Chen Daipeng, Sun Xiaodan, Cheke Robert A
School of Mathematics and Statistics, Xi'an Jiaotong University, Xi'an 710049, China.
Mathematical Institute, Leiden University, 2333 CA Leiden, The Netherlands.
Entropy (Basel). 2023 May 17;25(5):807. doi: 10.3390/e25050807.
The incidence of respiratory infections in the population is related to many factors, among which environmental factors such as air quality, temperature, and humidity have attracted much attention. In particular, air pollution has caused widespread discomfort and concern in developing countries. Although the correlation between respiratory infections and air pollution is well known, establishing causality between them remains elusive. In this study, by conducting theoretical analysis, we updated the procedure of performing the extended convergent cross-mapping (CCM, a method of causal inference) to infer the causality between periodic variables. Consistently, we validated this new procedure on the synthetic data generated by a mathematical model. For real data in Shaanxi province of China in the period of 1 January 2010 to 15 November 2016, we first confirmed that the refined method is applicable by investigating the periodicity of influenza-like illness cases, an air quality index, temperature, and humidity through wavelet analysis. We next illustrated that air quality (quantified by AQI), temperature, and humidity affect the daily influenza-like illness cases, and, in particular, the respiratory infection cases increased progressively with increased AQI with a time delay of 11 days.
人群中呼吸道感染的发病率与许多因素有关,其中空气质量、温度和湿度等环境因素备受关注。特别是,空气污染在发展中国家已引起广泛不适和担忧。尽管呼吸道感染与空气污染之间的相关性众所周知,但确定它们之间的因果关系仍然难以捉摸。在本研究中,通过进行理论分析,我们更新了执行扩展收敛交叉映射(CCM,一种因果推断方法)以推断周期性变量之间因果关系的程序。一致地,我们在由数学模型生成的合成数据上验证了这一新程序。对于中国陕西省2010年1月1日至2016年11月15日期间的真实数据,我们首先通过小波分析研究流感样病例、空气质量指数、温度和湿度的周期性,确认了改进方法的适用性。接下来我们表明空气质量(由AQI量化)、温度和湿度会影响每日流感样病例,特别是,呼吸道感染病例随着AQI的增加而逐渐增加,且存在11天的时间延迟。