论文标题
意大利地区和省份Covid-19案件死亡率(CFR)的决定因素:对环境,人口和医疗保健因素的分析
The determinants of COVID-19 case fatality rate (CFR) in the Italian regions and provinces: an analysis of environmental, demographic, and healthcare factors
论文作者
论文摘要
意大利政府通过采取快速且越来越严格的措施来遏制疫情,是对Covid-19紧急情况最敏感的敏感性之一。尽管如此,意大利还是遭受了巨大的人力和社会成本,尤其是在伦巴第。本文的目的是双重:i)首先,使用多元OLS回归方法研究意大利20个地区和107个省份案件死亡率(CFR)差异的原因; ii)第二,通过使用病房分层聚集聚类方法来建立具有相似死亡率风险的省份的分类法。我考虑了卫生系统指标,环境污染,气候状况,人口统计学变量以及代表卫生系统饱和的三个临时指数。结果表明,总体医疗保健效率,医师密度和平均温度有助于降低CFR。相反,年龄在70岁及以上的人口,汽车和公司密度,空气污染物的水平(NO2,O3,PM10和PM2.5),相对平均湿度,COVID-19患病率以及卫生系统饱和的所有三个指数均与CFR呈正相关。人口密度,社会垂直整合和高度在统计上不显着。特别是,死亡的风险随着年龄的增长而增加,90岁及以上的风险比80至89岁的年龄高三倍,风险高于70至79岁。此外,集群分析表明,最高的死亡风险集中在该国北部,而最低的风险与南部省份有关。最后,由于患病率和卫生系统饱和指数在解释CFR变异性方面起着最重要的作用,因此后者的重要部分可能是由于意大利卫生系统的巨大压力引起的。
The Italian government has been one of the most responsive to COVID-19 emergency, through the adoption of quick and increasingly stringent measures to contain the outbreak. Despite this, Italy has suffered a huge human and social cost, especially in Lombardy. The aim of this paper is dual: i) first, to investigate the reasons of the case fatality rate (CFR) differences across Italian 20 regions and 107 provinces, using a multivariate OLS regression approach; and ii) second, to build a taxonomy of provinces with similar mortality risk of COVID-19, by using the Ward hierarchical agglomerative clustering method. I considered health system metrics, environmental pollution, climatic conditions, demographic variables, and three ad hoc indexes that represent the health system saturation. The results showed that overall health care efficiency, physician density, and average temperature helped to reduce the CFR. By the contrary, population aged 70 and above, car and firm density, level of air pollutants (NO2, O3, PM10, and PM2.5), relative average humidity, COVID-19 prevalence, and all three indexes of health system saturation were positively associated with the CFR. Population density, social vertical integration, and altitude were not statistically significant. In particular, the risk of dying increases with age, as 90 years old and above had a three-fold greater risk than the 80 to 89 years old and four-fold greater risk than 70 to 79 years old. Moreover, the cluster analysis showed that the highest mortality risk was concentrated in the north of the country, while the lowest risk was associated with southern provinces. Finally, since prevalence and health system saturation indexes played the most important role in explaining the CFR variability, a significant part of the latter may have been caused by the massive stress of the Italian health system.