The COVID-19 pandemic considerably affects public health systems around the world. The lack of knowledge about the virus, the extension of this phenomenon, and the speed of the evolution of the infection are all factors that highlight the necessity of employing new approaches to study these events. Artificial intelligence techniques may be useful in analyzing data related to areas affected by the virus. The aim of this work is to investigate any possible relationships between air quality and confirmed cases of COVID-19 in Italian districts. Specifically, we report an analysis of the correlation between daily COVID-19 cases and environmental factors, such as temperature, relative humidity, and atmospheric pollutants. Our analysis confirms a significant association of some environmental parameters with the spread of the virus. This suggests that machine learning models trained on the environmental parameters to predict the number of future infected cases may be accurate. Predictive models may be useful for helping institutions in making decisions for protecting the population and contrasting the pandemic.
翻译:COVID-19大流行对全世界公共卫生系统影响很大,缺乏对病毒的了解、这种现象的蔓延以及感染的演变速度等因素都突出表明有必要采用新的方法来研究这些事件。人工情报技术可能有助于分析与受病毒影响的地区有关的数据。这项工作的目的是调查意大利各地区空气质量与已证实的COVID-19病例之间可能存在的关系。具体地说,我们报告了对COVID-19每日病例与环境因素(如温度、相对湿度和大气污染物)之间相互关系的分析。我们的分析证实,一些环境参数与病毒的传播有很大的联系。这表明,为预测未来感染病例数量而接受环境参数培训的机器学习模型可能是准确的。预测模型可能有助于帮助各机构作出保护人口和对比流行病的决策。