Smithsonian Tropical Research Institute, Balboa Ancón, Republic of Panama.
Department of Geography and Earth Sciences, Center for Applied Geographic Information Science, University of North Carolina at Charlotte, Charlotte, NC, United States of America.
PLoS Negl Trop Dis. 2019 Sep 23;13(9):e0007266. doi: 10.1371/journal.pntd.0007266. eCollection 2019 Sep.
Long term surveillance of vectors and arboviruses is an integral aspect of disease prevention and control systems in countries affected by increasing risk. Yet, little effort has been made to adjust space-time risk estimation by integrating disease case counts with vector surveillance data, which may result in inaccurate risk projection when several vector species are present, and when little is known about their likely role in local transmission. Here, we integrate 13 years of dengue case surveillance and associated Aedes occurrence data across 462 localities in 63 districts to estimate the risk of infection in the Republic of Panama. Our exploratory space-time modelling approach detected the presence of five clusters, which varied by duration, relative risk, and spatial extent after incorporating vector species as covariates. The Ae. aegypti model contained the highest number of districts with more dengue cases than would be expected given baseline population levels, followed by the model accounting for both Ae. aegypti and Ae. albopictus. This implies that arbovirus case surveillance coupled with entomological surveillance can affect cluster detection and risk estimation, potentially improving efforts to understand outbreak dynamics at national scales.
长期监测病媒和虫媒病毒是受风险增加影响的国家疾病预防和控制系统的一个组成部分。然而,几乎没有努力通过将疾病病例计数与病媒监测数据相结合来调整时空风险估计,当存在几种病媒物种且对它们在当地传播中的可能作用知之甚少时,这可能导致风险预测不准确。在这里,我们整合了 13 年的登革热病例监测和 63 个区 462 个地点的相关埃及伊蚊发生数据,以估计巴拿马共和国的感染风险。我们的探索性时空建模方法检测到存在五个集群,这些集群在纳入病媒物种作为协变量后,在持续时间、相对风险和空间范围上有所不同。包含登革热病例超过基线人口水平的区数量最多的是埃及伊蚊模型,其次是同时考虑埃及伊蚊和白纹伊蚊的模型。这意味着虫媒病毒病例监测与昆虫学监测相结合可以影响集群检测和风险估计,有可能改善在国家范围内了解疫情动态的努力。