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气候变量对伊朗中部伊斯法罕地区皮肤利什曼病发病率的影响。

The effect of climate variables on the incidence of cutaneous leishmaniasis in Isfahan, Central Iran.

机构信息

Neurology Research Center, Kerman University of Medical Sciences, Kerman, Iran.

Environmental Health Engineering Research Center, Kerman University of Medical Sciences, Kerman, Iran.

出版信息

Int J Biometeorol. 2021 Nov;65(11):1787-1797. doi: 10.1007/s00484-021-02135-8. Epub 2021 Apr 29.

Abstract

In recent years, there have been considerable changes in the distribution of diseases that are potentially tied to ongoing climate variability. The aim of this study was to investigate the association between the incidence of cutaneous leishmaniasis (CL) and climatic factors in an Iranian city (Isfahan), which had the highest incidence of CL in the country. CL incidence and meteorological data were acquired from April 2010 to March 2017 (108 months) for Isfahan City. Univariate and multivariate seasonal autoregressive integrated moving average (SARIMA), generalized additive models (GAM), and generalized additive mixed models (GAMM) were used to identify the association between CL cases and meteorological variables, and forecast CL incidence. AIC, BIC, and residual tests were used to test the goodness of fit of SARIMA models; and R was used for GAM/GAMM. 6798 CL cases were recorded during this time. The incidence had a seasonal pattern and the highest number of cases was recorded from August to October. In univariate SARIMA, (1,0,1) (0,1,1) was the best fit for predicting CL incidence (AIC=8.09, BIC=8.32). Time series regression (1,0,1) (0,1,1) showed that monthly mean humidity after 4-month lag was inversely related to CL incidence (AIC=8.53, BIC=8.66). GAMM results showed that average temperature with 2-month lag, average relative humidity with 3-month lag, monthly cumulative rainfall with 1-month lag, and monthly sunshine hours with 1-month lag were related to CL incidence (R=0.94). The impact of meteorological variables on the incidence of CL is not linear and GAM models that include non-linear structures are a better fit for prediction. In Isfahan, Iran, meteorological variables can greatly predict the incidence of CL, and these variables can be used for predicting outbreaks.

摘要

近年来,与持续的气候变化有关的潜在疾病的分布发生了相当大的变化。本研究的目的是调查伊朗城市伊斯法罕(该国皮肤利什曼病发病率最高的城市)的皮肤利什曼病(CL)发病率与气候因素之间的关联。从 2010 年 4 月至 2017 年 3 月(108 个月)获取了伊斯法罕市的 CL 发病率和气象数据。单变量和多变量季节性自回归综合移动平均(SARIMA)、广义加性模型(GAM)和广义加性混合模型(GAMM)用于确定 CL 病例与气象变量之间的关联,并预测 CL 发病率。AIC、BIC 和残差检验用于检验 SARIMA 模型的拟合优度;R 用于 GAM/GAMM。在此期间记录了 6798 例 CL 病例。发病率具有季节性模式,记录的病例数最多的是 8 月至 10 月。在单变量 SARIMA 中,(1,0,1)(0,1,1)是预测 CL 发病率的最佳拟合(AIC=8.09,BIC=8.32)。时间序列回归(1,0,1)(0,1,1)表明,滞后 4 个月的每月平均湿度与 CL 发病率呈负相关(AIC=8.53,BIC=8.66)。GAMM 结果表明,滞后 2 个月的平均温度、滞后 3 个月的平均相对湿度、滞后 1 个月的每月累积降雨量和滞后 1 个月的每月日照小时数与 CL 发病率有关(R=0.94)。气象变量对 CL 发病率的影响不是线性的,包含非线性结构的 GAM 模型更适合预测。在伊朗伊斯法罕,气象变量可以很好地预测 CL 的发病率,这些变量可用于预测疫情爆发。

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