Investigating the Effectiveness of Government Public Health Systems against COVID-19 by Hybrid MCDM Approaches
Abstract
:1. Introduction
2. Literature Review
2.1. Public Health System Preparedness
2.2. Evaluation Approaches
3. Data
3.1. Data Collection
3.2. Data Preprocessing
4. Comprehensive Evaluation Models
4.1. Assessment of the Performance Based on AHP-Entropy TOPSIS Evaluation Model
4.1.1. Decision-Making Criteria
- (1)
- Responsiveness: The speed of response refers to how quickly the countries’ public health systems respond to a significant public health emergency, such as this outbreak of COVID-19. It is one of the critical evaluation factors for measuring the performance, sustainability, and potential of the public health system of a country. The faster a country responds, the stronger the public health system is. New deaths (per million), new cases (per million), new tests (per thousand), and vaccinated persons (per hundred) are selected as secondary indicators. For example, if the number of new deaths is low, the country responds quickly to COVID-19.
- (2)
- No. of cases: The number of cases refers to the number of people infected in each country during the epidemic. The total cases (per million) and total deaths (per million) are selected as secondary indicators. The lower the number of cases and deaths, the better the country controls the epidemic and the stronger the public health system.
- (3)
- Reserves: The reserves indicate the amount of relevant medical supplies that countries store in their daily production life. It is related to a country’s capacity to produce supplies. It is also an essential measure of the strength of a public health system. According to the definition of the factor, we select hospital beds (per thousand), total tests (per thousand), tests (per case), and total vaccinations (per hundred) as the detailed indicator of the number of material reserves.
- (4)
- Government ability: Government ability refers to the long-term human development indicators, such as extreme poverty and population density. Five indicators are used to characterize the factor: population density, stringency index, median age, extreme poverty, and human development index [63].
4.1.2. AHP-Based Weight Determination
- Step 1:
- Build the comparison matrixFactors and indicators are divided into different layers. The first layer is sorted by the importance subjectively: Reserves ≥ Government ability ≥ Responsiveness ≥ No. of cases. The comparison matrix is obtained:
- Step 2:
- Consistency checkBased on the established comparison matrix, we calculate the largest eigenvalue and the corresponding eigenvector v. In this case, the random inconsistency is 0.9 when the order of comparison matrix [66]. The consistency index and the consistency ratio are determined by the following calculation procedure:and , which is less than 0.1, implying the comparison matrix is consistent [67].
- Step 3:
- Determine the weights of indicatorsThe eigenvector v after normalization is the weight vector corresponding to . The weight of Responsiveness is 0.1982; the weight of No. of cases is 0.0736; the weight of Reserves is 0.4901; the weight of Government ability is 0.2381. Similarly, all the weights of each indicator are determined under different factors (Figure 4).
4.1.3. AHP-Entropy Weight Determination
- Step 1:
- Matrix normalization.
- Step 2:
- Determination of the ratio of each indicator.The ratio of the indicator j in country i is the varying size of the indicator as follows:
- Step 3:
- Entropy weight determinationThe information entropy of the ratio of each indicatorWhen , is defined as 0.
- Step 4:
- Entropy weightsCalculate the weights by the entropy weight method as
- Step 5:
- AHP–Entropy combined weightingTogether with the subjective weight by AHP, the comprehensive AHP–Entropy weight of each indicator j is calculated based on the following equation:
4.1.4. AHP-Entropy TOPSIS Evaluation Modeling
- Step 1:
- Matrix normalizationAfter normalization, the original data matrix X (the data of indicators in 4.3.2) is denoted as matrix Z.
- Step 2:
- Optimal and worst solution calculationThe ideal optimal solution takes the optimal value of the evaluation index in the system, denoted as . On the contrary, the ideal worst solution is defined as .
- Step 3:
- Distance calculationWith the weight of each indicator ⋯ determined by the previous subsection, the ideal optimal solution for the distance of the indicator vector of the country ⋯ and the opposite ideal worst solution are given by
- Step 4:
- Performance score determination. The comprehensive score of the country i performance isis normalized to get the final relative score of the public health system of each country:
4.2. Assessing Sustainability and Potential Based on Data Envelopment Analysis (DEA)
4.2.1. DEA Modeling
- Step 1:
- Decision-making unit establishmentThere are 60 countries as a decision-making unit. Each country has 11 kinds of inputs and 4 kinds of outputs. are denoted as the input indicator j of the country i. is the output j of the country i. represent the input weight vector. represent the output weight vector.
- Step 2:
- DEA efficiency evaluation model (CCR mode) establishmentThe benefit evaluation index of the decision-making unit for country i is denoted as :The idea of the CCR mode linear programming model is to express the input and output of decision-making unit i as a linear combination of other units. We introduce , a very small number, and the slack variable , . The CCR mode linear programming model is:
- Step 3:
- Solution by the hierarchical sequence method. Object 1 of the solution is to find the minimum value of . Object 2 is achieved under the condition that is known.
4.2.2. DEA Output Analysis
4.3. Composite Score Determination
5. Evaluation Results
5.1. Performance Ranking
5.2. Sustainability Score
5.3. Potential of the Public Health System
5.4. Composite Score
6. Discussion
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Factor | Indicator | Symbol | Impact | Description |
---|---|---|---|---|
Responsiveness | NC | N | New confirmed cases of COVID-19 per 1,000,000 people | |
ND | N | New deaths attributed to COVID-19 per 1,000,000 people | ||
PV | P | Total number of people who received at least one vaccine dose per 100 people in the total population | ||
NT | P | New tests for COVID-19 per 1,000 people | ||
No. of cases | TC | N | Total confirmed cases of COVID-19 per 1,000,000 people. Counts can include probable cases, where reported | |
TD | N | Total deaths attributed to COVID-19 per 1,000,000 people. Counts can include probable deaths, where reported | ||
Reserves | TE | P | Tests conducted per new confirmed case of COVID-19, given as a rolling 7-day average | |
TT | P | Total tests for COVID-19 per 1,000 people | ||
HB | P | Hospital beds per 1,000 people | ||
TV | P | Total number of COVID-19 vaccination doses administered per 100 people in the total population | ||
Government abilities | SI | P | Government Response Stringency Index: composite measure based on 9 response indicators including school closures, workplace closures and travel bans | |
HDI | P | A composite index measuring average achievement in three basic dimensions of human development—a long and healthy life, knowledge and a decent standard of living. | ||
MA | N | Median age of the population, UN projection for 2020 | ||
EP | N | Share of the population living in extreme poverty, most recent year available since 2010 | ||
PD | N | Number of people divided by land area, measured in square kilometers, most recent year available |
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Scale of Investment | r | Returns to Scale | Potential |
---|---|---|---|
Small | Increasing | 2 (High) | |
Appropriate | Fixed | 1 (Medium) | |
Huge | Decreasing | 0 (Low) |
Performing | Country |
---|---|
Better | South Korea, Japan, Germany, Australia, China |
Worse | United States, Indonesia, Egypt, South Africa, Brazil |
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Pan, J.; Fan, R.; Zhang, H.; Gao, Y.; Shu, Z.; Chen, Z. Investigating the Effectiveness of Government Public Health Systems against COVID-19 by Hybrid MCDM Approaches. Mathematics 2022, 10, 2678. https://doi.org/10.3390/math10152678
Pan J, Fan R, Zhang H, Gao Y, Shu Z, Chen Z. Investigating the Effectiveness of Government Public Health Systems against COVID-19 by Hybrid MCDM Approaches. Mathematics. 2022; 10(15):2678. https://doi.org/10.3390/math10152678
Chicago/Turabian StylePan, Jiaji, Ruilin Fan, Hanlu Zhang, Yi Gao, Zhiquan Shu, and Zhongxiang Chen. 2022. "Investigating the Effectiveness of Government Public Health Systems against COVID-19 by Hybrid MCDM Approaches" Mathematics 10, no. 15: 2678. https://doi.org/10.3390/math10152678
APA StylePan, J., Fan, R., Zhang, H., Gao, Y., Shu, Z., & Chen, Z. (2022). Investigating the Effectiveness of Government Public Health Systems against COVID-19 by Hybrid MCDM Approaches. Mathematics, 10(15), 2678. https://doi.org/10.3390/math10152678