Department of Internal Medicine, A.O.R.N. "Antonio Cardarelli Hospital", Naples, Italy.
Department of Experimental Medicine, University of Campania "Luigi Vanvitelli", Naples, Italy.
J Res Health Sci. 2021 Apr 12;21(2):e00518. doi: 10.34172/jrhs.2021.46.
This study aimed at assessing how population density (PD), aging index (AI), use of public transport (URPT), and PM10 concentration (PI) modulated the trajectory of the main COVID-19 pandemic outcomes in Italy, also in the recrudescence phase of the epidemic.
Ecological study.
For each region, we recovered data about cases, deaths, and case fatality rate (CFR) recorded since both the beginning of the epidemic and September 1, 2020. Data about total hospitalizations were included as well.
PD correlated with, and was the best predictor of, total and partial cases, total and partial deaths, and total hospitalizations. Moreover, URPT correlated with, and was the best predictor of, total CFR. Besides, PI correlated significantly with total and partial cases, total and partial deaths, and total hospitalizations.
PD explains COVID-19 morbidity, mortality, and severity while URPT is the best predictor of disease lethality. These findings should be interpreted with caution due to the ecological fallacy.
本研究旨在评估人口密度(PD)、老龄化指数(AI)、公共交通使用率(URPT)和 PM10 浓度(PI)如何调节意大利主要 COVID-19 大流行结果的轨迹,也包括在疫情复发阶段。
生态研究。
对于每个地区,我们都恢复了自疫情开始以来和 2020 年 9 月 1 日记录的病例、死亡和病死率(CFR)的数据。还包括了总住院人数的数据。
PD 与总病例和部分病例、总死亡和部分死亡以及总住院人数相关,是其最佳预测因素。此外,URPT 与总 CFR 相关,是其最佳预测因素。此外,PI 与总病例和部分病例、总死亡和部分死亡以及总住院人数显著相关。
PD 解释了 COVID-19 的发病率、死亡率和严重程度,而 URPT 是疾病致死率的最佳预测因素。由于存在生态谬误,这些发现的解释应谨慎进行。