首页> 外文期刊>Malaria Journal >A global model of malaria climate sensitivity: comparing malaria response to historic climate data based on simulation and officially reported malaria incidence
【24h】

A global model of malaria climate sensitivity: comparing malaria response to historic climate data based on simulation and officially reported malaria incidence

机译:疟疾气候敏感性全球模型:根据模拟和官方报告的疟疾发病率比较疟疾对历史气候数据的反应

获取原文
           

摘要

Background The role of the Anopheles vector in malaria transmission and the effect of climate on Anopheles populations are well established. Models of the impact of climate change on the global malaria burden now have access to high-resolution climate data, but malaria surveillance data tends to be less precise, making model calibration problematic. Measurement of malaria response to fluctuations in climate variables offers a way to address these difficulties. Given the demonstrated sensitivity of malaria transmission to vector capacity, this work tests response functions to fluctuations in land surface temperature and precipitation. Methods This study of regional sensitivity of malaria incidence to year-to-year climate variations used an extended Macdonald Ross compartmental disease model (to compute malaria incidence) built on top of a global Anopheles vector capacity model (based on 10?years of satellite climate data). The predicted incidence was compared with estimates from the World Health Organization and the Malaria Atlas. The models and denominator data used are freely available through the Eclipse Foundation’s Spatiotemporal Epidemiological Modeller (STEM). Results Although the absolute scale factor relating reported malaria to absolute incidence is uncertain, there is a positive correlation between predicted and reported year-to-year variation in malaria burden with an averaged root mean square (RMS) error of 25% comparing normalized incidence across 86 countries. Based on this, the proposed measure of sensitivity of malaria to variations in climate variables indicates locations where malaria is most likely to increase or decrease in response to specific climate factors. Bootstrapping measures the increased uncertainty in predicting malaria sensitivity when reporting is restricted to national level and an annual basis. Results indicate a potential 20x improvement in accuracy if data were available at the level ISO 3166–2 national subdivisions and with monthly time sampling. Conclusions The high spatial resolution possible with state-of-the-art numerical models can identify regions most likely to require intervention due to climate changes. Higher-resolution surveillance data can provide a better understanding of how climate fluctuations affect malaria incidence and improve predictions. An open-source modelling framework, such as STEM, can be a valuable tool for the scientific community and provide a collaborative platform for developing such models.
机译:背景技术按蚊媒介在疟疾传播中的作用以及气候对按蚊种群的影响已得到充分证实。气候变化对全球疟疾负担的影响模型现在可以使用高分辨率的气候数据,但是疟疾监测数据的准确性往往较低,从而使模型校准成为问题。疟疾对气候变量波动的响应的测量提供了解决这些困难的方法。鉴于已证明疟疾传播对媒介能力的敏感性,这项工作测试了对地表温度和降水波动的响应功能。方法:本研究对疟疾发病率对逐年气候变化的区域敏感性进行了研究,使用了扩展的麦克唐纳德·罗斯(Macdonald Ross)隔室疾病模型(用于计算疟疾发病率),该模型建立在全球按蚊媒介能力模型(基于卫星气候10年)的基础上数据)。将预测的发病率与世界卫生组织和《疟疾地图集》的估计值进行了比较。所使用的模型和分母数据可通过Eclipse Foundation的时空流行病学建模器(STEM)免费获得。结果尽管将所报告的疟疾与绝对发病率相关的绝对比例因子尚不确定,但预测的和所报告的疟疾负担的逐年变化之间存在正相关,平均均方根(RMS)误差为25% 86个国家。基于此,对疟疾对气候变量变化的敏感性的拟议度量表明了响应特定气候因素疟疾最有可能增加或减少的位置。当报告仅限于国家和年度水平时,自举测量了在预测疟疾敏感性方面不确定性的增加。结果表明,如果可以在ISO 3166-2国家级地区获得数据,并且每月进行一次采样,则准确性可能会提高20倍。结论使用最新的数值模型可以实现较高的空间分辨率,从而可以确定最有可能因气候变化而需要干预的区域。高分辨率的监测数据可以更好地了解气候波动如何影响疟疾发病率并改善预测。诸如STEM之类的开源建模框架对于科学界而言可能是有价值的工具,并为开发此类模型提供了协作平台。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号