Facultad de Física, Universidad Veracruzana, 91000 Xalapa, México.
School of Life Sciences, Arizona State University, Tempe, AZ 85281.
Proc Natl Acad Sci U S A. 2022 Aug 30;119(35):e2122851119. doi: 10.1073/pnas.2122851119. Epub 2022 Aug 22.
Disease transmission prediction across wildlife is crucial for risk assessment of emerging infectious diseases. Susceptibility of host species to pathogens is influenced by the geographic, environmental, and phylogenetic context of the specific system under study. We used machine learning to analyze how such variables influence pathogen incidence for multihost pathogen assemblages, including one of direct transmission (coronaviruses and bats) and two vector-borne systems (West Nile Virus [WNV] and birds, and malaria and birds). Here we show that this methodology is able to provide reliable global spatial susceptibility predictions for the studied host-pathogen systems, even when using a small amount of incidence information (i.e., [Formula: see text] of information in a database). We found that avian malaria was mostly affected by environmental factors and by an interaction between phylogeny and geography, and WNV susceptibility was mostly influenced by phylogeny and by the interaction between geographic and environmental distances, whereas coronavirus susceptibility was mostly affected by geography. This approach will help to direct surveillance and field efforts providing cost-effective decisions on where to invest limited resources.
跨野生动物的疾病传播预测对于新发传染病的风险评估至关重要。宿主物种对病原体的易感性受到所研究特定系统的地理、环境和系统发育背景的影响。我们使用机器学习来分析这些变量如何影响多宿主病原体组合的病原体发病率,包括一种直接传播(冠状病毒和蝙蝠)和两种媒介传播系统(西尼罗河病毒[WNV]和鸟类,以及疟疾和鸟类)。在这里,我们表明,即使使用少量的发病率信息(即数据库中[公式:见文本]的信息),该方法也能够为所研究的宿主-病原体系统提供可靠的全球空间易感性预测。我们发现,禽疟主要受环境因素和系统发育与地理之间的相互作用影响,WNV 的易感性主要受系统发育和地理与环境距离之间的相互作用影响,而冠状病毒的易感性主要受地理影响。这种方法将有助于指导监测和实地工作,为有限资源的投资提供具有成本效益的决策。