Iranian Journal of Medical Sciences

Document Type : Original Article(s)

Authors

1 Department of Management, School of Economics, Management and Social Sciences, Shiraz University, Shiraz, Iran

2 Health Human Resources Research Center, School of Management and Medical Informatics, Shiraz University of Medical Sciences, Shiraz, Iran

3 Department of Health Care Management, Shiraz Branch, Islamic Azad University, Shiraz, Iran

4 Department of Public Health, School of Health, Fasa University of Medical Sciences, Fasa, Iran

Abstract

Background: In the ever-changing healthcare environment, policymakers and managers need a comprehensive evaluation system to accurately identify and prioritize factors affecting hospital performance. The present study aimed to identify and rank critical factors affecting hospital performance using the best-worst method (BWM). 
Methods: A cross-sectional study was conducted during 2016-2019 to identify and prioritize factors affecting the performance of Iranian public hospitals using the BWM. Initially, the content validity ratio (CVR) was used to screen the identified factors. Then, using a linear programming formula, a pairwise comparison between the best/worst criterion with all other identified criteria was performed.
Results: The most important internal factor was efficiency, and its associated indicators were mainly related to financial factors. Among all external factors, the most prominent were economic, legal, and political factors, which were negatively affected by budgeting policies and the payment system. A megatrend was also identified in the form of a national health insurance system as well as a shift from employer-based to government-subsidized insurance coverage.
Conclusion: External factors (economic and political) had a greater impact on the performance of public hospitals than internal factors (efficiency and effectiveness).

Keywords

What’s Known

The best-worst method (BWM) is used across diverse industries to prioritize critical factors. BWM is the state-of-the-art multi-criteria decision-making method.

What’s New

A new set of internal and external factors to screen the performance of Iranian public hospitals is identified using the BWM. External factors (economic and political) have a greater impact on hospital performance than internal factors.

Introduction

Health system performance refers to improving a patient’s overall health while achieving business goals. Health systems are continuously faced with key issues such as inefficiency, the challenge of meeting patient needs, and increased costs. 1 Improving the performance of hospitals is thus essential to appropriately respond to such challenges and adapt to social changes in modern society. 2 To this end, health managers and policymakers need a specific framework to evaluate the performance of hospitals. 1

Performance evaluation is a key success factor for any organization and a persistent challenge facing managers and stakeholders. 3 Performance evaluation systems allow identification of the current organizational status and quality of activities, especially in complex and dynamic environments. Without such a system, an organization may not survive in the long run. For the first time, in 1859, Florence Nightingale evaluated hospital performance using parameters such as mortality and infection rates. 4 However, it is only since 2000 that certain activities have been initiated to develop tools to measure health system performance. 5 Key performance indicators (KPIs) are performance-based decision-making tools used by policymakers and managers. 6 - 8 These indicators are used to monitor, evaluate, and manage health systems to improve the quality, efficiency, and effectiveness of health care and to plan and develop organizational goals. 9

Given the increasing complexity of hospital management, there is a need for tools to evaluate hospital performance based on scientific knowledge. 10 Such tools must include appropriate indicators that adequately reflect the performance of hospitals. 11 In addition, taking into account possible changes in hospital performance over time, there should be enough flexibility to adapt performance indicators, as new evidence comes to light. 12 Additionally, it is inevitable that hospitals will have to deal with performance indicators that are at times contradictory, e.g., safety versus satisfaction or cost of goods versus treatment cost. Consequently, it is essential to identify and prioritize indicators in terms of quality and quantity. For this purpose, multi-criteria decision-making (MCDM) is one of the methods used to explicitly evaluate multiple conflicting criteria in decision making. 13 Another method is the best-worst method (BWM), developed by Rezaei in 2015. 14 This method is proposed to solve MCDM problems by comparing the best/worst criterion against all other identified criteria. In comparison with other algorithms, the advantage of BWM is that it requires fewer comparative data and leads to more consistent and stable results. 15 In addition, it uses pairwise comparison and thus less likelihood of inconsistencies by comparing too many criteria. The results of various case studies that implemented BWM indicated that it outperforms other methods in terms of consistency ratio, minimum violation, total deviation, and conformity. 14

Although the BWM has been widely used in various industries, its implementation in the health system is scarce. To the best of our knowledge, only a few studies in Iran have implemented the BWM for decision-making. Abadi and colleagues used the BWM to develop a strategic planning framework for expanding the medical tourism industry in Yazd (Iran). 16 In another study, Rowshan and colleagues used this method to identify and prioritize factors influencing outsourcing in Zeinabieh Hospital in Shiraz (Iran). 17 In the present study, the BWM is used to identify and prioritize KPIs of public hospitals in Iran.

Materials and Methods

The present study was approved by the Ethics Committee of Shiraz University of Medical Sciences, Shiraz, Iran (IR.SUMS.REC.1396.S274). A cross-sectional study was conducted during 2016-2019 to identify and prioritized KPIs in Iranian public hospitals using the BWM. Initially, the best and worst criteria for decision-making were determined and compared. Then, the problem was optimized, and the weight of each criterion was determined based on two features, namely the probability and the effect. Finally, using the obtained weights, alternatives resulting in a set of criteria were calculated, and the best alternative was selected. We also calculated the inconsistency rate. The BWM consists of six steps:

Step 1: Define a set of decision-making criteria. In this step, a set of indicators required for decision-making is defined as {c1, c2, …, cn}. In addition, factors affecting the performance of public hospitals were extracted based on a previous study. 8 Because of the large number of factors and indicators, the content validity ratio (CVR) was used for screening purposes. CVR was quantitatively calculated based on the opinion of an expert panel. The experts were requested to rate each item on a three-point scale, namely “effective”, “effective but not necessary” and “not effective”. Since the expert panel comprised 32 members, CVR>0.29 was considered acceptable. 18

CVR=NE-N/2N/2

where NE: The number of the experts who rated an item as “necessary”, N: The total number of the experts.

Step 2: Define the best (most important) and the worst (least important) criteria. The selection was made by the panel based on their expert judgment.

Step 3: Define the priority of the best criterion among all other criteria by assigning a score from one to nine. The comparison was performed by the experts using the pairwise comparison method. The priority vector of the best indicator compared to others was expressed as AB=(aB1, aB2,…, aBn).

Step 4: Define the priority of the worst criterion among all other criteria in the same manner as in step 3. The priority vector of all indicators compared to the worst indicator was expressed as Aw= (aw1, aw2, …, awn)T

Step 5: Modeling the research problem with a linear programming formula. In this stage, for each pairwise comparison of the best criterion with the other criteria (Wb/Wj), a technical coefficient of the best comparison (αbj) was obtained. Similarly, for each pairwise comparison of the worst criterion with the other criteria (Wj/Ww), a technical coefficient of the worst comparison (αjw) was obtained. These were expressed as:

wb/wj=abj

wj/ww=ajw

The maximum difference between the equations was minimized.

|wb/wj-abj|

|wj/ww-ajw|

The result of minimizing the equations was the formation of a function with restrictions.

minmaxj={|wb/wj-abj|.|wj/ww-ajw|}

such that jwj=1, wj0; for all j.

To solve the equation, a linear programming formula was developed: min ε such that

|wb/wj-abj|ε.for all j

|wj/ww-ajw|ε.for all j

jwj=1, wj0.for all j.

Step 6: Solving the linear programming formula to determine the final weights of each criterion. In this stage, indicators were evaluated and prioritized using the obtained weights.

Data were analyzed using LINGO software version 18.0.44 (Lindo Systems, IL, USA).

Results

Based on the opinion of the expert panel, out of 58 external and 33 internal factors affecting the performance of public hospitals, 18 and 11 factors were selected based on the CVR value, respectively. Internal factors were categorized into two dimensions, namely efficiency, and effectiveness. Indicators associated with efficiency were mainly related to financial factors. External factors were categorized into seven dimensions, namely economic, legal, social, environmental, political, technological, and healthcare megatrends. Among these, economic, legal, and political were the most prominent factors negatively affected by budgeting policies and the payment system. A megatrend was also identified in the form of a national health insurance system as well as a shift from employer-based to government-subsidized insurance coverage (table 1).

Dimensions Indicators CVR
Internal factors
Efficiency Daily costs per person 0.375
Ratio of payroll expenses to total revenue per day 0.687
Ratio of the costs of medication and health care products to total allocated budget 0.375
Ratio of the costs of medication and health care products to total costs 0.562
Ratio of total costs to available beds 0.562
Cost revenue ratio 0.687
Cost-effectiveness ratio of health care services 0.562
Duration of hospital stay 0.437
Maintenance of human resources 0.500
Effectiveness Emergency care waiting time (triage, admission and discharge process, surgery, etc.) 0.466
Availability of a system to review and analyze mortality data 0.466
Number of developed guidelines in the hospital 0.375
Percentage of doctors using guidelines 0.517
Treatment compatibility with patients’ needs 0.666
Collaboration between the management team, doctors, and staff in quality improvement programs 0.354
External factors
Economic Structure of payment system 0.647
Tariff structure 0.657
Structure of procurement system (medicine and supplies) 0.290
Inflation rate in the health sector 0.454
Increase in costs 0.588
Global inflation rate 0.333
Structure of the financial system 0.543
The share of the health sector of the national budget 0.301
Timely payment of hospital claims by health insurers from government subsidies 0.824
Patient out-of-pocket contribution 0.314
Economic sanctions 0.467
Legal Fair salary scale 0.697
Hospital budgeting system (global budget, linear budget set, ownership of savings) 0.882
Health technology assessment (license to import specialized equipment and medication) 0.371
Mandatory implementation of guidelines from the Ministry of Health and insurance companies 0.657
Social Changes in disease patterns 0.394
Improving education level and access to information resources 0.294
Equity in utilization of hospital care 0.412
Environmental Increased risk of illnesses due to environmental pollution 0.486
Political Privatization in line with Article 44 of the Constitution of the I.R. Iran 0.882
Technological Advancement in health information technology (home care, telemedicine, distance education, electronic health records) 0.486
Healthcare megatrends General health insurance and a shift from employer-based to government-subsidized insurance coverage (tax-based system) 0.724
A paradigm shift from quantity to quality health service provision (quality, efficiency, safety, cost) 0.722
Aging population affects the health system 0.388
Emergence of genomic medicine for prognostic and diagnostic purposes 0.294
CVR: Content validity ratio
Table 1.Internal and external factors and the corresponding indicators affecting hospital performance

Among all factors affecting the performance of public hospitals, economic and social dimensions (external factors) received the highest and lowest ranks with the weights of 0.27 and 0.05, respectively. Efficiency and effectiveness (internal factors) were ranked third and fifth, respectively (table 2).

Factors Weight (rank) Indicators Local weight1 Incompatibility rate Global weight2 Final rank
Economic 0.27099 (1) Structure of payment system 0.233 0.058 0.063 4
Tariff structure 0.078 0.021 18
Structure of procurement system (medicine and supplies) 0.049 0.013 23
Inflation rate in the health sector 0.107 0.029 11
Increase in costs 0.098 0.026 14
Global inflation rate 0.053 0.014 21
Structure of financial system 0.097 0.026 15
Timely payment of hospital claims by insurers 0.099 0.026 13
Patient out-of-pocket contribution 0.103 0.027 12
Economic sanctions 0.036 0.009 28
The share of health sector of the national budget 0.043 0.011 24
Political 0.151799 (2) Privatization in line with Article 44 of the Constitution of the I.R. Iran 0.151 0.041 0.151 1
Efficiency 0.108386 (3) Daily costs per patient 0.108 0.073 0.011 25
Ratio of payroll expenses to total revenue per day 0.097 0.010 26
Ratio of the costs of medication and health care products to total allocated budget 0.071 0.007 33
Ratio of the costs of medication and health care products to total costs 0.070 0.007 34
Ratio of total cost to available beds 0.091 0.009 29
Cost revenue ratio 0.278 0.030 10
Cost-effectiveness ratio of health care services 0.171 0.018 20
Duration of hospital stay 0.058 0.006 39
Maintenance of human resources 0.052 0.005 40
Healthcare megatrends 0.093363 (4) General health insurance and a shift from employer-based to government-subsidized insurance coverage 0.390 0.047 0.036 7
A paradigm shift from quantity to quality health service provision 0.431 0.040 5
Aging population affecting the health system 0.103 0.009 31
Emergence of genomic medicine for prognostic and diagnostic purposes 0.075 0.007 37
Effectiveness 0.090758 (5) Availability of a system to review and analyze mortality data 0.083 0.052 0.007 35
Number of developed guidelines in the hospital 0.080 0.007 36
Treatment compatibility with patient needs 0.110 0.010 27
Percentage of doctors using guidelines 0.125 0.018 19
Emergency care waiting time (triage, admission and discharge process, surgery, etc.) 0.204 0.039 6
Collaboration between management team, doctors, and staff in quality improvement programs 0.435 0.006 38
Legal 0.083651 (6) Fair salary scale 0.116 0.030 0.009 30
Hospital budgeting system 0.392 0.032 8
Health technology assessment 0.111 0.009 32
Mandatory implementation of guidelines 0.379 0.031 9
Technological 0.080386 (7) Advancement in health information technology 0.080 0.027 0.080 2
Environmental 0.063281 (8) Increased risk of illnesses due to environmental pollution 0.063 0.033 0.063 3
Social 0.05724 (9) Changes in disease burden pattern 0.374 0.022 0.021 16
Improving education level and access to information resources 0.254 0.014 22
Equity in utilization of hospital care 0.371 0.021 17
1: Weight of indicator, 2: Weight of dimension×weight of indicator
Table 2.Final weights of the factors and indicators affecting the performance of Iranian public hospitals

In the “economic factor” category, the highest-ranking indicators were the structure of the payment system, the inflation rate in the health sector, and patient out-of-pocket contribution. Similarly, the hospital budgeting system and mandatory implementation of guidelines were the highest-ranking indicators in the “legal factors” category. In the category of “social factors”, changes in disease patterns and equity in utilization of hospital services were the most important indicators. Of all indicators, privatization in line with Article 44 of the Constitution of the I.R. Iran (political factor) ranked first followed by advancement in health information technology (technological factor) and increased risk of illnesses due to environmental pollution (environmental factor). In the category of “healthcare megatrends”, a paradigm shift from quantity to quality health service provision, national health insurance, and a shift from employer-based to government-subsidized insurance coverage were the most important items. Among all indicators of internal factors, the most important indicators affecting the performance of public hospitals were emergency care waiting time, the cost revenue ratio, the percentage of doctors using guidelines, and the cost-effectiveness ratio of health care services (table 2)

Discussion

The results of the BWM showed that the economic factor (weight: 0.27099) was the most contributing factor affecting the performance of public hospitals in Iran. Among all indicators of the economic factor, the structure of the payment system had the greatest impact on the performance of public hospitals. The payment system has been reported to be one of the major issues, because it is designed to promote competition between hospitals and increase the number of services to attract more patients. 19 This model is referred to as the pay-for-service approach, whereby payments are made based on the intensity (volume, frequency, duration, and type) of the provided services. In recent years, however, a new megatrend has been observed in which a shift from a pay-for-service to a pay-for-performance model has taken place, whereby higher quality of care has become the basis for the payment system. 20 - 22 This is indicative of a paradigm shift from quantity to quality provision of health services. The importance of this paradigm shift was also reflected in our results, as it ranked fifth among all indicators. Implementation of pay-for-performance will eventually lead to the provision of higher quality services and reduced costs. 23 In addition, one of the consequences of this approach is the development of a value-based purchasing program. 22 , 24 , 25 Accordingly, the Iranian health macro policies also emphasize topics such as a quality-based payment system, efficiency improvement, fair salary, and incentives for healthcare providers to improve health care. 22 Unquestionably, hospital performance will markedly improve if healthcare managers and policymakers pro-actively reform the current payment system.

The political factor (weight: 0.151799) was also found to be an important criterion affecting the performance of public hospitals. Based on the opinion of the expert panel, privatization (in line with Article 44 of the Constitution of the I.R. Iran) was the key indicator affecting hospital performance. This approach is an essential component of health system reform, 26 as it will improve hospital performance through cost reduction, faster provision of health care services, higher efficiency, improving the skills of health care workers, and direct focus on key hospital processes. 27 The most important factor for the success of this approach is the collaboration between public and private health sectors in synchronizing their services to increase added value. Additionally, streamlining the structure and organization of hospitals and better evaluating the performance of management teams provide greater adaptability. Furthermore, it gives more flexibility and functional autonomy to hospitals due to their financial dependence on the state budget. 28 - 30 However, Kavosi and colleagues warned against outsourcing public health services to the private sector, as it involves complex and multi-criteria decisions. 31

Among all factors affecting hospital performance, efficiency and effectiveness ranked third and fifth, respectively. The main indicators associated with these factors were emergency care waiting time (total rank: 6) and cost revenue ratio (total rank: 10). The latter is indicative of the impact of financial conditions on efficiency as an internal factor. In line with our findings, Rahimi and colleagues used a balanced scorecard to determine the performance indicators identified in Iranian public hospitals. They concluded that the cost revenue ratio is one of the key performance indicators. They also showed that this ratio was causally related to as many as 16 different indicators (73%). Another study also reported that financial indicators significantly affected hospital performance and had a causal relationship with other performance indicators. 3

The results of our study showed that emergency care waiting time (total rank: 6) had a great impact on the effectiveness of hospital performance. In a meta-analysis study, Fazel Hashemi and colleagues reported that waiting time in the emergency departments of Iranian hospitals is well above national and international standards. 32 The longer the emergency care waiting time, the less efficient the hospital process. 33 It is therefore essential to address this indicator not only for its positive contribution to effectiveness, but also for its impact on several other hospital performance factors. Rahimi and colleagues showed that emergency care waiting time has a causal relationship with at least eight other indicators, namely cost revenue ratio, the average length of stay, bed occupancy rate, withdrawal of consent for treatment, hospital infection rate, patient satisfaction, and the number of patient complaints. 3 A triage system is an effective method to reduce waiting time in an emergency department. Choi and colleagues investigated the effect of triage rapid initial assessment by a doctor (TRIAD) on waiting time in an emergency department. 34 They reported that the average waiting time and processing time were reduced by 38% and 23%, respectively. Some other studies have applied different techniques to reduce emergency care waiting time. Based on the quality function deployment technique, Rahimi and colleagues proposed a model to improve the quality of emergency services. 35 In another study, Vashi and colleagues applied lean principles to reduce emergency care waiting times and reported a reduction of door-to-doctor time by 12.6 minutes. 36

The main strength of the present study is the inclusion of both internal and external performance factors affecting public hospitals in Iran. This approach differs from previous studies that solely focused on internal factors. The main limitation of the present study was caused by the COVID-19 pandemic, which hindered the data collection process and negatively affected the completion of the BWM questionnaire. It is recommended that further studies apply the improved version of BWM such as rough BWM or fuzzy BWM. This overcomes uncertainty and ambiguity issues associated with the opinion of the panel of experts. Due to the potential causal relationship between indicators and the complex nature of the topic, the use of soft operational research methods is recommended.

Conclusion

The results showed that external factors (economic and political) had a greater impact on the performance of public hospitals in Iran than internal factors (efficiency and effectiveness). In assessing the effectiveness of interventions and the performance of hospitals, these external factors should be considered.

Acknowledgment

The present manuscript is submitted in partial fulfillment of the requirements for the PhD degree of K. Pourmohammadi (research proposal: 95-01-07-13769). The authors express their gratitude to the Research Council of Shiraz University of Medical Sciences (Shiraz, Iran) for their support.

Authors’ Contribution

P.S: Designed the study, finalized the data synthesis and its overall methodology and revised the manuscript critically for important intellectual content; K.P and R.H: Retrieved and interpreted the data and prepared the initial draft of the article; P.B: Contributed to data analysis and revised the article; N.H: Cooperated in data analysis, improved the structure and conclusion of the paper and revised the manuscript critically for important intellectual content. The study was supervised by PS. All authors read and approved the final manuscript and are responsible for all aspects of the work in ensuring that questions related to the accuracy or integrity of any part of the work are appropriately investigated and resolved.

Conflict of Interest

None declared.

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