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The RAPIDD Ebola forecasting challenge: Model description and synthetic data generation

机译:RAPIDD埃博拉疫情预测挑战:模型描述和综合数据生成

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The Ebola forecasting challenge organized by the Research and Policy for Infectious Disease Dynamics (RAPIDD) program of the Fogarty International Center relies on synthetic disease datasets generated by numerical simulations of a highly detailed spatially-structured agent-based model. We discuss here the architecture and technical steps of the challenge, leading to datasets that mimic as much as possible the data collection, reporting, and communication process experienced in the 2014–2015 West African Ebola outbreak. We provide a detailed discussion of the model's definition, the epidemiological scenarios’ construction, synthetic patient database generation and the data communication platform used during the challenge. Finally we offer a number of considerations and takeaways concerning the extension and scalability of synthetic challenges to other infectious diseases.
机译:由Fogarty国际中心的传染病动力学研究和政策(RAPIDD)计划组织的埃博拉病毒预测挑战依赖于通过高度详细的基于空间结构的病原体模型的数值模拟而生成的综合疾病数据集。我们在这里讨论挑战的架构和技术步骤,以尽可能模拟2014-2015年西非埃博拉疫情经历的数据收集,报告和沟通过程的数据集。我们将详细讨论该模型的定义,流行病学情景的构建,综合患者数据库的生成以及挑战期间使用的数据通信平台。最后,关于合成挑战对其他传染病的扩展和可扩展性,我们提供了许多考虑和要点。

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