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巴巴多斯登革热风险的气候非线性和时滞影响:建模研究。

Nonlinear and delayed impacts of climate on dengue risk in Barbados: A modelling study.

机构信息

Department of Infectious Disease Epidemiology, London School of Hygiene & Tropical Medicine, London, United Kingdom.

Centre for the Mathematical Modelling of Infectious Diseases, London School of Hygiene & Tropical Medicine, London, United Kingdom.

出版信息

PLoS Med. 2018 Jul 17;15(7):e1002613. doi: 10.1371/journal.pmed.1002613. eCollection 2018 Jul.

Abstract

BACKGROUND

Over the last 5 years (2013-2017), the Caribbean region has faced an unprecedented crisis of co-occurring epidemics of febrile illness due to arboviruses transmitted by the Aedes sp. mosquito (dengue, chikungunya, and Zika). Since 2013, the Caribbean island of Barbados has experienced 3 dengue outbreaks, 1 chikungunya outbreak, and 1 Zika fever outbreak. Prior studies have demonstrated that climate variability influences arbovirus transmission and vector population dynamics in the region, indicating the potential to develop public health interventions using climate information. The aim of this study is to quantify the nonlinear and delayed effects of climate indicators, such as drought and extreme rainfall, on dengue risk in Barbados from 1999 to 2016.

METHODS AND FINDINGS

Distributed lag nonlinear models (DLNMs) coupled with a hierarchal mixed-model framework were used to understand the exposure-lag-response association between dengue relative risk and key climate indicators, including the standardised precipitation index (SPI) and minimum temperature (Tmin). The model parameters were estimated in a Bayesian framework to produce probabilistic predictions of exceeding an island-specific outbreak threshold. The ability of the model to successfully detect outbreaks was assessed and compared to a baseline model, representative of standard dengue surveillance practice. Drought conditions were found to positively influence dengue relative risk at long lead times of up to 5 months, while excess rainfall increased the risk at shorter lead times between 1 and 2 months. The SPI averaged over a 6-month period (SPI-6), designed to monitor drought and extreme rainfall, better explained variations in dengue risk than monthly precipitation data measured in millimetres. Tmin was found to be a better predictor than mean and maximum temperature. Furthermore, including bidimensional exposure-lag-response functions of these indicators-rather than linear effects for individual lags-more appropriately described the climate-disease associations than traditional modelling approaches. In prediction mode, the model was successfully able to distinguish outbreaks from nonoutbreaks for most years, with an overall proportion of correct predictions (hits and correct rejections) of 86% (81%:91%) compared with 64% (58%:71%) for the baseline model. The ability of the model to predict dengue outbreaks in recent years was complicated by the lack of data on the emergence of new arboviruses, including chikungunya and Zika.

CONCLUSION

We present a modelling approach to infer the risk of dengue outbreaks given the cumulative effect of climate variations in the months leading up to an outbreak. By combining the dengue prediction model with climate indicators, which are routinely monitored and forecasted by the Regional Climate Centre (RCC) at the Caribbean Institute for Meteorology and Hydrology (CIMH), probabilistic dengue outlooks could be included in the Caribbean Health-Climatic Bulletin, issued on a quarterly basis to provide climate-smart decision-making guidance for Caribbean health practitioners. This flexible modelling approach could be extended to model the risk of dengue and other arboviruses in the Caribbean region.

摘要

背景

在过去的 5 年(2013-2017 年)中,加勒比地区面临着由埃及伊蚊传播的虫媒病毒引起的发热疾病(登革热、基孔肯雅热和寨卡热)同时爆发的前所未有的危机。自 2013 年以来,巴巴多斯加勒比岛屿经历了 3 次登革热疫情、1 次基孔肯雅热疫情和 1 次寨卡热疫情。先前的研究表明,气候变异性会影响该地区虫媒病毒的传播和媒介种群动态,这表明有可能利用气候信息制定公共卫生干预措施。本研究的目的是量化干旱和极端降雨等气候指标对 1999 年至 2016 年巴巴多斯登革热风险的非线性和滞后影响。

方法和发现

分布式滞后非线性模型(DLNMs)与分层混合模型框架相结合,用于了解登革热相对风险与关键气候指标(包括标准化降水指数(SPI)和最低温度(Tmin))之间的暴露-滞后-反应关联。使用贝叶斯框架估计模型参数,以对超出特定岛屿暴发阈值的情况进行概率预测。评估了该模型成功检测暴发的能力,并与代表标准登革热监测实践的基线模型进行了比较。结果发现,干旱条件在长达 5 个月的时间内对登革热相对风险有积极影响,而过量降雨在 1 至 2 个月的较短时间内增加了风险。设计用于监测干旱和极端降雨的 6 个月期 SPI(SPI-6)比以毫米为单位测量的每月降水量数据更好地解释了登革热风险的变化。与平均温度和最高温度相比,Tmin 被发现是更好的预测因子。此外,与传统的建模方法相比,包括这些指标的二维暴露-滞后-反应函数(而不是单个滞后的线性效应)更能恰当地描述气候-疾病关联。在预测模式下,该模型能够成功区分大多数年份的暴发和非暴发,总正确预测(命中和正确拒绝)比例为 86%(81%:91%),而基线模型为 64%(58%:71%)。由于缺乏关于新出现的虫媒病毒(包括基孔肯雅热和寨卡热)的数据,该模型对近年来登革热暴发的预测能力变得复杂。

结论

我们提出了一种建模方法,用于推断在暴发前几个月气候变化的累积效应下暴发的登革热风险。通过将登革热预测模型与气候指标相结合,气候指标由加勒比气象学和水文学研究所(CIMH)的区域气候中心(RCC)常规监测和预测,可以将概率性登革热展望纳入加勒比健康-气候公报中,该公报每季度发布一次,为加勒比卫生从业人员提供明智的决策指导。这种灵活的建模方法可以扩展到建模加勒比地区登革热和其他虫媒病毒的风险。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c40d/6049902/083ce1434a5a/pmed.1002613.g001.jpg

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