Gilligan Christopher A
Epidemiology and Modelling Group, Department of Plant Sciences, University of Cambridge, Cambridge, United Kingdom; email:
Annu Rev Phytopathol. 2024 Sep;62(1):217-241. doi: 10.1146/annurev-phyto-121423-041956. Epub 2024 Aug 22.
Innovations in aerobiological and epidemiological modeling are enabling the development of powerful techniques to infer connectivity networks for transboundary pathogens in ways that were not previously possible. The innovations are supported by improved access to historical and near real-time highly resolved weather data, multi-country disease surveillance data, and enhanced computing power. Using wheat rusts as an exemplar, we introduce a flexible modeling framework to identify characteristic pathways for long-distance spore dispersal within countries and beyond national borders. We show how the models are used for near real-time early warning systems to support smallholder farmers in East Africa and South Asia. Wheat rust pathogens are ideal exemplars because they continue to pose threats to food security, especially in regions of the world where resources for control are limited. The risks are exacerbated by the rapid appearance and spread of new pathogenic strains, prodigious spore production, and long-distance dispersal for transboundary and pandemic spread.
空气生物学和流行病学建模方面的创新正在催生强大的技术,能够以前所未有的方式推断跨界病原体的传播网络。这些创新得益于对历史和近实时高分辨率天气数据、多国疾病监测数据的获取改善以及计算能力的增强。以小麦锈病为例,我们引入了一个灵活的建模框架,以确定国家内部和跨国界的长距离孢子传播的特征路径。我们展示了这些模型如何用于近实时预警系统,以支持东非和南亚的小农户。小麦锈病病原体是理想的范例,因为它们继续对粮食安全构成威胁,尤其是在世界上控制资源有限的地区。新致病菌株的迅速出现和传播、大量的孢子产生以及跨界和大流行传播的长距离扩散加剧了这些风险。