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Efficiency of COVID-19 Testing Centers in Iran: A Data Envelopment Analysis Approach

Published online by Cambridge University Press:  13 July 2021

Hamed Seddighi*
Affiliation:
Campus Fryslân, University of Groningen, Leeuwarden, Friesland, the Netherlands
Hossein Baharmand
Affiliation:
Department of ICT, University of Agder, Norway
Ali Morovati Sharifabadi
Affiliation:
Department of Industrial Management, University of Yazd, Yazd, Iran
Ibrahim Salmani*
Affiliation:
Department of Health in Disaster and Emergency, School of Public Health, Shahid Sadoughi University of Medical Sciences, Yazd, Iran
Saeideh Seddighi
Affiliation:
Social Welfare Department, Faculty of Social Sciences, Tehran University, Tehran, Iran
*
Corresponding authors: Hamed Seddighi, Emails: [email protected], [email protected].
Corresponding authors: Hamed Seddighi, Emails: [email protected], [email protected].
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Abstract

Objective:

The purpose of this study is to investigate the efficiency of the Iranian Red Crescent Society (IRCS) in managing their nonmonetary resources involved in coronavirus disease 2019 (COVID-19) response.

Methods:

For this purpose, the data envelopment analysis approach was used to measure the efficiency, considering the number of personnel and vehicles and screened passengers as the input and output parameters, respectively. It was examined the efficiency of 10 IRCS’s branches given 17 d of screening operation. For the analysis, the DEA SolverPro software 15a version was used.

Results:

The results show that only 1 branch had been fully efficient in using the resources, while 5 branches showed less than 50% efficiency. This study reveals that it is unnecessary to use a fixed number of volunteers at different stations with different passenger numbers.

Conclusions:

Using resources without efficient planning can lead to direct costs such as food, transportation, and maintenance, as well as indirect costs such as burnout, fatigue, and stress when responding to the COVID-19 pandemic. This analysis should support IRCS’s managers to move their valuable resources from inefficient to efficient centers to increase the screening rate and reduce the fatigue of aid workers for the next pandemic rounds.

Type
Original Research
Creative Commons
Creative Common License - CCCreative Common License - BYCreative Common License - NCCreative Common License - ND
This is an Open Access article, distributed under the terms of the Creative Commons Attribution-NonCommercial-NoDerivatives licence (https://creativecommons.org/licenses/by-nc-nd/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is unaltered and is properly cited. The written permission of Cambridge University Press must be obtained for commercial re-use or in order to create a derivative work.
Copyright
© The Author(s), 2021. Published by Cambridge University Press on behalf of Society for Disaster Medicine and Public Health, Inc

On February 19, 2020, Iran reported its first confirmed case of coronavirus disease 2019 (COVID-19) infection. Reference Takian, Raoofi and Kazempour-Ardebili1,Reference Salmani, Seddighi and Nikfard2 As of August 4, 2020, Iran remained in the top 15 countries in terms of people infected with COVID-19 in the world, showing 312,035 confirmed cases and 17,405 deaths toll. 3,Reference Seddighi4 Given the huge impact of the pandemic and the lack of preparedness in the country, the Iranian government faced several challenges to deal with the situation, including a lack of human resources. As a result, the government commissioned the Iranian Red Crescent Society (IRCS) Reference Seddighi5 for screening passengers on the country’s main roads during the Iranian New Year holidays (a.k.a. Nowruz). The rationale was the IRCS’s access to a large volunteer network that could help run the screening plan. Reference Seddighi5 The IRCS has more than 25 y of experience in offering help and rescue missions. The society also has branches in all major cities of Iran, enabling access to several volunteers’ capacity. Reference Seddighi5,Reference Seddighi, Seddighi and Salmani6

During the pandemic response and in the screening program, several of IRCS’s volunteers were assigned and equipped with vehicles for screening passengers. The screening program began on March 18, 2020, for 17 d. In the program, the IRCS volunteers, based on the situation in different provinces, worked in more than 851 temporary stations at the main entrance and exit points of cities, including roads, train stations, and airports. Reference Seddighi5 The program’s objective was to test passengers with fever kits and identify the suspected cases of COVID-19. There was at minimum 4 trained personnel (limited to 8-h shifts for everyone) consisting of IRCS’s staff and volunteers in each station. This personnel was in charge of screening passengers for COVID-19 symptoms until the end of April 4, 2020. Reference Seddighi, Seddighi and Salmani6 All volunteers attending the plan had previously completed first aid training courses and prehospital emergency training for 22 h and 45 h, respectively. Following the program was voluntary and unpaid, but IRCS2 covered the operations costs. Reference Seddighi5

Background and Motivation

The IRCS is a nongovernmental organization and has access to limited monetary and nonmonetary resources. Moreover, it has a decentralized structure with branches in different cities with distinct capacities regarding human resources and vehicles (e.g., ambulances). Reference Seddighi and Baharmand7 As such, performance appraisal in measuring the efficiency was of great importance for IRCS headquarters for the program. Reference Seddighi5 Following the worldwide movement toward improving efficiency and addressing funding gaps, IRCS’s decision-makers seek to find actionable ways to limit costs and increase efficiency.

Poor resource management leads to the waste of resources, including money, human resources, buildings, and equipment. Reference Seddighi, Nosrati Nejad and Basakha8 Such a loss means that a particular share of outcome could potentially be achieved by using fewer resources. By preventing the loss of financial and human resources, such resources can provide high-quality and cost-effective services. Reference Vlădescu, Scîntee and Olsavszky9 To this end, the financial, economic analysis provides a logical and systematic framework for analyzing essential issues in the health sector. Reference Seddighi and Morovvati10 However, making decisions regarding the optimal provision of health care is a complex task and requires information about system performance for decision-makers. Reference Stryckman, Grace and Schwarz11

Efficiency has been introduced as a criterion for measuring performance. It refers to comparing the input value (ie, what is being used) by the output (ie, what is obtained). Reference Jakovljevic, Matter-Walstra and Sugahara12 Efficiency is a broad concept, and it has been discussed in a variety of areas, such as engineering, management, economics, and health. Reference Ngobeni, Breitenbach and Aye13 That said, several definitions of efficiency can be found in the literature and practice. Reference Yu, Chen and Li14 Farrell defines a firm’s efficiency as “to produce an output to a sufficiently large extent than a given input value,” and it specifies the technical allocation and economic performance of its type. Reference Farrell15 The definition has been used in the health sector; however, it was adapted the definition in this study for the pandemic response context.

Lei (2008) notes that the efficiency of the emergency response can be assessed using the data envelopment analysis (DEA) method under the constraints of total resources. Reference Lei16 Previously, the DEA method has often been used for locating emergency logistics, which could successfully increase the reliability of suggested locations while reducing the complexity of the decision-making process. Reference Xiaoming and Deqiang17 The method has been used for evaluating disaster resilience capacity in Istanbul to determine the efficient number of units for disaster response in this city. Reference Üstün18 That said, the application of this method for measuring performance is not rare. For instance, the DEA method was used to evaluate the Turkish disaster relief management system to identify inefficient units. Reference Üstün18 Moreover, the method has been applied to measure the efficiency of humanitarian aid across 106 countries between 2010 and 2016. The study indicated that the efficiency of aid expenditure could be improved between 20 and 50%. Reference Alda and Cuesta19

However, a few researches has been conducted in Iran to measure the efficiency of COVID-19 response. Given the limited resources available in the IRCS’s branches, this study could contribute to more efficient use of resources. The purpose of this study will be to evaluate the efficiency of the IRCS’s branches in the passengers’ screening program and to provide suggestions to increase the operation’s efficiency.

Methods

This research is a cross-sectional and descriptive-mathematical study using the DEA method. This study seeks to use a suitable model to evaluate the efficiency of the COVID-19 screening program in the Yazd Province of Iran with 10 counties as similar decision-making units (DMU).

Data have been collected from IRCS’s branches in 10 counties of the Yazd Province, Iran. The information about screening passengers in each station was primarily sent to the province’s emergency operations center (EOC) from March 17 to April 4, 2020.

The first author retrieved the data from the IRCS’s Deputy for Relief and Rescue. As explained earlier, screening stations, with the help of aid workers as well as rescue vehicles and ambulances, provide testing services to the passengers. Here, volunteers and staff are considered as first input (aid-workers), while the second input is vehicles (ambulance, rescue vehicle, and regular light cars), and screened passengers represent the output. Due to the lack of vehicles for transporting facilities and human resources, the full capacity of vehicles was used. Therefore, the Red Crescent Society used passenger cars as well as ambulances to carry out its missions. Furthermore, in some branches, passenger cars needed repairs, so other vehicles, such as ambulances and rescue vehicles, were used for the mission. Under normal circumstances, it was possible to borrow a car from other organizations, but at the beginning of the pandemic, all organizations were on standby and it was not possible to borrow a car. It is possible to add the station’s financial cost as another input; however, the financial cost of every station depended mainly on the number of aid workers. As such, the cost is hidden in the aid workers’ input. Moreover, for an optimized result, it was recommended that the following formula should be considered Reference Cooper, Seiford and Tone20,Reference Khezrimotlagh, Cook and Zhu21 :

Number of DMUs (10 in this study) ≥3*(input (2) +output (1))

Because of the above formula, with 10 DMUs in this study, data were summarized to 2 inputs and 1 output, and adding other inputs and outputs will decrease the quality of results. For analysis, the DEA SolverPro software 15a version was used. The collected data that are shown in Table 1 were used in the software.

Table 1. Health system efficiency using the data envelopment analysis method

Results

Table 1 shows the ranking of branches according to their level of efficiency. As the table depicts, the IRCS’s branch in the city of Yazd was found 100% efficient, followed by Ashkezar and Meybod branches with 94% and 93% efficiency, respectively. Of interest, 5 branches had less than 50% efficiency. The Bafq branch was the most inefficient branch in the Yazd Province according to the results, which can primarily be due to the low number of passengers that visited this city during the Nowruz holidays.

Discussion

One of the critical problems in any disaster response is to find the optimum allocation of scarce monetary and nonmonetary resources to operational locations. Reference Fiedrich, Gehbauer and Rickers22Reference Manopiniwes and Irohara24 Evidence shows that this problem was more demanding in COVID-19 response, owing to the pandemic’s huge impact on different sectors, including the health care. Reference Mannelli25,Reference Rosenbaum26 Iran struggled with this challenge specifically because of the high number of infected people, lack of financial resources, and insufficient preparedness. Reference Seddighi4,Reference Amir-Behghadami, Janati and Gholizadeh27

In addition, resource allocation in COVID-19 responses was considered as an ethical challenge. Reference Salmani, Seddighi and Nikfard2,Reference Mannelli25 Conventional performance appraisal methods often take into account the level of output resulting from the performance of the databases. However, it is easy to see that access to the output is only possible in the context of using input and using appropriate processes. Therefore, just paying attention to the output in evaluating and managing performance could be misleading.

The output indicator in this study was chosen as the number of screened passengers for COVID-19. Two options could be followed to increase efficiency. The first option is increasing the output or decreasing the input. Because the number of passengers screened in this project is considered the output, and 1 of the government’s goals has been to reduce people’s travel during quarantine, so it is not possible to consider increasing the output as a goal. Thus, to increase efficiency, it is needed to work on reducing the input. Reducing the input could decrease the costs of the program. Moreover, it is a significant way toward the safety of volunteers. It was reported that, in this program in Iran, at least 20 volunteers got infected with the COVID-19.

The second option could be relocating resources. It seems that to increase efficiency, especially in branches with low efficiency, moving resources can be considered as a suggestion. Due to the branches’ low efficiency, the number of passengers was very few, and they were among the cities that were not in the path of passengers, so the use of personnel and cars was not necessary. It can be suggested that a low-efficiency branch such as Bafq branch could move some of its personnel and vehicles to more efficient branches such as the Yazd branch to cover more people or reduce the fatigue of aid workers in the Yazd branch. However, there are political challenges in moving resources, and reducing the input is difficult in disasters. Reference Geale28,Reference Tatham and Houghton29 Sometimes, governors, attorneys, and military forces intervene in allocating human resources or vehicles. Reference Hannigan30 The more challenging part is that the allocated items are taken and transferred to another city. In this case, there may be a lot of political resistance or unrest in the region. Reference Hui and Ng31 Therefore, it is necessary to plan the optimal allocation of resources in advance. Reference Ferris32,Reference Pettit and Beresford33 For example, in the context of this study, the number of passengers passing through different cities can be estimated. Therefore, it was possible to plan the resource allocation (input) according to the expected output.

Conclusions

In the present study, an attempt was made to solve the resource allocation problem using 1 of the well-established research methods in operations research, such as the DEA method. In this study, screening stations’ performance was evaluated using an input-driven model among different data analysis models and considering the input and output indicators. Using the data for 10 IRCS’s branches, the 3 branches of Yazd, Meybod, and Ashkezar were found to be nearly 100% efficient. Yazd County gained full efficiency, and the other 2 counties were efficient with less than 10% inefficiency. Other branches were ranked according to their level of efficiency. Five branches had less than 50% efficiency. It can be suggested that low-efficiency branches provide some of their personnel and vehicles to more efficient branches to cover more passengers or reduce aid workers’ fatigue. However, it could be concluded that it is unnecessary to use a fixed number of volunteers at different stations with different numbers of passengers. Also, it is better to plan the allocation of resources according to the number of beneficiaries. Using resources without optimal planning can lead to direct costs, such as food, transportation, maintenance, and indirect costs, such as burnout, fatigue, and stress when responding to disasters such as the COVID-19 pandemic.

Funding statement

This study was supported by grant No. 2468 in University of Social Welfare & Rehabilitation Sciences and partly received funding from the Research Council of Norway, grant No. 312773.

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Figure 0

Table 1. Health system efficiency using the data envelopment analysis method