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遥感夜间露点与赞比亚南部省份疟疾传播的相关性:一项时间序列研究

Remotely-sensed, nocturnal, dew point correlates with malaria transmission in Southern Province, Zambia: a time-series study.

作者信息

Nygren David, Stoyanov Cristina, Lewold Clemens, Månsson Fredrik, Miller John, Kamanga Aniset, Shiff Clive J

机构信息

Department of Molecular Microbiology and Immunology, Johns Hopkins University, Baltimore, USA.

出版信息

Malar J. 2014 Jun 13;13:231. doi: 10.1186/1475-2875-13-231.

Abstract

BACKGROUND

Plasmodium falciparum transmission has decreased significantly in Zambia in the last decade. The malaria transmission is influenced by environmental variables. Incorporation of environmental variables in models of malaria transmission likely improves model fit and predicts probable trends in malaria disease. This work is based on the hypothesis that remotely-sensed environmental factors, including nocturnal dew point, are associated with malaria transmission and sustain foci of transmission during the low transmission season in the Southern Province of Zambia.

METHODS

Thirty-eight rural health centres in Southern Province, Zambia were divided into three zones based on transmission patterns. Correlations between weekly malaria cases and remotely-sensed nocturnal dew point, nocturnal land surface temperature as well as vegetation indices and rainfall were evaluated in time-series analyses from 2012 week 19 to 2013 week 36. Zonal as well as clinic-based, multivariate, autoregressive, integrated, moving average (ARIMAX) models implementing environmental variables were developed to model transmission in 2011 week 19 to 2012 week 18 and forecast transmission in 2013 week 37 to week 41.

RESULTS

During the dry, low transmission season significantly higher vegetation indices, nocturnal land surface temperature and nocturnal dew point were associated with the areas of higher transmission. Environmental variables improved ARIMAX models. Dew point and normalized differentiated vegetation index were significant predictors and improved all zonal transmission models. In the high-transmission zone, this was also seen for land surface temperature. Clinic models were improved by adding dew point and land surface temperature as well as normalized differentiated vegetation index. The mean average error of prediction for ARIMAX models ranged from 0.7 to 33.5%. Forecasts of malaria incidence were valid for three out of five rural health centres; however, with poor results at the zonal level.

CONCLUSIONS

In this study, the fit of ARIMAX models improves when environmental variables are included. There is a significant association of remotely-sensed nocturnal dew point with malaria transmission. Interestingly, dew point might be one of the factors sustaining malaria transmission in areas of general aridity during the dry season.

摘要

背景

在过去十年中,赞比亚的恶性疟原虫传播显著减少。疟疾传播受环境变量影响。将环境变量纳入疟疾传播模型可能会改善模型拟合,并预测疟疾疾病的可能趋势。这项工作基于以下假设:包括夜间露点在内的遥感环境因素与疟疾传播相关,并在赞比亚南部省份的低传播季节维持传播病灶。

方法

赞比亚南部省份的38个农村卫生中心根据传播模式分为三个区域。在2012年第19周至2013年第36周的时间序列分析中,评估了每周疟疾病例与遥感夜间露点、夜间地表温度以及植被指数和降雨量之间的相关性。开发了实施环境变量的区域以及基于诊所的多变量自回归积分移动平均(ARIMAX)模型,以模拟2011年第19周至2012年第18周的传播情况,并预测2013年第37周至第41周的传播情况。

结果

在干燥的低传播季节,较高的植被指数、夜间地表温度和夜间露点与较高传播区域相关。环境变量改善了ARIMAX模型。露点和归一化差异植被指数是显著的预测因子,并改善了所有区域传播模型。在高传播区域,地表温度也有同样的情况。通过添加露点、地表温度以及归一化差异植被指数,诊所模型得到了改善。ARIMAX模型的平均预测误差范围为0.7%至33.5%。疟疾发病率预测在五个农村卫生中心中有三个是有效的;然而,在区域层面结果不佳。

结论

在本研究中,纳入环境变量时ARIMAX模型的拟合得到改善。遥感夜间露点与疟疾传播之间存在显著关联。有趣的是,露点可能是旱季一般干旱地区维持疟疾传播的因素之一。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cc5c/4078093/a09ae1965711/1475-2875-13-231-1.jpg

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