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气候遥相关及其与近期人类和动物疾病暴发的关系模式。

Climate teleconnections and recent patterns of human and animal disease outbreaks.

机构信息

Biospheric Sciences Laboratory, NASA Goddard Space Flight Center, Greenbelt, Maryland, United States of America.

出版信息

PLoS Negl Trop Dis. 2012 Jan;6(1):e1465. doi: 10.1371/journal.pntd.0001465. Epub 2012 Jan 24.

Abstract

BACKGROUND

Recent clusters of outbreaks of mosquito-borne diseases (Rift Valley fever and chikungunya) in Africa and parts of the Indian Ocean islands illustrate how interannual climate variability influences the changing risk patterns of disease outbreaks. Although Rift Valley fever outbreaks have been known to follow periods of above-normal rainfall, the timing of the outbreak events has largely been unknown. Similarly, there is inadequate knowledge on climate drivers of chikungunya outbreaks. We analyze a variety of climate and satellite-derived vegetation measurements to explain the coupling between patterns of climate variability and disease outbreaks of Rift Valley fever and chikungunya.

METHODS AND FINDINGS

We derived a teleconnections map by correlating long-term monthly global precipitation data with the NINO3.4 sea surface temperature (SST) anomaly index. This map identifies regional hot-spots where rainfall variability may have an influence on the ecology of vector borne disease. Among the regions are Eastern and Southern Africa where outbreaks of chikungunya and Rift Valley fever occurred 2004-2009. Chikungunya and Rift Valley fever case locations were mapped to corresponding climate data anomalies to understand associations between specific anomaly patterns in ecological and climate variables and disease outbreak patterns through space and time. From these maps we explored associations among Rift Valley fever disease occurrence locations and cumulative rainfall and vegetation index anomalies. We illustrated the time lag between the driving climate conditions and the timing of the first case of Rift Valley fever. Results showed that reported outbreaks of Rift Valley fever occurred after ∼3-4 months of sustained above-normal rainfall and associated green-up in vegetation, conditions ideal for Rift Valley fever mosquito vectors. For chikungunya we explored associations among surface air temperature, precipitation anomalies, and chikungunya outbreak locations. We found that chikungunya outbreaks occurred under conditions of anomalously high temperatures and drought over Eastern Africa. However, in Southeast Asia, chikungunya outbreaks were negatively correlated (p<0.05) with drought conditions, but positively correlated with warmer-than-normal temperatures and rainfall.

CONCLUSIONS/SIGNIFICANCE: Extremes in climate conditions forced by the El Niño/Southern Oscillation (ENSO) lead to severe droughts or floods, ideal ecological conditions for disease vectors to emerge, and may result in epizootics and epidemics of Rift Valley fever and chikungunya. However, the immune status of livestock (Rift Valley fever) and human (chikungunya) populations is a factor that is largely unknown but very likely plays a role in the spatial-temporal patterns of these disease outbreaks. As the frequency and severity of extremes in climate increase, the potential for globalization of vectors and disease is likely to accelerate. Understanding the underlying patterns of global and regional climate variability and their impacts on ecological drivers of vector-borne diseases is critical in long-range planning of appropriate disease and disease-vector response, control, and mitigation strategies.

摘要

背景

最近在非洲和印度洋岛屿部分地区爆发的蚊媒疾病(裂谷热和基孔肯雅热)表明,年际气候变率如何影响疾病爆发的风险模式变化。尽管裂谷热爆发通常与高于正常水平的降雨量有关,但爆发事件的时间在很大程度上尚不清楚。同样,基孔肯雅热爆发的气候驱动因素也知之甚少。我们分析了各种气候和卫星衍生的植被测量结果,以解释裂谷热和基孔肯雅热的疾病爆发与气候变率模式之间的关系。

方法和发现

我们通过将长期的月全球降水数据与 NINO3.4 海表温度(SST)异常指数相关联,得出了一个遥相关图。该地图确定了降雨变化可能对病媒传播疾病生态产生影响的区域热点。这些区域包括 2004 年至 2009 年发生基孔肯雅热和裂谷热的东非和南非。将基孔肯雅热和裂谷热病例的位置映射到相应的气候数据异常上,以了解特定的生态和气候变量异常模式与疾病爆发模式之间的时空关系。从这些地图中,我们探讨了裂谷热疾病发生地点与累积降雨和植被指数异常之间的关系。我们展示了导致裂谷热的驱动气候条件与首次裂谷热病例之间的时间滞后。结果表明,裂谷热报告的爆发发生在持续高于正常水平的降雨和植被变绿之后约 3-4 个月,这是裂谷热蚊媒理想的条件。对于基孔肯雅热,我们探讨了地表气温、降水异常和基孔肯雅热爆发地点之间的关系。我们发现,基孔肯雅热爆发发生在东非异常高温和干旱的情况下。然而,在东南亚,基孔肯雅热爆发与干旱条件呈负相关(p<0.05),但与温暖天气和降雨呈正相关。

结论/意义:厄尔尼诺/南方涛动(ENSO)引起的气候条件极端变化导致严重的干旱或洪水,为病媒出现创造了理想的生态条件,可能导致裂谷热和基孔肯雅热的动物传染病和流行病。然而,牲畜(裂谷热)和人类(基孔肯雅热)群体的免疫状态是一个很大程度上未知但很可能在这些疾病爆发的时空模式中发挥作用的因素。随着气候极值的频率和严重程度的增加,病媒和疾病全球化的可能性很可能会加速。了解全球和区域气候变率的潜在模式及其对病媒传播疾病生态驱动因素的影响,对于规划适当的疾病和疾病媒介应对、控制和缓解策略具有重要意义。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/42ab/3265456/7bd29201c6c8/pntd.0001465.g001.jpg

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