Imai Chisato, Hashizume Masahiro
Department of Pediatric Infectious Diseases, Institute of Tropical Medicine, Nagasaki University , 1-12-4 Sakamoto, Nagasaki, Japan 852-8523 (CI and MH) ; Research Fellow of Japan Society for the Promotion of Science , Japan.
Department of Pediatric Infectious Diseases, Institute of Tropical Medicine, Nagasaki University , 1-12-4 Sakamoto, Nagasaki, Japan 852-8523 (CI and MH).
Trop Med Health. 2015 Mar;43(1):1-9. doi: 10.2149/tmh.2014-21. Epub 2014 Oct 16.
Time series analysis is suitable for investigations of relatively direct and short-term effects of exposures on outcomes. In environmental epidemiology studies, this method has been one of the standard approaches to assess impacts of environmental factors on acute non-infectious diseases (e.g. cardiovascular deaths), with conventionally generalized linear or additive models (GLM and GAM). However, the same analysis practices are often observed with infectious diseases despite of the substantial differences from non-infectious diseases that may result in analytical challenges.
Following the Preferred Reporting Items for Systematic Reviews and Meta-Analyses guidelines, systematic review was conducted to elucidate important issues in assessing the associations between environmental factors and infectious diseases using time series analysis with GLM and GAM. Published studies on the associations between weather factors and malaria, cholera, dengue, and influenza were targeted.
Our review raised issues regarding the estimation of susceptible population and exposure lag times, the adequacy of seasonal adjustments, the presence of strong autocorrelations, and the lack of a smaller observation time unit of outcomes (i.e. daily data). These concerns may be attributable to features specific to infectious diseases, such as transmission among individuals and complicated causal mechanisms.
The consequence of not taking adequate measures to address these issues is distortion of the appropriate risk quantifications of exposures factors. Future studies should pay careful attention to details and examine alternative models or methods that improve studies using time series regression analysis for environmental determinants of infectious diseases.
时间序列分析适用于调查暴露因素对结果的相对直接和短期的影响。在环境流行病学研究中,该方法一直是评估环境因素对急性非传染性疾病(如心血管疾病死亡)影响的标准方法之一,通常采用广义线性模型或加法模型(GLM和GAM)。然而,尽管传染病与非传染病存在显著差异,可能会带来分析上的挑战,但在传染病研究中也经常采用相同的分析方法。
按照系统评价和Meta分析的首选报告项目指南,进行系统评价,以阐明使用GLM和GAM时间序列分析评估环境因素与传染病之间关联的重要问题。目标是已发表的关于天气因素与疟疾、霍乱、登革热和流感之间关联的研究。
我们的综述提出了一些问题,包括易感人群和暴露滞后时间的估计、季节调整的充分性、强自相关性的存在以及缺乏较小的结果观察时间单位(即每日数据)。这些问题可能归因于传染病的特定特征,如个体间传播和复杂的因果机制。
不采取适当措施解决这些问题的后果是暴露因素的适当风险量化出现偏差。未来的研究应仔细关注细节,并研究替代模型或方法,以改进使用时间序列回归分析研究传染病环境决定因素的研究。