Anush V. Kini, Harish P.B., M. Anand, Uma S. Ranjan
{"title":"印度COVID-19死亡率危险因素的性别分类分析","authors":"Anush V. Kini, Harish P.B., M. Anand, Uma S. Ranjan","doi":"10.2174/18749445-v16-e230517-2022-210","DOIUrl":null,"url":null,"abstract":"\n \n COVID-19 mortality rates vary widely across regions and sex/gender. Understanding the reasons behind such variation could help in developing suitable management strategies.\n \n \n \n This paper presents a comprehensive analysis of incidence and mortality rates on 2,331,363 cases and 46,239 deaths over a cumulative period of approximately 6.5 months from February to August 2020 across 411 districts of India in the age group 15-49. Together with health data from government surveys, we identify risk and protective factors across regions, socio-economic status, literacy, and sex. To obtain common indicators, we apply both machine learning techniques and statistical tests on different health factors. We also identify positive and negative correlates at multiple population scales by dividing the cohort into sub-cohorts formed from two Indian states that were further segregated by sex.\n \n \n \n We show that males and females differ in their risk factors for mortality. While obesity (lasso regression coefficient: KA=0.5083, TN=0.318) is the highest risk factor for males, anemia (KA=0.3048, TN=0.046) is the highest risk factor for females. Further, anemia (KA=-0.0958, TN=-0.2104) is a protective factor for males, while obesity (KA=-0.0223, TN=-0.3081) is a protective factor for females.\n \n \n \n Districts with a high prevalence of obesity pose a significantly greater risk of severe COVID-19 outcomes in males. On the other hand, in females, the prevalence of anemia in districts is notably associated with a higher risk of severe COVID-19 outcomes. It is important to consider sex-wise heterogeneity in health factors for better management of health resources.\n","PeriodicalId":38960,"journal":{"name":"Open Public Health Journal","volume":"1 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2023-06-23","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Sex-disaggregated Analysis of Risk Factors of COVID-19 Mortality Rates in India\",\"authors\":\"Anush V. Kini, Harish P.B., M. Anand, Uma S. Ranjan\",\"doi\":\"10.2174/18749445-v16-e230517-2022-210\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"\\n \\n COVID-19 mortality rates vary widely across regions and sex/gender. Understanding the reasons behind such variation could help in developing suitable management strategies.\\n \\n \\n \\n This paper presents a comprehensive analysis of incidence and mortality rates on 2,331,363 cases and 46,239 deaths over a cumulative period of approximately 6.5 months from February to August 2020 across 411 districts of India in the age group 15-49. Together with health data from government surveys, we identify risk and protective factors across regions, socio-economic status, literacy, and sex. To obtain common indicators, we apply both machine learning techniques and statistical tests on different health factors. We also identify positive and negative correlates at multiple population scales by dividing the cohort into sub-cohorts formed from two Indian states that were further segregated by sex.\\n \\n \\n \\n We show that males and females differ in their risk factors for mortality. While obesity (lasso regression coefficient: KA=0.5083, TN=0.318) is the highest risk factor for males, anemia (KA=0.3048, TN=0.046) is the highest risk factor for females. Further, anemia (KA=-0.0958, TN=-0.2104) is a protective factor for males, while obesity (KA=-0.0223, TN=-0.3081) is a protective factor for females.\\n \\n \\n \\n Districts with a high prevalence of obesity pose a significantly greater risk of severe COVID-19 outcomes in males. On the other hand, in females, the prevalence of anemia in districts is notably associated with a higher risk of severe COVID-19 outcomes. 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Sex-disaggregated Analysis of Risk Factors of COVID-19 Mortality Rates in India
COVID-19 mortality rates vary widely across regions and sex/gender. Understanding the reasons behind such variation could help in developing suitable management strategies.
This paper presents a comprehensive analysis of incidence and mortality rates on 2,331,363 cases and 46,239 deaths over a cumulative period of approximately 6.5 months from February to August 2020 across 411 districts of India in the age group 15-49. Together with health data from government surveys, we identify risk and protective factors across regions, socio-economic status, literacy, and sex. To obtain common indicators, we apply both machine learning techniques and statistical tests on different health factors. We also identify positive and negative correlates at multiple population scales by dividing the cohort into sub-cohorts formed from two Indian states that were further segregated by sex.
We show that males and females differ in their risk factors for mortality. While obesity (lasso regression coefficient: KA=0.5083, TN=0.318) is the highest risk factor for males, anemia (KA=0.3048, TN=0.046) is the highest risk factor for females. Further, anemia (KA=-0.0958, TN=-0.2104) is a protective factor for males, while obesity (KA=-0.0223, TN=-0.3081) is a protective factor for females.
Districts with a high prevalence of obesity pose a significantly greater risk of severe COVID-19 outcomes in males. On the other hand, in females, the prevalence of anemia in districts is notably associated with a higher risk of severe COVID-19 outcomes. It is important to consider sex-wise heterogeneity in health factors for better management of health resources.
期刊介绍:
The Open Public Health Journal is an Open Access online journal which publishes original research articles, reviews/mini-reviews, short articles and guest edited single topic issues in the field of public health. Topics covered in this interdisciplinary journal include: public health policy and practice; theory and methods; occupational health and education; epidemiology; social medicine; health services research; ethics; environmental health; adolescent health; AIDS care; mental health care. The Open Public Health Journal, a peer reviewed journal, is an important and reliable source of current information on developments in the field. The emphasis will be on publishing quality articles rapidly and freely available worldwide.