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首页> 外文期刊>Philosophical Transactions of the Royal Society of London, Series B. Biological Sciences >The problem of scale in the prediction and management of pathogen spillover
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The problem of scale in the prediction and management of pathogen spillover

机译:病原体溢出预测与管理的规模问题

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Disease emergence events, epidemics and pandemics all underscore the need to predict zoonotic pathogen spillover. Because cross-species transmission is inherently hierarchical, involving processes that occur at varying levels of biological organization, such predictive efforts can be complicated by the many scales and vastness of data potentially required for forecasting. A wide range of approaches are currently used to forecast spillover risk (e.g. macroecology, pathogen discovery, surveillance of human populations, among others), each of which is bound within particular phylogenetic, spatial and temporal scales of prediction. Here, we contextualize these diverse approaches within their forecasting goals and resulting scales of prediction to illustrate critical areas of conceptual and pragmatic overlap. Specifically, we focus on an ecological perspective to envision a research pipeline that connects these different scales of data and predictions from the aims of discovery to intervention. Pathogen discovery and predictions focused at the phylogenetic scale can first provide coarse and pattern-based guidance for which reservoirs, vectors and pathogens are likely to be involved in spillover, thereby narrowing surveillance targets and where such efforts should be conducted. Next, these predictions can be followed with ecologically driven spatio-temporal studies of reservoirs and vectors to quantify spatio-temporal fluctuations in infection and to mechanistically understand how pathogens circulate and are transmitted to humans. This approach can also help identify general regions and periods for which spillover is most likely. We illustrate this point by highlighting several case studies where long-term, ecologically focused studies (e.g. Lyme disease in the northeast USA, Hendra virus in eastern Australia, Plasmodium knowlesi in Southeast Asia) have facilitated predicting spillover in space and time and facilitated the design of possible intervention strategies. Such
机译:疾病出现事件,流行病和流行病都强调了预测人畜共患病原溢出的需要。因为跨物种传输本质上是分层的,所以涉及在不同水平的生物组织中发生的进程,这种预测努力可能被许多规模和潜在的预测所需的数据变得复杂。目前用于预测溢出风险的广泛方法(例如,宏观学,病原体发现,人口中的人口的监测),其每个都在特定的系统发育,空间和时间尺度的预测中结合。在这里,我们在预测目标中规范化这些不同的方法,并产生了预测的尺度,以说明概念和务实重叠的关键领域。具体而言,我们专注于Envision Envision的研究管道,该研究管道将这些不同的数据尺度与发现的旨在进行干预的目的。在系统发育尺度上聚焦的病原体发现和预测可以首先提供基于粗略的和模式的引导,用于储存器,载体和病原体可能涉及溢出,从而缩小监测目标以及应该进行这种努力。接下来,可以随之而来,可以随后利用储层和载体的生态驱动的时空研究,以量化感染中的时空波动,并机械地理解病原体如何流传并传播给人类。这种方法还可以帮助识别最有可能溢出的一般区域和期间。我们通过突出几种案例研究来说明这一点,其中几个案例研究,其中长期,生态学的研究(例如东北美国东北部的Hendra病毒,东南亚的疟原虫知识的Hendra病毒)已经促进了空间和时间的预测,并促进了设计可能的干预策略。这样的

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