Department of Economics, MS 021, Brandeis University, Waltham, MA 02453, USA.
Econ Hum Biol. 2021 May;41:100990. doi: 10.1016/j.ehb.2021.100990. Epub 2021 Feb 17.
This paper studies BMI as a correlate of the early spatial distribution and intensity of Covid-19 across the districts of India and finds that conditional on a range of individual, household and regional characteristics, adult BMI significantly predicts the likelihood that the district is a hotspot, the natural log of the confirmed number of cases, the case fatality rate, and the propensity that the district is a red zone. Controlling for air-pollution, rainfall, temperature, demographic factors that measure population density, the proportion of the elderly, and health infrastructure including per capita health spending and the proportion of respiratory cases, does not diminish the predictive power of BMI in influencing the spatial incidence and spread of the virus. The association between adult BMI and measures of spatial outcomes is especially pronounced among educated populations in urban settings, and impervious to conditioning on differences in testing rates across states. We find that among women, BMI proxies for a range of comorbidities (hemoglobin, high blood pressure and high glucose levels) that affects the severity of the virus while among men, these health indicators are also important, as is exposure to risk of contracting the virus as measured by work propensities. We conduct sensitivity checks and control for differences that may arise due to variations in timing of onset. Our results provide a readily available health marker that may be used to identify and protect especially at-risk populations in developing countries like India.
本文研究了 BMI 与印度各地区 COVID-19 早期空间分布和强度的相关性,发现成人 BMI 在一定程度上可以预测该地区是否为热点地区、确诊病例的自然对数、病死率以及该地区是否为红色区域的可能性。在控制空气污染、降雨量、温度、人口密度、老年人口比例以及包括人均卫生支出和呼吸道病例比例在内的卫生基础设施等因素后,BMI 对病毒空间传播的影响仍然具有预测能力。在城市环境中,受教育程度较高的人群中,BMI 与空间结果的关联更为显著,不受各州检测率差异的影响。我们发现,在女性中,BMI 可以反映出一系列影响病毒严重程度的合并症(血红蛋白、高血压和高血糖水平),而在男性中,这些健康指标也很重要,同时还包括工作倾向等感染病毒的风险因素。我们进行了敏感性检查,并控制了由于发病时间的差异可能导致的差异。我们的研究结果提供了一种现成的健康指标,可以用来识别和保护印度等发展中国家的高危人群。