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GEOFIL:一种基于空间的代理建模框架,用于预测美属萨摩亚淋巴丝虫病的长期传播动态。

GEOFIL: A spatially-explicit agent-based modelling framework for predicting the long-term transmission dynamics of lymphatic filariasis in American Samoa.

机构信息

Research School of Population Health, The Australian National University, Australia.

College of Public Health, Medical and Veterinary Sciences, Division of Tropical Health and Medicine, James Cook University, Australia.

出版信息

Epidemics. 2019 Jun;27:19-27. doi: 10.1016/j.epidem.2018.12.003. Epub 2018 Dec 29.

Abstract

In this study, a spatially-explicit agent-based modelling framework GEOFIL was developed to predict lymphatic filariasis (LF) transmission dynamics in American Samoa. GEOFIL included individual-level information on age, gender, disease status, household location, household members, workplace/school location and colleagues/schoolmates at each time step during the simulation. In American Samoa, annual mass drug administration from 2000 to 2006 successfully reduced LF prevalence dramatically. However, GEOFIL predicted continual increase in microfilaraemia prevalence in the absence of further intervention. Evidence from seroprevalence and transmission assessment surveys conducted from 2010 to 2016 indicated a resurgence of LF in American Samoa, corroborating GEOFIL's predictions. The microfilaraemia and antigenaemia prevalence in 6-7-yo children were much lower than in the overall population. Mosquito biting rates were found to be a critical determinant of infection risk. Transmission hotspots are likely to disappear with lower biting rates. GEOFIL highlights current knowledge gaps, such as data on mosquito abundance, biting rates and within-host parasite dynamics, which are important for improving the accuracy of model predictions.

摘要

在这项研究中,开发了一个具有空间显式的基于主体的建模框架 GEOFIL,用于预测美属萨摩亚的淋巴丝虫病(LF)传播动态。GEOFIL 包括模拟过程中每个时间步的个体级信息,如年龄、性别、疾病状况、家庭位置、家庭成员、工作场所/学校位置和同事/同学。在美属萨摩亚,2000 年至 2006 年的年度大规模药物管理成功地大大降低了 LF 的流行率。然而,在没有进一步干预的情况下,GEOFIL 预测微丝蚴病的流行率将继续增加。2010 年至 2016 年进行的血清流行率和传播评估调查的证据表明,LF 在美属萨摩亚重新出现,这与 GEOFIL 的预测相符。6-7 岁儿童的微丝蚴和抗原血症患病率远低于总体人群。蚊子叮咬率被发现是感染风险的关键决定因素。随着叮咬率的降低,传播热点可能会消失。GEOFIL 突出了当前的知识空白,例如关于蚊子丰度、叮咬率和体内寄生虫动态的数据,这些数据对于提高模型预测的准确性非常重要。

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