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Big data–model integration and AI for vector‐borne disease prediction

机译:载体传播疾病预测的大数据模型集成与AI

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Predicting the drivers of incursion and expansion of vector‐borne diseases as part of early‐warning strategies (EWS) is a major challenge for geographically extensive diseases where spread is mediated by spatial heterogeneity in climate and other environmental drivers. Geospatial data on these environmental drivers are increasingly available affording opportunities for application to a predictive disease ecology paradigm provided the data can be synthesized and harmonized with fine‐scale, highly resolved data on vector and host responses to their environment. Here, we apply a multi‐scale big data–model integration approach using human‐guided machine learning to objectively evaluate the importance of a large suite of spatially distributed environmental variables (>400) to develop EWS for vesicular stomatitis (VS), a common viral vector‐borne vesicular disease affecting livestock throughout the Americas. Two temporally and phylogenetically distinct events were used to develop disease occurrence–environment relationships in incursion (2004) and expansion years (2005), and then to test those relationships (2014, 2015) at two scales: (1) local and (2) landscape to regional. Our results show that VS occurrence at a local scale of individual landowners was related to conditions that can be monitored (rainfall, temperatures, streamflow) or modified (vegetation). On‐site green vegetation during the month of occurrence and higher rainfall four months prior combined with either cool daytime (expansion) or nighttime (incursion) temperatures one month prior were indicators of VS occurrence. Distance to running water (incursion) and host density based on neighboring ranches (expansion) with infected animals were also important in individual years. At landscape‐to‐regional scales, conditions that favor specific VSV biological vectors were indicated, either black flies in incursion years or biting midges in expansion years. Changes in viral genetic lineage were less important to patterns in VS occurrence than factors affecting the host–vector–environment interactions. In combination with our onset map based on latitude, elevation, and long‐term annual precipitation, this year‐ and scale‐specific information can be used to develop strategies to minimize effects of future VS events. This big data approach coupled with expert knowledge and machine learning can be applied to other emerging diseases for improvement in understanding, prediction, and management of vector‐borne diseases.
机译:预测载体传播疾病的障碍和扩张作为早期预警策略(EWS)的一部分是地理上广泛疾病的重大挑战,这些疾病在气候和其他环境司机中的空间异质性介导。这些环境驱动程序的地理空间数据越来越多地提供给应用程序到预测性疾病生态范式的机会,因为可以用微尺度,高​​度解析的数据上合成和统一向往的数据,并对他们的环境进行统一。在这里,我们采用多尺度大数据模型集成方法,使用人类引导的机器学习,客观地评估大型空间分布环境变量(> 400)的重要性,以开发胚胎口炎(VS),共同病毒载体传染性脾脏疾病,影响牲畜的整个美洲。在暂时和系统源性不同的事件中用于发育疾病(2004)和扩张年份(2005)中的疾病发生 - 环境关系,然后在两种尺度上测试这些关系(2014,2015):(1)当地和(2)景观到区域。我们的研究结果表明,在各个土地所有者的本地规模的情况与可以监测(降雨,温度,流出)或改性(植被)的条件有关。在出现和更高的降雨量期间的现场绿色植被四个月与冷却白天(扩张)或夜间(入侵)温度为期,一个月前一个月是VS发生的指标。基于邻近牧场(扩展)的距离水(入侵)和宿主密度在个人年份也很重要。在景观到区域尺度上,有利于特定的VSV生物学载体的条件,入侵年份的黑蝇或在扩张岁月中咬住中介。病毒遗传谱系的变化对VS发生的模式不太重要,而不是影响宿主 - 矢量环境相互作用的因素。结合基于纬度,高程和长期年降水的开始,今年和规模特定信息可用于开发最小化未来与事件的影响的策略。这种大数据方法与专业知识和机器学习相结合,可以应用于其他新兴疾病,以改善载体传播疾病的理解,预测和管理。

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