Impacts of COVID-19 on Nutritional Intake in Rural China: Panel Data Evidence
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Design
2.2. Data Collection
2.3. Outcome Variables
2.4. Control Variables
2.4.1. COVID-19
2.4.2. Weighted Price of Nutrients
2.4.3. Other Control Variables
Variable | Definition | Unit |
---|---|---|
COVID | Cumulative cases in the county by the end of 2020 | Hundred cases |
Carbohydrate | Per capita carbohydrate intake | g/day |
Fat | Per capita fat intake | g/day |
Protein | Per capita protein intake | g/day |
Energy | Per capita dietary energy intake | kcal/day |
Price_ch | Weighted price of carbohydrates | CNY/kg |
Price_fat | Weighted price of fat | CNY/kg |
Price_pt | Weighted price of protein | CNY/kg |
Price_energy | Weighted price of dietary energy | CNY/1000 kcal |
Inc | Per capita annual income | 1000 CNY |
Exp | Per capita annual expenditure | 1000 CNY |
Family size | Number of family members | / |
Non-farm work | Number of days spent performing non-farm work by household laborers | days |
Heavy work | Presence of heavy workers in the industry, construction, and mining | Yes = 1, No = 0 |
Sport | Existence of sports facilities in villages | Yes = 1, No = 0 |
Retail | Total retail sales of consumer goods in counties | 100 million CNY |
Internet | Whether households had access to the Internet | Yes = 1, No = 0 |
Year2020 | =1 (year = 2020); =0 (year = 2019) | / |
2.5. Data Processing and Cleaning
2.6. Statistical Analysis
Variable | Full Sample | Pre-COVID-19 (2019) | Post-COVID-19 (2020) | Diff. in Means (2020–2019) | |||
---|---|---|---|---|---|---|---|
Mean | SD | Mean | SD | Mean | SD | ||
COVID | 0.42 | 0.97 | 0.00 | 0.00 | 0.85 | 1.23 | 0.85 *** |
Carbohydrate | 250.17 | 138.82 | 252.88 | 140.21 | 247.45 | 137.39 | −5.43 |
Fat | 97.72 | 45.31 | 96.72 | 44.47 | 98.73 | 46.13 | 2.01 |
Protein | 48.65 | 22.91 | 48.56 | 22.58 | 48.73 | 23.24 | 0.17 |
Dietary_Energy | 2058.25 | 908.62 | 2059.43 | 901.08 | 2057.08 | 916.28 | −2.34 |
Price_ch | 6.26 | 11.42 | 6.06 | 10.88 | 6.47 | 11.94 | 0.41 |
Price_fat | 10.83 | 8.54 | 10.59 | 7.85 | 11.07 | 9.17 | 0.48 ** |
Price_pt | 18.59 | 7.91 | 18.10 | 7.19 | 19.08 | 8.56 | 0.98 *** |
Price_energy | 0.49 | 0.22 | 0.48 | 0.21 | 0.51 | 0.23 | 0.03 *** |
Inc | 17.96 | 19.15 | 17.99 | 18.76 | 17.93 | 19.53 | −0.06 |
Exp | 36.38 | 17.64 | 35.86 | 17.35 | 36.90 | 17.92 | 1.04 ** |
Family size | 3.94 | 1.59 | 3.93 | 1.60 | 3.95 | 1.59 | 0.02 |
Non-farm work | 105.07 | 102.26 | 104.82 | 101.53 | 105.32 | 103.01 | 0.50 |
Heavy work | 0.30 | 0.46 | 0.30 | 0.46 | 0.31 | 0.46 | 0.01 |
Sport | 0.53 | 0.50 | 0.53 | 0.50 | 0.53 | 0.50 | 0.00 |
Retail | 100.64 | 114.35 | 104.35 | 117.82 | 96.94 | 110.66 | −7.41 ** |
Internet | 0.67 | 0.47 | 0.62 | 0.49 | 0.72 | 0.45 | 0.10 *** |
Observations | 5262 | 2631 | 2631 |
3. Results
3.1. COVID-19 Impact on Dietary Energy Intake
Variables | FE Model 1 (1) | FE Model 2 (2) | FE Model 3 (3) | FE Model 4 (4) |
---|---|---|---|---|
COVID | −0.0130 *** | −0.0130 *** | −0.0130 *** | −0.0130 *** |
(0.0036) | (0.0036) | (0.0036) | (0.0036) | |
lnPrice_energy | −0.48 *** | −0.48 *** | −0.48 *** | −0.48 *** |
(0.02) | (0.06) | (0.06) | (0.06) | |
lnExp | 2.40 *** | 2.40 *** | 2.40 *** | 2.40 *** |
(0.57) | (0.83) | (0.83) | (0.83) | |
(lnExp)2 | −0.11 *** | −0.11 *** | −0.11 *** | −0.11 *** |
(0.03) | (0.04) | (0.04) | (0.04) | |
Family size | −0.04 *** | −0.04 ** | −0.04 ** | −0.04 ** |
(0.01) | (0.02) | (0.02) | (0.02) | |
Non-farm work | −0.00 | −0.00 | −0.00 | −0.00 |
(0.00) | (0.00) | (0.00) | (0.00) | |
Heavy work | −0.01 | −0.01 | −0.01 | −0.01 |
(0.01) | (0.02) | (0.02) | (0.02) | |
Sport | 0.04 ** | 0.04 | 0.04 | 0.04 |
(0.01) | (0.02) | (0.02) | (0.02) | |
lnRetail | 0.05 * | 0.05 | 0.05 | 0.05 |
(0.03) | (0.05) | (0.05) | (0.05) | |
Internet | −0.01 | −0.01 | −0.01 | −0.01 |
(0.01) | (0.02) | (0.02) | (0.02) | |
Constant term | −6.30 ** | −6.30 | −6.30 | −6.30 |
(2.96) | (4.26) | (4.27) | (4.27) | |
Year FE | YES | YES | YES | YES |
Household FE | YES | YES | YES | YES |
County FE | NO | NO | YES | YES |
Province FE | NO | NO | NO | YES |
Cluster robust standard errors | None | Village | Village | Village |
Observations | 5262 | 5262 | 5262 | 5262 |
3.2. COVID-19 Impact on Carbohydrate, Fat, and Protein Intakes
Variables | FE Model 1 (1) | FE Model 2 (2) | FE Model 3 (3) | FE Model 4 (4) |
---|---|---|---|---|
COVID | −0.0142 *** | −0.0142 *** | −0.0142 *** | −0.0142 *** |
(0.0038) | (0.0035) | (0.0035) | (0.0035) | |
lnPrice_ch | −0.87 *** | −0.87 *** | −0.87 *** | −0.87 *** |
(0.02) | (0.05) | (0.05) | (0.05) | |
lnPrice_fat | 0.32 *** | 0.32 *** | 0.32 *** | 0.32 *** |
(0.02) | (0.06) | (0.06) | (0.06) | |
lnPrice_pt | 0.16 *** | 0.16 * | 0.16 * | 0.16 * |
(0.04) | (0.09) | (0.09) | (0.09) | |
lnExp | 2.53 *** | 2.53 *** | 2.53 *** | 2.53 *** |
(0.60) | (0.92) | (0.92) | (0.92) | |
(lnExp)2 | −0.11 *** | −0.11 ** | −0.11 ** | −0.11 ** |
(0.03) | (0.04) | (0.04) | (0.04) | |
Family size | −0.04 *** | −0.04 ** | −0.04 ** | −0.04 ** |
(0.01) | (0.02) | (0.02) | (0.02) | |
Non-farm work | −0.00 | −0.00 | −0.00 | −0.00 |
(0.00) | (0.00) | (0.00) | (0.00) | |
Heavy work | −0.01 | −0.01 | −0.01 | −0.01 |
(0.01) | (0.02) | (0.02) | (0.02) | |
Sport | 0.04 *** | 0.04 * | 0.04 * | 0.04 * |
(0.02) | (0.02) | (0.02) | (0.02) | |
lnRetail | 0.00 | 0.00 | 0.00 | 0.00 |
(0.03) | (0.05) | (0.05) | (0.05) | |
Internet | −0.02 | −0.02 | −0.02 | −0.02 |
(0.01) | (0.02) | (0.02) | (0.02) | |
Constant term | −8.77 *** | −8.77 * | −8.77 * | −8.77 * |
(3.08) | (4.73) | (4.74) | (4.74) | |
Year FE | YES | YES | YES | YES |
Household FE | YES | YES | YES | YES |
County FE | NO | NO | YES | YES |
Province FE | NO | NO | NO | YES |
Cluster robust standard errors | None | Village | Village | Village |
Observations | 5262 | 5262 | 5262 | 5262 |
Variables | FE Model 1 (1) | FE Model 2 (2) | FE Model 3 (3) | FE Model 4 (4) |
---|---|---|---|---|
COVID | −0.0165 *** | −0.0165 *** | −0.0165 *** | −0.0165 *** |
(0.0036) | (0.0036) | (0.0037) | (0.0037) | |
lnPrice_ch | 0.09 *** | 0.09 * | 0.09 * | 0.09 * |
(0.02) | (0.05) | (0.05) | (0.05) | |
lnPrice_fat | −0.76 *** | −0.76 *** | −0.76 *** | −0.76 *** |
(0.02) | (0.06) | (0.06) | (0.06) | |
lnPrice_pt | 0.22 *** | 0.22 ** | 0.22 ** | 0.22 ** |
(0.03) | (0.09) | (0.09) | (0.09) | |
lnExp | 2.39 *** | 2.39 *** | 2.39 *** | 2.39 *** |
(0.57) | (0.85) | (0.85) | (0.85) | |
(lnExp)2 | −0.11 *** | −0.11 ** | −0.11 ** | −0.11 ** |
(0.03) | (0.04) | (0.04) | (0.04) | |
Family size | −0.04 *** | −0.04 ** | −0.04 ** | −0.04 ** |
(0.01) | (0.02) | (0.02) | (0.02) | |
Non-farm work | −0.00 | −0.00 | −0.00 | −0.00 |
(0.00) | (0.00) | (0.00) | (0.00) | |
Heavy work | −0.00 | −0.00 | −0.00 | −0.00 |
(0.01) | (0.02) | (0.02) | (0.02) | |
Sport | 0.04 *** | 0.04 * | 0.04 * | 0.04 * |
(0.01) | (0.02) | (0.02) | (0.02) | |
lnRetail | 0.02 | 0.02 | 0.02 | 0.02 |
(0.03) | (0.05) | (0.05) | (0.05) | |
Internet | −0.00 | −0.00 | −0.00 | −0.00 |
(0.01) | (0.02) | (0.02) | (0.02) | |
Constant term | −7.87 *** | −7.87 * | −7.87 * | −7.87 * |
(2.95) | (4.37) | (4.38) | (4.38) | |
Year FE | YES | YES | YES | YES |
Household FE | YES | YES | YES | YES |
County FE | NO | NO | YES | YES |
Province FE | NO | NO | NO | YES |
Cluster robust standard errors | None | Village | Village | Village |
Observations | 5262 | 5262 | 5262 | 5262 |
Variables | FE Model 1 (1) | FE Model 2 (2) | FE Model 3 (3) | FE Model 4 (4) |
---|---|---|---|---|
COVID | −0.0115 *** | −0.0115 *** | −0.0115 *** | −0.0115 *** |
(0.0036) | (0.0037) | (0.0037) | (0.0037) | |
lnPrice_ch | 0.05 ** | 0.05 | 0.05 | 0.05 |
(0.02) | (0.05) | (0.05) | (0.05) | |
lnPrice_fat | 0.31 *** | 0.31 *** | 0.31 *** | 0.31 *** |
(0.02) | (0.06) | (0.06) | (0.06) | |
lnPrice_pt | −0.69 *** | −0.69 *** | −0.69 *** | −0.69 *** |
(0.04) | (0.08) | (0.08) | (0.08) | |
lnExp | 2.35 *** | 2.35 ** | 2.35 ** | 2.35 ** |
(0.58) | (0.93) | (0.93) | (0.93) | |
(lnExp)2 | −0.11 *** | −0.11 ** | −0.11 ** | −0.11 ** |
(0.03) | (0.05) | (0.05) | (0.05) | |
Family size | −0.04 *** | −0.04 ** | −0.04 ** | −0.04 ** |
(0.01) | (0.02) | (0.02) | (0.02) | |
Non-farm work | −0.00 | −0.00 | −0.00 | −0.00 |
(0.00) | (0.00) | (0.00) | (0.00) | |
Heavy work | −0.00 | −0.00 | −0.00 | −0.00 |
(0.01) | (0.02) | (0.02) | (0.02) | |
Sport | 0.02 | 0.02 | 0.02 | 0.02 |
(0.01) | (0.03) | (0.03) | (0.03) | |
lnRetail | 0.02 | 0.02 | 0.02 | 0.02 |
(0.03) | (0.05) | (0.05) | (0.05) | |
Internet | 0.00 | 0.00 | 0.00 | 0.00 |
(0.01) | (0.02) | (0.02) | (0.02) | |
Constant term | −7.98 *** | −7.98 * | −7.98 * | −7.98 * |
(2.97) | (4.76) | (4.77) | (4.77) | |
Year FE | YES | YES | YES | YES |
Household FE | YES | YES | YES | YES |
County FE | NO | NO | YES | YES |
Province FE | NO | NO | NO | YES |
Cluster robust standard errors | None | Village | Village | Village |
Observations | 5262 | 5262 | 5262 | 5262 |
3.3. Robustness Test
3.4. Heterogeneity Effect across Income Strata
Variables | Low Income | Middle-Low Income | Middle-High Income | High Income |
---|---|---|---|---|
lnDietary_Energy | −0.0258 ** | −0.0110 | −0.0011 | −0.0096 * |
(0.0106) | (0.0093) | (0.0069) | (0.0054) | |
lnCarbohydrate | −0.0218 ** | −0.0092 | −0.0009 | −0.0108 * |
(0.0106) | (0.0097) | (0.0067) | (0.0056) | |
lnFat | −0.0292 ** | −0.0118 | −0.0007 | −0.0124 ** |
(0.0122) | (0.0107) | (0.0069) | (0.0052) | |
lnProtein | −0.0228 ** | −0.0036 | −0.0044 | −0.0068 |
(0.0115) | (0.0100) | (0.0076) | (0.0051) | |
Observations | 976 | 910 | 912 | 1036 |
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Dependent Variables | lnEnergy | lnCarbohydrate | lnFat | lnProtein |
---|---|---|---|---|
COVID | −0.0130 *** | −0.0142 *** | −0.0165 *** | −0.0115 *** |
(0.0036) | (0.0038) | (0.0036) | (0.0036) | |
Year2020 | 0.03 *** | 0.03 *** | 0.04 *** | 0.02 *** |
(0.01) | (0.01) | (0.01) | (0.01) | |
lnPrice_energy | −0.48 *** | |||
(0.02) | ||||
lnPrice_ch | −0.87 *** | 0.09 *** | 0.05 ** | |
(0.02) | (0.02) | (0.02) | ||
lnPrice_fat | 0.32 *** | −0.76 *** | 0.31 *** | |
(0.02) | (0.02) | (0.02) | ||
lnPrice_pt | 0.16 *** | 0.22 *** | −0.69 *** | |
(0.04) | (0.03) | (0.04) | ||
lnExp | 2.40 *** | 2.53 *** | 2.39 *** | 2.35 *** |
(0.57) | (0.60) | (0.57) | (0.58) | |
(lnExp)2 | −0.11 *** | −0.11 *** | −0.11 *** | −0.11 *** |
(0.03) | (0.03) | (0.03) | (0.03) | |
Family size | −0.04 *** | −0.04 *** | −0.04 *** | −0.04 *** |
(0.01) | (0.01) | (0.01) | (0.01) | |
Non-farm work | −0.00 | −0.00 | −0.00 | −0.00 |
(0.00) | (0.00) | (0.00) | (0.00) | |
Heavy work | −0.01 | −0.01 | −0.00 | −0.00 |
(0.01) | (0.01) | (0.01) | (0.01) | |
Sport | 0.04 ** | 0.04 *** | 0.04 *** | 0.02 |
(0.01) | (0.02) | (0.01) | (0.01) | |
lnRetail | 0.05 * | 0.00 | 0.02 | 0.02 |
(0.03) | (0.03) | (0.03) | (0.03) | |
Internet | −0.01 | −0.02 | −0.00 | 0.00 |
(0.01) | (0.01) | (0.01) | (0.01) | |
Constant | −6.32 ** | −8.78 *** | −7.89 *** | −7.99 *** |
(2.96) | (3.08) | (2.95) | (2.97) | |
Household FE | Yes | Yes | Yes | Yes |
Observations | 5262 | 5262 | 5262 | 5262 |
Dependent Variables | lnEnergy | lnCarbohydrate | lnFat | lnProtein |
---|---|---|---|---|
COVID | −0.0281 *** | −0.0296 *** | −0.0309 *** | −0.0239 *** |
(0.0096) | (0.0104) | (0.0097) | (0.0086) | |
Year2020 | 0.07 *** | 0.07 *** | 0.08 *** | 0.05 *** |
(0.02) | (0.02) | (0.02) | (0.02) | |
lnPrice_energy | −0.50 *** | |||
(0.05) | ||||
lnPrice_ch | −0.78 *** | 0.17 *** | 0.12 ** | |
(0.06) | (0.06) | (0.05) | ||
lnPrice_fat | 0.30 *** | −0.78 *** | 0.29 *** | |
(0.06) | (0.05) | (0.05) | ||
lnPrice_pt | 0.01 | 0.09 | −0.80 *** | |
(0.10) | (0.10) | (0.09) | ||
lnInc | 0.56 *** | 0.62 *** | 0.58 *** | 0.49 *** |
(0.18) | (0.20) | (0.19) | (0.16) | |
Family size | 0.07 * | 0.08 * | 0.07 * | 0.06 |
(0.04) | (0.04) | (0.04) | (0.04) | |
Non-farm work | −0.00 *** | −0.00 *** | −0.00 *** | −0.00 *** |
(0.00) | (0.00) | (0.00) | (0.00) | |
Heavy work | −0.21 *** | −0.23 *** | −0.21 *** | −0.18 *** |
(0.07) | (0.08) | (0.08) | (0.07) | |
Sport | −0.05 | −0.05 | −0.05 | −0.05 |
(0.04) | (0.05) | (0.05) | (0.04) | |
lnRetail | −0.02 | −0.05 | −0.03 | −0.03 |
(0.07) | (0.07) | (0.07) | (0.06) | |
Internet | −0.07 ** | −0.08 ** | −0.06 * | −0.05 * |
(0.03) | (0.04) | (0.04) | (0.03) | |
Household FE | Yes | Yes | Yes | Yes |
Cragg-Donald Wald F Statistics | 12.02 | 11.88 | 11.88 | 11.88 |
Observations | 5262 | 5262 | 5262 | 5262 |
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Han, X.; Guo, Y.; Xue, P.; Wang, X.; Zhu, W. Impacts of COVID-19 on Nutritional Intake in Rural China: Panel Data Evidence. Nutrients 2022, 14, 2704. https://doi.org/10.3390/nu14132704
Han X, Guo Y, Xue P, Wang X, Zhu W. Impacts of COVID-19 on Nutritional Intake in Rural China: Panel Data Evidence. Nutrients. 2022; 14(13):2704. https://doi.org/10.3390/nu14132704
Chicago/Turabian StyleHan, Xinru, Yufei Guo, Ping Xue, Xiudong Wang, and Wenbo Zhu. 2022. "Impacts of COVID-19 on Nutritional Intake in Rural China: Panel Data Evidence" Nutrients 14, no. 13: 2704. https://doi.org/10.3390/nu14132704
APA StyleHan, X., Guo, Y., Xue, P., Wang, X., & Zhu, W. (2022). Impacts of COVID-19 on Nutritional Intake in Rural China: Panel Data Evidence. Nutrients, 14(13), 2704. https://doi.org/10.3390/nu14132704