Department of Civil and Environmental Engineering, Lehigh University, Bethlehem, PA, United States of America.
Department of Industrial and System Engineering, Lehigh University, Bethlehem, PA, United States of America.
PLoS One. 2022 Sep 1;17(9):e0271886. doi: 10.1371/journal.pone.0271886. eCollection 2022.
Zoonotic diseases spread through pathogens-infected animal carriers. In the case of Ebola Virus Disease (EVD), evidence supports that the main carriers are fruit bats and non-human primates. Further, EVD spread is a multi-factorial problem that depends on sociodemographic and economic (SDE) factors. Here we inquire into this phenomenon and aim at determining, quantitatively, the Ebola spillover infection exposure map and try to link it to SDE factors. To that end, we designed and conducted a survey in Sierra Leone and implement a pipeline to analyze data using regression and machine learning techniques. Our methodology is able (1) to identify the features that are best predictors of an individual's tendency to partake in behaviors that can expose them to Ebola infection, (2) to develop a predictive model about the spillover risk statistics that can be calibrated for different regions and future times, and (3) to compute a spillover exposure map for Sierra Leone. Our results and conclusions are relevant to identify the regions in Sierra Leone at risk of EVD spillover and, consequently, to design and implement policies for an effective deployment of resources (e.g., drug supplies) and other preventative measures (e.g., educational campaigns).
人畜共患病通过携带病原体的动物传播。就埃博拉病毒病(EVD)而言,有证据表明主要的携带动物是果蝠和非人类灵长类动物。此外,埃博拉病毒的传播是一个多因素问题,取决于社会人口和经济(SDE)因素。在这里,我们探讨了这一现象,并旨在定量确定埃博拉溢出感染暴露图,并尝试将其与 SDE 因素联系起来。为此,我们在塞拉利昂进行了一项调查,并设计了一个使用回归和机器学习技术分析数据的管道。我们的方法能够:(1) 确定最能预测个人参与可能使他们感染埃博拉病毒的行为的倾向的特征;(2) 针对不同地区和未来时间制定有关溢出风险统计数据的预测模型,并进行校准;(3) 为塞拉利昂计算溢出暴露图。我们的结果和结论对于确定塞拉利昂的风险地区具有重要意义,从而可以设计和实施有效的资源部署(例如,药物供应)和其他预防措施(例如,教育活动)的政策。