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气候变量对孟加拉国新冠肺炎死亡率的影响。

Effects of climate variables on the COVID-19 mortality in Bangladesh.

作者信息

Karim Rezaul, Akter Nazmin

机构信息

Department of Statistics, Jahangirnagar University, Savar Union, Bangladesh.

出版信息

Theor Appl Climatol. 2022;150(3-4):1463-1475. doi: 10.1007/s00704-022-04211-4. Epub 2022 Oct 18.

Abstract

Infectious diseases such as severe acute respiratory syndrome (SARS) and influenza are influenced by weather conditions. Climate variables, for example, temperature and humidity, are two important factors in the severity of COVID-19's impact on the human respiratory system. This study aims to examine the effects of these climate variables on COVID-19 mortality. The data are collected from March 08, 2020, to April 30, 2022. The parametric regression under GAM and semiparametric regression under GAMLSS frameworks are used to analyze the daily number of death due to COVID-19. Our findings revealed that temperature and relative humidity are commencing to daily deaths due to COVID-19. A positive association with COVID-19 daily death counts was observed for temperature range and a positive association for humidity. In addition, one-unit increase in daily temperature range was only associated with a 1.08% (95% CI: 1.06%, 1.10%), and humidity range was only associated with a 1.03% (95% CI: 1.02%, 1.03%) decrease in COVID-19 deaths. A flexible regression model within the framework of Generalized Additive Models for Location Scale and Shape is used to analyze the data by adjusting the time effect. We used two adaptable predictor models, such as (i) the Fractional polynomial model and (ii) the B-spline smoothing model, to estimate the systematic component of the GAMLSS model. According to both models, high humidity and temperature significantly (and drastically) lessened the severity of COVID-19 death. The findings on the epidemiological trends of the COVID-19 pandemic and weather changes may interest policymakers and health officials.

摘要

严重急性呼吸综合征(SARS)和流感等传染病会受到天气状况的影响。气候变量,例如温度和湿度,是新冠病毒对人类呼吸系统影响严重程度的两个重要因素。本研究旨在考察这些气候变量对新冠病毒死亡率的影响。数据收集于2020年3月8日至2022年4月30日。采用广义相加模型(GAM)框架下的参数回归和广义相加位置尺度形状模型(GAMLSS)框架下的半参数回归来分析新冠病毒导致的每日死亡人数。我们的研究结果显示,温度和相对湿度与新冠病毒导致的每日死亡人数有关。观察到温度范围与新冠病毒每日死亡人数呈正相关,湿度也呈正相关。此外,每日温度范围每增加一个单位,仅与新冠病毒死亡人数下降1.08%(95%置信区间:1.06%,1.10%)相关,湿度范围每增加一个单位,仅与新冠病毒死亡人数下降1.03%(95%置信区间:1.02%,1.03%)相关。在广义相加位置尺度形状模型框架内使用灵活回归模型,通过调整时间效应来分析数据。我们使用了两种适应性预测模型,例如(i)分数多项式模型和(ii)B样条平滑模型,来估计GAMLSS模型的系统成分。根据这两种模型,高湿度和温度显著(且大幅)降低了新冠病毒死亡的严重程度。新冠病毒大流行的流行病学趋势和天气变化的研究结果可能会引起政策制定者和卫生官员的兴趣。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/14b1/9579573/22fe5e10ed7e/704_2022_4211_Fig1_HTML.jpg

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