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基于气候的登革热流行理解和预测模型。

Climate-based models for understanding and forecasting dengue epidemics.

机构信息

UMR190, Emergence of Viral Pathologies, Institute of Research for the Development, Aix-Marseille University, Marseille, France.

出版信息

PLoS Negl Trop Dis. 2012;6(2):e1470. doi: 10.1371/journal.pntd.0001470. Epub 2012 Feb 14.

Abstract

BACKGROUND

Dengue dynamics are driven by complex interactions between human-hosts, mosquito-vectors and viruses that are influenced by environmental and climatic factors. The objectives of this study were to analyze and model the relationships between climate, Aedes aegypti vectors and dengue outbreaks in Noumea (New Caledonia), and to provide an early warning system.

METHODOLOGY/PRINCIPAL FINDINGS: Epidemiological and meteorological data were analyzed from 1971 to 2010 in Noumea. Entomological surveillance indices were available from March 2000 to December 2009. During epidemic years, the distribution of dengue cases was highly seasonal. The epidemic peak (March-April) lagged the warmest temperature by 1-2 months and was in phase with maximum precipitations, relative humidity and entomological indices. Significant inter-annual correlations were observed between the risk of outbreak and summertime temperature, precipitations or relative humidity but not ENSO. Climate-based multivariate non-linear models were developed to estimate the yearly risk of dengue outbreak in Noumea. The best explicative meteorological variables were the number of days with maximal temperature exceeding 32°C during January-February-March and the number of days with maximal relative humidity exceeding 95% during January. The best predictive variables were the maximal temperature in December and maximal relative humidity during October-November-December of the previous year. For a probability of dengue outbreak above 65% in leave-one-out cross validation, the explicative model predicted 94% of the epidemic years and 79% of the non epidemic years, and the predictive model 79% and 65%, respectively.

CONCLUSIONS/SIGNIFICANCE: The epidemic dynamics of dengue in Noumea were essentially driven by climate during the last forty years. Specific conditions based on maximal temperature and relative humidity thresholds were determinant in outbreaks occurrence. Their persistence was also crucial. An operational model that will enable health authorities to anticipate the outbreak risk was successfully developed. Similar models may be developed to improve dengue management in other countries.

摘要

背景

登革热的动态是由人类宿主、蚊子媒介和病毒之间的复杂相互作用驱动的,这些相互作用受到环境和气候因素的影响。本研究的目的是分析和建立新喀里多尼亚努美阿(Noumea)的气候、埃及伊蚊媒介和登革热爆发之间的关系,并建立一个预警系统。

方法/主要发现:对 1971 年至 2010 年努美阿的流行病学和气象数据进行了分析。2000 年 3 月至 2009 年 12 月期间有昆虫学监测指数。在流行年份,登革热病例的分布具有很强的季节性。流行高峰(3 月至 4 月)滞后于最暖温度 1-2 个月,与最大降水量、相对湿度和昆虫学指数同步。在年际间,爆发风险与夏季温度、降水或相对湿度显著相关,但与厄尔尼诺-南方涛动(ENSO)无关。建立了基于气候的多元非线性模型来估计努美阿每年爆发登革热的风险。最具解释性的气象变量是 1 月-2 月-3 月期间最高温度超过 32°C 的天数和 10 月-11 月-12 月期间最高相对湿度超过 95%的天数。最佳预测变量是前一年 12 月的最高温度和 10 月-11 月-12 月的最高相对湿度。在留一法交叉验证中,预测登革热爆发概率超过 65%的模型中,解释性模型预测了 94%的流行年份和 79%的非流行年份,预测性模型分别预测了 79%和 65%。

结论/意义:在过去的四十年里,努美阿的登革热流行动态主要由气候驱动。基于最高温度和相对湿度阈值的特定条件是爆发发生的决定因素。它们的持续存在也至关重要。成功开发了一种可使卫生当局能够预测疫情风险的运行模型。可能会开发类似的模型来改善其他国家的登革热管理。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5c9a/3279338/434de93a6a9d/pntd.0001470.g001.jpg

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