Country-based modelling of COVID-19 case fatality rate: A multiple regression analysis.

Soodeh Sagheb, Ali Gholamrezanezhad, Elizabeth Pavlovic, Mohsen Karami, Mina Fakhrzadegan
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Abstract

Background: The spread of the severe acute respiratory syndrome coronavirus 2 outbreak worldwide has caused concern regarding the mortality rate caused by the infection. The determinants of mortality on a global scale cannot be fully understood due to lack of information.

Aim: To identify key factors that may explain the variability in case lethality across countries.

Methods: We identified 21 Potential risk factors for coronavirus disease 2019 (COVID-19) case fatality rate for all the countries with available data. We examined univariate relationships of each variable with case fatality rate (CFR), and all independent variables to identify candidate variables for our final multiple model. Multiple regression analysis technique was used to assess the strength of relationship.

Results: The mean of COVID-19 mortality was 1.52 ± 1.72%. There was a statistically significant inverse correlation between health expenditure, and number of computed tomography scanners per 1 million with CFR, and significant direct correlation was found between literacy, and air pollution with CFR. This final model can predict approximately 97% of the changes in CFR.

Conclusion: The current study recommends some new predictors explaining affect mortality rate. Thus, it could help decision-makers develop health policies to fight COVID-19.

基于国家的 COVID-19 病例死亡率模型:多元回归分析。
背景:严重急性呼吸系统综合征冠状病毒 2 在全球范围内的传播引起了人们对感染死亡率的关注。目的:确定可能解释各国病例致死率差异的关键因素:方法:我们为所有提供数据的国家确定了 21 个冠状病毒病 2019(COVID-19)病例致死率的潜在风险因素。我们研究了每个变量与病死率(CFR)的单变量关系以及所有自变量,以确定最终多重模型的候选变量。我们使用多元回归分析技术来评估两者关系的强度:COVID-19 死亡率的平均值为 1.52 ± 1.72%。健康支出和每 100 万台计算机断层扫描仪的数量与 CFR 之间存在统计学意义上的显著反相关性,识字率和空气污染与 CFR 之间存在显著的直接相关性。这一最终模型可以预测约 97% 的 CFR 变化:结论:本研究提出了一些新的预测指标,可以解释对死亡率的影响。结论:本研究提出了一些解释影响死亡率的新预测因子,因此有助于决策者制定抗击 COVID-19 的卫生政策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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