首页> 外文期刊>Epidemics. >Pseudo-likelihood based logistic regression for estimating COVID-19 infection and case fatality rates by gender, race, and age in California
【24h】

Pseudo-likelihood based logistic regression for estimating COVID-19 infection and case fatality rates by gender, race, and age in California

机译:基于伪可能的逻辑回归,用于估算Covid-19在加利福尼亚州的性别,种族和年龄的性别,种族和年龄的宿命率

获取原文
       

摘要

In emerging epidemics, early estimates of key epidemiological characteristics of the disease are critical for guiding public policy. In particular, identifying high-risk population subgroups aids policymakers and health officials in combating the epidemic. This has been challenging during the coronavirus disease 2019 (COVID-19) pandemic because governmental agencies typically release aggregate COVID-19 data as summary statistics of patient demographics. These data may identify disparities in COVID-19 outcomes between broad population subgroups, but do not provide comparisons between more granular population subgroups defined by combinations of multiple demographics. We introduce a method that helps to overcome the limitations of aggregated summary statistics and yields estimates of COVID-19 infection and case fatality rates — key quantities for guiding public policy related to the control and prevention of COVID-19 — for population subgroups across combinations of demographic characteristics. Our approach uses pseudo-likelihood based logistic regression to combine aggregate COVID-19 case and fatality data with population-level demographic survey data to estimate infection and case fatality rates for population subgroups across combinations of demographic characteristics. We illustrate our method on California COVID-19 data to estimate test-based infection and case fatality rates for population subgroups defined by gender, age, and race/ethnicity. Our analysis indicates that in California, males have higher test-based infection rates and test-based case fatality rates across age and race/ethnicity groups, with the gender gap widening with increasing age. Although elderly infected with COVID-19 are at an elevated risk of mortality, the test-based infection rates do not increase monotonically with age. The workforce population, especially, has a higher test-based infection rate than children, adolescents, and other elderly people in their 60–80. LatinX and African Americans have higher test-based infection rates than other race/ethnicity groups. The subgroups with the highest 5 test-based case fatality rates are all-male groups with race as African American, Asian, Multi-race, LatinX, and White, followed by African American females, indicating that African Americans are an especially vulnerable California subpopulation.
机译:在新兴流行病中,疾病的关键流行病学特征的早期估计对于指导公共政策至关重要。特别是,识别高风险人口亚组艾滋病政策制定者和卫生官员在打击流行病方面。这在2019年冠状病毒疾病(Covid-19)大流行期间一直挑战,因为政府机构通常将总Covid-19数据释放为患者人口统计学的汇总统计数据。这些数据可以识别广泛的人群亚组之间的Covid-19结果中的差异,但不提供由多个人口统计学组合定义的更多粒状人口子组之间的比较。我们介绍了一种有助于克服聚合汇总统计数据的局限性的方法,并产生Covid-19感染的估算和案例死亡率 - 用于指导与控制和预防Covid-19相关的公共政策的关键量 - 用于跨组合的人口亚组人口特征。我们的方法使用基于伪可能的逻辑回归将聚合Covid-19案例和死亡数据与人口级别的人口统计调查数据相结合,以估算人口特征组合的人口亚组的感染和病例死亡率。我们说明了我们在加州Covid-19数据的方法,以估计基于测试的感染和性别,年龄和种族/种族定义的人口亚组的病例率。我们的分析表明,在加利福尼亚州,男性在年龄和种族/种族群体中具有更高的基于测试的感染率和基于测试的案例致命率,随着年龄的增长而扩大性别差距。虽然患有Covid-19的老年人感染了死亡率的升高,但基于测试的感染率不会随着年龄的年龄单调而单调地增加。劳动力人口,特别是较高的基于测试的感染率,而不是孩子,青少年和其他60-80中的老年人。拉丁裔和非洲裔美国人的基于测试的感染率高于其他种族/种族群体。具有最高的基于测试的案例死亡率的亚组是与非洲裔美国,亚洲人,多场比赛,拉丁克斯和白色的竞争的全男性团体,其次是非洲裔美国女性,表明非洲裔美国人是一个特别脆弱的加州亚贫民。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号