, rather than to answer specific questions.

Methods

The methodology used follows the framework for scoping reviews developed by Arksey and O’Malley (2005). Arksey and O’Malley’s (2005) framework distinguishes between four types of scoping reviews. The first considers the extent, range, and nature of the available literature. The second aims to determine the value of conducting a full systematic review. The third summarizes and disseminates the findings of the existing literature. The fourth is designed to identify research gaps. The present review, conducted between January and September, 2018, research followed the methodology for the third type through a systematic search, summarizing and disseminating research findings related to the determination of the required number of hospital beds at hospital and regional levels [17]. One of the main differences between scoping reviews and systematic reviews is that, based on Arksey and O’Malley’s framework (2005), quality appraisal is not required in scoping reviews. Therefore, the quality of the studies included in this review was not assessed.

As indicated in the framework by Arksey and O’Malley (2005), we first identified the research questions: What models and methods are applied to determine the optimal number of hospital beds? What are the characteristics of these models and methods? What are the advantages and challenges of these models and methods? Second, we conducted a systematic search and identified studies relevant to the research questions. After electronic and hand searching, identified studies were screened based on the inclusion criteria, and eligible studies were selected. The content of the included studies was then coded and their data was extracted based on the research questions. Finally, the reviewers analyzed the findings, and summarized and reported the results.

Eligibility criteria

Studies providing a method or model for determining the required number of hospital beds at hospital or regional levels (i.e. strategic or tactical levels of hospital capacity planning) were included. Studies on nursing, residential, or long-term care facilities were excluded. Studies estimating the number of hospital beds within hospitals to discuss their optimal allocation to departments (i.e. operational level of hospital capacity planning) were also excluded. Therefore, the research focuses on strategic and tactical levels of hospital capacity planning rather than on the operational level. The search identified studies published in any language between January 1st, 2000, and January 31st, 2018.

Information sources

A range of sources were used to identify the relevant studies for review: electronic database searches, contacting experts and authors and a thorough check of the references of the included articles. Four electronic databases were searched systematically: Web of Science, Scopus, Embase, and PubMed. Hospital bed capacity, hospital bed need, hospital, bed size, model, and method, were used as free text terms, MeSH terms, and Emtree subject headings to search each database through titles, abstracts, and keywords. In addition, the authors searched Google and Google Scholar using the same terms, scanned references of relevant studies, and contacted experts to identify additional research and grey literature.

Search

The search strategy used to search the PubMed database is provided in Table 1.

Table 1 The search strategy for PubMed

Selection of sources of evidence

Following the systematic search, titles and abstracts of identified studies were independently examined by two of the authors, and then full text articles were reviewed to determine eligibility. Any disagreement between reviewers on whether to include or exclude a study were discussed until they came to a consensus.

Data charting process

The content of each study was coded and the characteristics, advantages and challenges of models and methods were extracted. Data extraction was conducted independently by two reviewers and any disagreements were resolved through discussion. A translator was available on the team in case a study in a language other than English had been included.

Data items

The data extraction form contained the following items: author, year, country, study design, proposed method(s) or model(s), the characteristics of models or methods, key affecting factors, advantages and challenges.

Synthesis of results

Data extracted from included studies were synthesized through descriptive and narrative synthesis. Content analysis was used to explore key affecting factors, advantages and challenges for each model and method.

Results

Selection of sources of evidence

In total, 823 studies were identified through the systematic database search, and 21 via other sources: 10 studies from the grey literature, 8 studies from reference lists, and 3 studies following the advice of experts and authors. After removing duplicates, the titles and abstracts of 520 studies were examined in detail.458 of these studies were excluded due to failing to meet the inclusion criteria. The remaining 62 studies were subsequently assessed, and their reference lists were thoroughly investigated. 23 studies were ultimately included in the review. The study selection process is detailed schematically in Fig. 1.

Fig. 1
figure 1

PRISMA flow diagram representing the study selection process. From: Models and Methods for Determining the Optimal Number of Beds in Hospitals and Regions: A Systematic Scoping Review

Characteristics of sources of evidence

Data extraction revealed that the majority of the included studies had been conducted after 2000, more specifically between 2000 and 2005 [4, 5, 7, 18,19,20,21,22,23,24,25,26]. Most of the studies concerned high-income countries, in particular France [5,6,7, 21]. The language of the included studies was English, with the exception of the studies by Oettli and Weaver which was published in French [19, 27]. A summary of the characteristics of the included studies is presented in Table 2.

Table 2 General characteristics of included studies

Synthesis of results

A total of 11 models and 5 methods were identified in the included studies. The models and methods were designed to calculate the total number of hospital beds required at hospital and regional levels. Models and methods are tools used to solve problems in socio-technical systems such as hospitals. More particularly, a model is a comprehensive and systematic approach representing the present or future state of a system in a simple way. While a model may include theoretical principles and procedural sequences or techniques, a method is a process by which a calculation or estimation is made. In this research for example, methods do not include theoretical factors affecting the required number of hospital beds. Therefore, factors such as demographic changes, technological advances, and models of care, are not taking into account in methods [35]. General characteristics of identified models and methods, and key affecting factors considered by the models and methods are provided in Tables 3 and 4.

Table 3 Key affecting factors considered by the models and methods identified
Table 4 General characteristics of identified models and methods used to determine required numbers of hospital beds

In this study, identified models and methods are compared based on their advantages and challenges. Some of the advantages include: easy estimation, highly flexible, considers hospital performance and efficiency, various scenarios, technological advances, trends in hospital service utilization, and seasonal effects. Some of the challenges investigated in the models and methods include low accuracy, overestimation of required bed numbers, and difficulty of demographic predictions. A comparative overview of the identified models and methods is presented in Tables 5 and 6.

Table 5 Comparison of the models’ advantages and challenges
Table 6 Comparison of the methods’ advantages and challenges

Population, average length of stay, admission rates, and bed occupancy rates are common variables included in the design of models and methods. Demographic changes are included in every model, with the exception of the Capacity Model and the Score Model. The focus on the use of new medical technologies and out-of-region use of hospital services in determining hospital bed capacity is very limited in all models, although in recent years these factors appear to have received more sustained attention.

Most models use population age groups, clinical specialties (or diagnosis-related groups), and trends in use of hospital services (e.g. average length of stay, admission rates) to estimate required numbers of hospital beds. However, traditional methods such as the Ratio method and the Formula method do not consider these elements when estimating required bed numbers, and as a result, traditional methods are often combined with more recent models. The analysis of models and methods reveals that most models assume policies and technologies will not change, resulting in an overestimation of bed numbers. The Capacity Model is the only model or method considering both the supply and demand of hospital services and external factors. A description of the different models and methods are elaborated in Table 4.

Discussion

Determining the optimal numbers of hospital beds is a complex task which is undertaken at different levels of the health system. Balancing costs, accessibility, and quality remains a key challenge. No specific methodology has been identified in our review as being the most suitable to determine the optimal number of hospital beds. As our review has shown, a wide variety of models and methods exist for this purpose, and several factors affecting required numbers of hospital beds have been identified within them. The health system has control over some of these factors, such as the effectiveness and quality of hospital services, and alternatives to hospital care for example. However, factors external to the health system, such as disease patterns and demographic changes, are harder to predict and control. External factors and factors related to supply and demand are presented in Table 7. Several dimensions should be taken into account for optimal capacity planning, including the accessibility of the required data, and the most appropriate ways of quantifying factors affecting bed requirements [4, 24, 38, 39]. And it is up to managers and policymakers to select the most appropriate approach depending on their specific goals, the desired timeline, the level of bed capacity planning (hospital or regional), the national context, and the availability of comprehensive data [8].

Table 7 Factors affecting the required number of hospital beds

All of the models and methods identified in the present review account for at least one of these factors. Demographics, admission rates, lengths of stay, and bed occupancy rates were most commonly identified. The ratio-based method and formula method are traditional approaches to determine bed requirements based on demand (inpatient admission rates) and supply (length of stay) of hospital care. These approaches are typically most suitable for hospital-level planning. However, they have some limitations, which reduce their applicability. For example, traditional approaches assume steady state supply and demand and do not account for a number of factors such as demographic changes and patient migration. They are therefore used in combination with other methods and models in most countries. The formula method which considers target bed occupancy rates is used as the foundation for many models.

Most models are intended for medium- or long-term estimates at the regional level. However, some models, such as the Lausanne University Hospital (CHUV) model, have been designed for the hospital level. Hospital-level models are often based on regional-level models. Hence, it is possible for hospital managers to use models intended for macro-level use, depending on the unique conditions of their hospitals [32].

In most models, existing and future hospital care use trends have been examined. These have been examined in a variety of ways depending on the time horizon of interest. In some models such as the Trends in Acute Care Bed Use model, the Lausanne University Hospital (CHUV) model, and the Capacity Model, trends in hospital care use are examined through population age and sex composition, region of residence (urban or rural), and clinical specialty (or diagnosis-related group). Trends for surgical and non-surgical services, are also considered, based on a specific time horizon. However, in some models, for example the Swiss health observatory (SHO) model and basic scenario model admission rates are assumed to be constant. This has serious limitations given the occurrence of demographic and epidemiological changes. It is important to note that the number of beds estimated by these models is greater than the number of beds estimated by the models that account for changes and trends in demand [18, 24, 34].

Overall, population is the most important factor to take into account for hospital bed capacity planning. Additionally, age and sex composition, as well as regional distribution, should be considered alongside population size to obtain an accurate representation of the population. These factors may affect the demand for hospital care (admission rates) and the supply of services (average length of stay). Patient flows should also factored in as patients may use hospital services in different regions [24]. In most models, population composition and demographic changes are taken into account, and demographic projections are made by age group, sex, and region of residence for a certain time horizon [18, 40]. However, if demographic projections are not accurate or patterns of hospital service utilization vary from predicted trends, models will not yield accurate results [24]. Furthermore, population growth and aging can affect the demand for hospital care. Older people are typically the main users of hospital care, increasing admission rates and the average length of stay. However, technological advances and e-health may reduce the average length of stay in the future [32].

Furthermore, evidence shows that the mere use of demographics can lead to overestimation or underestimation of required bed numbers. Therefore, in addition to demographic changes, the impact of technological advances, periodic crises, emerging diseases, and epidemiology must be accounted for. Existing evidence suggests that technological advances and new interventions will reduce the need for hospital beds in the future and shift care towards the ambulatory or outpatient settings. Thus, these should be considered alongside demographic and epidemiological changes in order to allow for more accurate estimations of required numbers of hospital beds. The impact of technological advances on the number of required hospital beds is difficult to quantify [4, 18, 41]. Advances in medical technology and reduced dependency on hospital care in the United Kingdom have decreased the need for inpatient care, and thus reduced the number of hospital beds. A shift in patient care from hospitals to community settings has led to the largest reduction in the number of hospital beds for mental health patients and patients with learning disabilities. The number of hospital beds in England in general and acute services has dropped by 43%, mainly due to the dramatic decrease of beds for the long-term care of older people. In addition, medical innovation and the increase in day-case surgery has had a significant impact in this regard. The number of maternity beds has dropped by about 51% as a result of changes in length of stay. However, the number of day-only beds has increased by five times due to the rise in day-case surgery [10].

Admission rates in specialties such as infectious diseases or injuries demonstrate unique patterns, and may not follow demographic changes or population age and sex composition [42]. Therefore, in addition to demographic and technological changes, climate and seasonal changes should be examined. Indeed, the relationship between health and the environment has been described, and factors such as air temperature can contribute to the development and spread of various diseases [22]. Climate and seasonal changes must also be considered to improve the management of hospital bed capacity. Therefore, demographic changes are only a part of the complex equation behind bed estimations [22, 42]. Moreover, bed requirement estimates should not depend on a single scenario. Indeed, it may be advisable to consider multiple scenarios based on predictions of one or several key factors. In the Swiss Health Observatory Model for example, nine scenarios are developed based on demographic changes, lengths of stay, and admission rates, and the required number of beds are calculated for each scenario using the formula method. This model predicts that lengths of stay will decrease in the future and examines this trend across different scenarios [19, 27, 32]. Therefore, it is necessary to assess the potential consequences of an erroneous estimation of hospital bed numbers. Average length of stay is another key factor in determining the required number of hospital beds and proxy for resource utilization and hospital bed efficiency. Length of stay is affected by a number of factors, such as patient characteristics (age, insurance type), admission status (elective or emergency, day of admission), admission season, and time for conducting consultation services and delivering laboratory services [16, 43]. Given technological advances, policies for efficiency improvement, shifts from inpatient to outpatient surgeries, and prospective payment systems, average lengths of stay are expected to decrease in the future [5, 23, 34]. Therefore, it is not reasonable to assume that this will remain constant when calculating numbers of beds required. Indeed, planning the optimal number of beds should be based on more realistic assumptions about the trends in average lengths of stay and should differentiate between distinct clinical groups (diagnosis-related groups) and patient age groups. The internal hospital environment and regional conditions are also important to consider. For example, reduction in the average length of stay in university hospitals is unlikely, due to the complexity of diseases they treat and services they deliver [32, 44].

Although most models in the review recommend that the average length of stay should be assumed to vary, bed occupancy rates are usually considered constant. Desirable bed occupancy rates vary depending on perspective and can be decreased with reductions in admission rates and average lengths of stay (Table 7). However, the trend is assumed to remain constant. Additionally, the target bed occupancy rate is usually considered to be 80–85% of the total bed capacity for large hospitals, and 45% for small hospitals (due to lack of economies of scale) [4]. It is important to note that some hospitals need overflow beds, due to the conditions and epidemiological characteristics of the region, in case of emergencies (these beds can be unstaffed at other times) [4]. Evidence shows that bed occupancy is considered to be higher in hospitals and units with overflow beds, and changes in demand and admission rates affect it more than hospital efficiency [4, 30]. Bed occupancy targets are set to control the supply of hospital beds and costs, and to identify shortages [4]. In addition to target bed occupancy rates, planning and management of bed capacity must consider standards of clinical and service performance, like average waiting times for beds, so that patients can be placed in the right beds at the right time. Thus, managers and policymakers must determine hospital capacity based on performance measures [4].

In addition to factors related to the supply and demand for services, external issues such as sub-regional equitable access, inter-regional patient flows, funding policies, staffing, and availability of standards must be taken into consideration. These factors are examined in a few models such as the capacity model [10, 22]. One of the important issues affecting on the hospital bed number in one region is decision making on expanding the existing hospitals or constructing new small hospitals. This is a political issue and also very difficult for policy makers to choose between them. In this situation, there is a challenge between efficiency and accessibility of hospital services. So, policymakers should consider all external elements, alongside demand and supply-side factors to determine required numbers of hospital beds at hospital or regional levels. It is also necessary to develop different scenarios based on these factors, and to use a combination of methods and models to estimate bed requirements [32]. However, hospital capacity planning should not be limited to these components and must account for variations in bed numbers. Evidence suggests that the supply of hospital beds increases the demand for hospital services (Roemer’s Law), and that this manifest in higher admission rates, longer stays, or a mixture of both [45, 46]. However, an increase in the number of beds in long-term care facilities reduces the average length of stay in acute care hospitals, and increases the rate of discharge from acute care hospitals to other facilities. This issue must be taken into consideration to determine the optimal number of beds in acute care hospitals and long-term care hospitals within a region [47].

In addition to supplying required numbers of hospital beds in the short and medium terms, managers and policymakers require information about the most effective strategies to reduce the need for hospital beds in the future. The most effective, way of doing this appears to be through health promotion and disease and disability prevention [38]. However, to reduce bed needs in the short term, health systems can use a range of interventions that seek to reduce inpatient admissions and facilitate inpatient discharge. Avoiding emergency admissions by establishing medical observation units, avoiding non-urgent admissions through day care, and shifting inpatient care to ambulatory care are the most effective strategies for reducing inpatient admissions [10, 11, 24, 26, 48]. Discharge planning from hospital to home is another effective strategy in reducing the need for hospital beds, as it decreases lengths of stay and the level of unplanned readmissions, by facilitating patient discharge and shifting care from hospitals to homes [49]. Managers and policymakers should therefore be concerned with ensuring appropriate bed use for different specialties before seeking to increase the number of hospital beds [50]. Furthermore, integrated care is another strategy to strengthen health systems and reduce the need for inpatient care by focusing on individual needs, collaboration, and coordination between specialties and among health care providers [51]. There are three levels of integration that have been shown to be effective in reducing the need for hospital beds: the macro-level (provision of integrated care to an entire population), the meso-level (provision of integrated care to a particular care group or population with the same disease or condition), and the micro-level (coordination of care for individual carers and patients). Integrated care pathways are tools developed by multidisciplinary teams for pre- and post-admission care. A number of studies have shown that these pathways can reduce non-urgent admissions and lengths of stay and, consequently, reduce the need for hospital beds [52,53,54].

Limitation

Besides hospital bed capacity planning at the regional and hospital levels, hospital bed capacity by different inpatient units must be determined to allow for optimal allocation. However, in our review, the latter (operational level of capacity planning) was not examined because of time constraints. This calls for a study of methods and models related to the operational level of hospital capacity planning and optimal bed distribution among different hospital units.

Conclusions

Decisions about the optimal number of hospital beds can be made at hospital or regional levels. However, given the interaction between variables influencing bed number requirements, it is recommended to determine the required number of hospital beds by accounting for demographic factors, clinical specialty groups (surgical and non-surgical), inter-regional access to services, efficiency, and standards for provision of care. Currently, there are no specific standards for the required number of beds at hospital and regional levels. Policymakers can use various existing models and methods to estimate the optimal number of beds on the basis of country conditions, demographic and epidemiological changes, geographical characteristics, political and socio-economic factors, and by accessing accurate and comprehensive data. Therefore, strategic planning is necessary for managers and policymakers to gain a clearer understanding of the future of hospitals and of their optimal number of beds. In addition to supplying bed requirements in the medium term, policies should also be implemented that are designed to reduce the future need for hospital beds, especially through the expansion of primary health care and health promotion activities.

Availability of data and materials

Not applicable.

Abbreviations

CHUV:

Centre Hospitalier Universitaire Vaudois (The Lausanne University Hospital)

MCHP:

The Manitoba Centre for Health Policy

SHO:

The Swiss Health Observatory

SREA:

Sub-Regional Equitable Access

References

  1. OECD (2017). Health at a glance 2017: OECD indicators. Paris. https://0-doi-org.brum.beds.ac.uk/10.1787/health_glance-2017-en: OECD publishing; 2017.

    Book  Google Scholar 

  2. Liu TM. A generic bed planning model: University of Toronto (Canada); 2012.

    Google Scholar 

  3. Rechel B, Wright S, Barlow J, McKee M. Hospital capacity planning: from measuring stocks to modelling flows. Bull World Health Organ. 2010;88:632–6.

    Article  PubMed  PubMed Central  Google Scholar 

  4. Green LV. How many hospital beds? INQUIRY. J Health Care Organization, Provision, and Financing. 2002;39(4):400–12.

    Article  Google Scholar 

  5. Nguyen J, Six P, Antonioli D, Glemain P, Potel G, Lombrail P, et al. A simple method to optimize hospital beds capacity. Int J Med Inform. 2005;74(1):39–49.

    Article  CAS  PubMed  Google Scholar 

  6. Nguyen J, Six P, Chaussalet T, Antonioli D, Lombrail P, Le Beux P. An objective method for bed capacity planning in a hospital department. Methods Inf Med. 2007;46(04):399–405.

    Article  CAS  PubMed  Google Scholar 

  7. Nguyen JM, Six P, Parisot R, Antonioli D, Nicolas F, Lombrail P. A universal method for determining intensive care unit bed requirements. Intensive Care Med. 2003;29(5):849–52.

    Article  CAS  PubMed  Google Scholar 

  8. Ruth RJ. A mixed integer programming model for regional planning of a hospital inpatient service. Manag Sci. 1981;27(5):521–33.

    Article  Google Scholar 

  9. Kuntz L, Scholtes S, Vera A. Incorporating efficiency in hospital-capacity planning in Germany. Eur J Health Econ. 2007;8(3):213–23.

    Article  PubMed  Google Scholar 

  10. Ewbank L, Thompson J, McKenna H. NHS hospital bed numbers: past, present, future: the King's fund 2017 [cited 2018]. Available from: https://www.kingsfund.org.uk/publications/nhs-hospital-bed-numbers.

  11. Bouckaert N, Van den Heede K, Van de Voorde C. Improving the forecasting of hospital services: a comparison between projections and actual utilization of hospital services. Health Policy. 2018;122(7):728–36.

    Article  PubMed  Google Scholar 

  12. Rayan N, Admi H, Shadmi E. Transitions from hospital to community care: the role of patient–provider language concordance. Israel J Health Policy Res. 2014;3(1):24.

    Article  Google Scholar 

  13. Sibbald B, McDonald R, Roland M. Shifting care from hospitals to the community: a review of the evidence on quality and efficiency. J Health Serv Res Policy. 2007;12(2):110–7.

    Article  PubMed  Google Scholar 

  14. Harper PR. A framework for operational modelling of hospital resources. Health Care Manag Sci. 2002;5(3):165–73.

    Article  PubMed  Google Scholar 

  15. Baru RA. A decision support simulation model for bed management in healthcare; 2015.

    Google Scholar 

  16. Torabipour A, Zeraati H, Mohammad A, Rashidian A, Sari AA, Sarzaiem MR. Bed capacity planning using stochastic simulation approach in cardiac-surgery Department of Teaching Hospitals, Tehran, Iran. Iran J Public Health. 2016;45(9):1208.

    PubMed  PubMed Central  Google Scholar 

  17. Arksey H, O'Malley L. Scoping studies: towards a methodological framework. Int J Soc Res Methodol. 2005;8(1):19–32.

    Article  Google Scholar 

  18. Tate RB, MacWilliam L, Finlayson GS. A methodology for estimating hospital bed need in Manitoba in 2020. Can J Aging/La Revue canadienne du vieillissement. 2005;24(S1):141–51.

    Article  Google Scholar 

  19. Oettli A. Perspectives des besoins en lits hospitaliers pour le canton de Vaud l'horizion 2005 et extrapolation pour 2010 et 2015: Service cantonale de recherche et d'information statistiques; 2000.

    Google Scholar 

  20. Islamic Parliament Research Center of the Islamic Republic of IRAN. Executive Regulation of Article 193 of the Third economic, social and cultural development plan of the Islamic Republic of Iran. 2001–2004.

  21. Toussaint E, Herengt G, Gillois P, Fo K. Method to determine the bed capacity, different approaches used for the establishment planning project in the University Hospital of Nancy. Studies in health technology and informatics. 2001;84(2):1404–8.

  22. Trye P, Murray N, Stewart A. Health service capacity modelling. Aust Health Rev. 2002;25(4):159–68.

    Article  PubMed  Google Scholar 

  23. Mouza A-M. Estimation of the total number of hospital admissions and bed requirements for 2011: the case for Greece. Health Serv Manag Res. 2002;15(3):186–92.

    Article  Google Scholar 

  24. Stewart DK, Tate R, Finlayson G, MacWilliam L, Roos NP. Projecting hospital bed needs for 2020. Winnipeg: Manitoba Centre for Health Policy; 2002.

    Google Scholar 

  25. Dunnigan MG, Pollock AM. Downsizing of acute inpatient beds associated with private finance initiative: Scotland's case study. Bmj. 2003;326(7395):905.

    Article  PubMed  PubMed Central  Google Scholar 

  26. Zeraati H, Zayeri F, Babaee G, Khanafshar N, Ramezanzadeh F. Required hospital beds estimation: a simulation study. J Appl Sci. 2005;5:1189–91.

    Article  Google Scholar 

  27. Weaver F, Cerboni S, Oettli A, Andenmatten P, Widmer M. Modèle de projection du recours aux soins comme outil d'aide à la planification hospitalière: Observatoire suisse de la santé; 2009.

    Google Scholar 

  28. Farmer R, Emami J. Models for forecasting hospital bed requirements in the acute sector. J Epidemiol Community Health. 1990;44(4):307–12.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  29. Kumar A, Mo J, editors. Models for bed occupancy management of a hospital in Singapore. Proceedings of the 2010 International Conference on Industrial Engineering and Operations Management; 2010: Citeseer.

  30. Jones R. Myths of ideal hospital size. Med J Aust. 2010;193(5):298–300.

    Article  PubMed  Google Scholar 

  31. Langley SA, Fuller SP, Messina JP, Shortridge AM, Grady SC. A methodology for projecting hospital bed need: a Michigan case study. Source Code Biol Med. 2010;5(1):4.

    Article  PubMed  PubMed Central  Google Scholar 

  32. Seematter-Bagnoud L, Fustinoni S, Dung DH, Santos-Eggimann B, Koehn V, Bize R, et al. Comparison of different methods to forecast hospital bed needs. European Geriatric Med. 2015;6(3):262–6.

    Article  Google Scholar 

  33. Pinto LR, FCC d C, IHO P, YCNMB R, editors. Analisys of hospital bed capacity via queuing theory and simulation. Winter Simulation Conference (WSC). US: IEEE; 2014.

    Google Scholar 

  34. Eilat E. Modeling hospital bed utilization: the effect of race, ethnicity and country of origin on end of life hospital bed use: Brandeis University, The Heller School for Social Policy and Management; 2013.

    Google Scholar 

  35. Winter R, Gericke A, Bucher T. Method Versus Model–Two Sides of the Same Coin? Advances in Enterprise Engineering III. Berlin: Springer; 2009. p. 1–15.

  36. State of the health system. Beds in the NHS: England. British Medical Association, 2018 20170056.

  37. Executive Regulation of Article 193 of the Third economic, social and cultural development plan of the Islamic Republic of Iran. In: Islamic Parliament of Iran, editor. Tehran: Islamic Parliament Research Center of the Islamic Republic of IRAN; 2001–2004.

  38. McKee M, World Health Organization. Reducing hospital beds: what are the lessons to be learned. Copenhagen: WHO Regional Office for Europe; 2004.

    Google Scholar 

  39. Minich-Pourshadi K. How Many Hospital Beds is Enough? [Internet]. Health Leaders Media; 2012 [cited 2018]. Available from: http://www.healthleadersmedia.com/finance/how-many-hospital-beds-enough?page=0%2C1.

  40. Gray AM, Bosanquet N. Forecasting the impact of demographic change: the case of the British National Health Service. Health Policy. 1992;20(3):269–75.

    Article  CAS  PubMed  Google Scholar 

  41. Jones R. Emergency admissions and hospital beds. Br J Healthc Manag. 2009;15(6):289–96.

    Article  Google Scholar 

  42. Jones R. Forecasting medical emergency admissions. Br J Healthc Manag. 2015;21(2):98–9.

    Article  Google Scholar 

  43. Moghadam GS, Torabipour A, Yazdanpanah A. Simulating service system and estimating the hospital beds for ICU patients of Behbahan Shahidzade hospital in 2015. Int J Adv Biotechnol Res. 2016;7(2):836–42.

    Google Scholar 

  44. Sato D, Fushimi K. Impact of teaching intensity and academic status on medical resource utilization by teaching hospitals in Japan. Health Policy. 2012;108(1):86–92.

    Article  PubMed  Google Scholar 

  45. Chung W, Oh S-M, Suh T, Lee YM, Oh BH, Yoon C-W. Determinants of length of stay for psychiatric inpatients: analysis of a national database covering the entire Korean elderly population. Health Policy. 2010;94(2):120–8.

    Article  PubMed  Google Scholar 

  46. Delamater PL, Messina JP, Grady SC, WinklerPrins V, Shortridge AM. Do more hospital beds lead to higher hospitalization rates? A spatial examination of Roemer’s law. PLoS One. 2013;8(2):e54900.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  47. Motohashi T, Hamada H, Lee J, Sekimoto M, Imanaka Y. Factors associated with prolonged length of hospital stay of elderly patients in acute care hospitals in Japan: a multilevel analysis of patients with femoral neck fracture. Health policy. 2013;111(1):60–67.

    Article  PubMed  Google Scholar 

  48. British Medical Association. State of the health system. Beds in the NHS: England. 2018 20170056.

  49. Shepperd S, Lannin NA, Clemson LM, McCluskey A, Cameron ID, Barras SL. Discharge planning from hospital to home. Cochrane Database Syst Rev. 2013;1(1):1–19.

  50. McDonagh MS, Smith DH, Goddard M. Measuring appropriate use of acute beds: a systematic review of methods and results. Health policy. 2000;53(3):157–84.

    Article  CAS  PubMed  Google Scholar 

  51. WHO Regional Office for Europe. Integrated care models: an overview. Health Services Delivery Programme, Division of Health Systems and Public Health 2016.

    Google Scholar 

  52. Casas A, Troosters T, Garcia-Aymerich J, Roca J, Hernأ،ndez C, Alonso A, et al. Integrated care prevents hospitalisations for exacerbations in COPD patients. Eur Respir J 2006;28(1):123–130.

    Article  CAS  Google Scholar 

  53. Olsson L-E, Jn K, Ekman I. The integrated care pathway reduced the number of hospital days by half: a prospective comparative study of patients with acute hip fracture. J Orthopaedic Surg Res. 2006;1(1):3.

    Article  Google Scholar 

  54. Shabaninejad H, Alidoost S, Delgoshaei B. Identifying and classifying indicators affected by performing clinical pathways in hospitals: a scoping review. Int J Evidence-Based Healthcare. 2018;6:3–24.

    Article  PubMed  Google Scholar 

Download references

Acknowledgements

The authors would like to acknowledge the assistance and support of Dr. Ann-Lise Guisset.

Funding

Not applicable.

Author information

Authors and Affiliations

Authors

Contributions

HR designed the study. HR and SA collected, analyzed, and interpreted the data. HR and SA wrote the manuscripts with the support of RM and VB. All authors provided critical feedback and approved the final manuscript.

Corresponding author

Correspondence to Saeide Alidoost.

Ethics declarations

Ethics approval and consent to participate

Not applicable.

Consent for publication

Not applicable.

Competing interests

The authors declare that they have no competing interests.

Additional information

Publisher’s Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Rights and permissions

Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated in a credit line to the data.

Reprints and permissions

About this article

Check for updates. Verify currency and authenticity via CrossMark

Cite this article

Ravaghi, H., Alidoost, S., Mannion, R. et al. Models and methods for determining the optimal number of beds in hospitals and regions: a systematic scoping review. BMC Health Serv Res 20, 186 (2020). https://0-doi-org.brum.beds.ac.uk/10.1186/s12913-020-5023-z

Download citation

  • Received:

  • Accepted:

  • Published:

  • DOI: https://0-doi-org.brum.beds.ac.uk/10.1186/s12913-020-5023-z

Keywords