| Literature DB >> 35087786 |
Abstract
The cyclicality of public health in the emerging market is underexplored in existing literature. In this study, we used a fixed effect model and provincial data to document how public health varies with the business cycle in China over the period of 2010-2019. The estimated results showed that the business cycle is negatively correlated with the mortality of infectious disease, a proxy variable of public health, thus indicating that public health exhibits a countercyclical pattern in China. Furthermore, we investigated the potential moderating role of public health education and digital economy development in the relationship between business cycle and public health. Our findings suggested that public health education and digital economy development can mitigate the damage of economic conditions on public health in China. Health education helps the public obtain more professional knowledge about diseases and then induces effective preventions. Compared with traditional economic growth, digital economy development can avoid environmental pollution which affects public health. Also, it ensures that state-of-the-art medical services are available for the public through e-health. In addition, digitalization assures that remote working is practicable and reduces close contact during epidemics such as COVID-19. The conclusions stand when subjected to several endogeneity and robustness checks. Therefore, the paper implies that these improvements in public health education and digitalization can help the government in promoting public health.Entities:
Keywords: business cycle; digital economy; health education; moderating effect; public health
Mesh:
Year: 2022 PMID: 35087786 PMCID: PMC8787688 DOI: 10.3389/fpubh.2021.793404
Source DB: PubMed Journal: Front Public Health ISSN: 2296-2565
Definition of variables.
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| Dependent variables | Public health | infectious disease mortality |
| Number of infected per 10,000,000 people | China National Health Statistical Yearbook |
| Independent variables | Business cycle | Real GDP growth rate |
| The real annual growth rate of GDP | |
| Health education | Public health education activity |
| Number of public health education activity/Population | ||
| Health education training |
| Person-time of health education training/Population | |||
| Digital level | China digital economy development index |
| China digital economy development index, released by CCID Consulting Co. | CCID Consulting | |
| Digital Financial Inclusion Index of China |
| The Peking University Digital Financial Inclusion Index of China, calculated by Guo et al. ( |
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| Control variables | Density of medical resource | Medical institutions |
| Number of medical institutions per 1,000 people | China National Health Statistical Yearbook |
| Medical beds |
| Number of medical beds per 1,000 people | |||
| Licensed (assistant) doctor |
| Number of licensed (assistant) doctors per 1,000 people | |||
| Economic structure | Secondary industry ratio |
| The proportion of GDP in the secondary industry to total GDP | ||
| Population characteristics | Aging ratio |
| The proportion of the population aged over 65 to the total population | ||
| Urbanization level | Urbanization rate |
| The proportion of the urban population to the total population |
Descriptive statistics.
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| 300 | 0.2457 | 0.0954 | 0.1131 | 0.1874 | 0.2309 | 0.2754 | 0.6217 |
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| 300 | 0.1044 | 0.0687 | −0.2555 | 0.0740 | 0.1037 | 0.1436 | 0.2866 |
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| 300 | 0.7747 | 1.2087 | 0.0008 | 0.1795 | 0.3981 | 0.9153 | 11.4156 |
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| 300 | 15.8300 | 24.8578 | 0.0717 | 3.6647 | 8.0184 | 17.2659 | 223.8735 |
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| 240 | 0.2921 | 0.1690 | 0.0237 | 0.1720 | 0.2629 | 0.3666 | 0.8109 |
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| 270 | 5.1331 | 0.6457 | 1.9110 | 4.9043 | 5.2467 | 5.6111 | 6.0866 |
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| 300 | 7.0956 | 2.3528 | 2.0400 | 5.4381 | 7.2322 | 8.8891 | 11.3899 |
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| 300 | 5.0351 | 1.1105 | 2.7250 | 4.2250 | 4.9500 | 5.8450 | 7.4300 |
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| 300 | 2.2931 | 0.6221 | 1.2500 | 1.9000 | 2.2550 | 2.5100 | 5.0700 |
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| 300 | 0.4414 | 0.0874 | 0.1620 | 0.3960 | 0.4595 | 0.5030 | 0.5900 |
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| 300 | 0.5709 | 0.1263 | 0.3381 | 0.4865 | 0.5567 | 0.6235 | 0.9415 |
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| 300 | 0.1014 | 0.0218 | 0.0547 | 0.0855 | 0.0985 | 0.1154 | 0.1626 |
N is the sample observation; mean and sd denote the average value and standard derivation of the variable, respectively; min and max denote the minimum and maximum of the variable, respectively; p25, p50, and p75 represent the 25, 50, and 75% percentile of the variable, respectively. idm represents infectious disease mortality, rgdpg represents real GDP growth rate, edu_act represents public health education activity, edu_train represents health education training, dedi represents China digital economy development index, dfiic represents digital financial inclusion index of China, mid represents medical institutions density, beds represents medical beds density, doctors represents licensed (assistant) doctor density, s_ind represents the secondary industry ratio, ur represents urbanization rate, aging represents aging ratio.
Figure 1Business cycle, public health, health education, and digital economy in China during 2010–2019.
Empirical results.
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| 0.272 | 0.391 | 0.614 |
| (3.93) | −4.71 | (5.89) | |
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| 0.0016 | ||
| (0.47) | |||
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| −0.227 | ||
| (−5.32) | |||
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| −0.0212 | ||
| (−0.12) | |||
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| −0.4680 | ||
| (−2.43) | |||
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| −0.0001 | 0.0015 | 0.0100 |
| (−0.01) | (0.10) | (0.51) | |
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| 0.0117 | 0.0086 | 0.0380 |
| (1.17) | (0.82) | (1.29) | |
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| −0.0306 | −0.0298 | −0.0256 |
| (−1.49) | (−1.41) | (−1.19) | |
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| −0.0382 | −0.0060 | −0.251 |
| (−0.84) | (−0.11) | (−5.54) | |
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| 0.0218 | 0.0664 | −0.625 |
| (0.10) | (0.29) | (−1.36) | |
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| 1.577 | 1.594 | 1.265 |
| (2.32) | (2.27) | (1.13) | |
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| 0.0735 | 0.0379 | 0.347 |
| (0.59) | (0.30) | (1.48) | |
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| 300 | 300 | 240 |
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| 0.0740 | 0.110 | 0.0870 |
t statistics in parentheses
p < 0.1,
p < 0.05,
p < 0.01.
idm represents infectious disease mortality, rgdpg represents real GDP growth rate, edu_act represents public health education activity, rgdpg_act is the cross product of rgdpg and edu_act. dedi represents China digital economy development index, rgdpg_dedi is the cross product of rgdpg and dedi, mid represents medical institutions density, beds represents medical beds density, doctors represents licensed (assistant) doctor density, s_ind represents the secondary industry ratio, ur represents urbanization rate, aging represents aging ratio. cons is the constant term, and N is the sample observation.
Results of robustness checks.
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| 0.320 | 0.558 | 1.027 | 0.750 | 3.552 |
| (3.96) | (3.98) | (2.55) | (2.12) | (2.92) | |
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| 0.0008 | −0.0040 | −0.134 | −0.0779 | −0.225 |
| (0.05) | (−0.20) | (−1.60) | (−0.78) | (−1.20) | |
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| 0.0127 | 0.0075 | 0.138 | 0.130 | 0.186 |
| (1.26) | (0.31) | (1.74) | (1.51) | (1.03) | |
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| −0.0342 | −0.0323 | −0.0008 | −0.0911 | −0.0254 |
| (−1.58) | (−1.30) | (−0.01) | (−0.52) | (−0.14) | |
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| −0.0292 | −0.246 | −0.0028 | 0.230 | −0.0995 |
| (−0.61) | (−4.22) | (−0.01) | (0.91) | (−0.31) | |
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| 0.0232 | −0.749 | −1.682 | −1.305 | −1.518 |
| (0.11) | (−1.34) | (−1.52) | (−0.67) | (−0.50) | |
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| 1.577 | 1.080 | −1.899 | −0.376 | 4.828 |
| (2.30) | (0.96) | (−0.51) | (−0.13) | (0.57) | |
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| 0.0002 | ||||
| (0.61) | |||||
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| −0.0042 | ||||
| (−2.21) | |||||
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| 0.0597 | ||||
| (1.31) | |||||
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| −0.0036 | ||||
| (−1.86) | |||||
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| 0.00214 | ||||
| (0.04) | |||||
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| −1.214 | ||||
| (−1.79) | |||||
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| −0.821 | ||||
| (−1.00) | |||||
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| −5.640 | ||||
| (−1.74) | |||||
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| −0.334 | −0.267 | −0.342 | ||
| (−3.98) | (−2.13) | (−2.44) | |||
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| 0.0636 | 0.394 | 1.626 | 1.112 | 1.485 |
| (0.51) | (1.44) | (1.81) | (0.87) | (0.64) | |
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| 300 | 240 | 270 | 270 | 210 |
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| −2.56 | −2.14 | −1.72 | ||
| (0.011) | (0.033) | (0.086) | |||
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| 0.50 | 1.59 | −1.60 | ||
| (0.619) | (0.112) | (0.109) | |||
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| 29.13 | 28.32 | 26.18 | ||
| (0.849) | (0.874) | (0.794) | |||
t statistics in parentheses
p < 0.1,
p < 0.05,
p < 0.01.
To save space, the coefficients of control variables are not listed. idm represents infectious disease mortality, rgdpg represents real GDP growth rate, edu_train represents health education training, rgdpg_train is the cross product of rgdpg and edu_train. dfiic represents digital financial inclusion index of China, rgdpg_dfiic is the cross product of rgdpg and dfiic, edu_act represents public health education activity, rgdpg_act is the cross product of rgdpg and edu_act. dedi represents China digital economy development index, rgdpg_dedi is the cross product of rgdpg and dedi, L.idm represents the first-order lag of idm. cons is the constant term, N is the sample observation. AR(1) and AR(2) mean the test statistics of AR(1) and AR(2) models. Hansen means the result of the Hansen test.