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UTLDR: an agent-based framework for modeling infectious diseases and public interventions

机译:UTLDR:一种基于代理的型号,用于建模传染病和公共干预措施

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摘要

Due to the SARS-CoV-2 pandemic, epidemic modeling is now experiencing a constantly growing interest from researchers of heterogeneous study fields. Indeed, due to such an increased attention, several software libraries and scientific tools have been developed to ease the access to epidemic modeling. However, only a handful of such resources were designed with the aim of providing a simple proxy for the study of the potential effects of public interventions (e.g., lockdown, testing, contact tracing). In this work, we introduce UTLDR, a framework that, overcoming such limitations, allows to generate "what if" epidemic scenarios incorporating several public interventions (and their combinations). UTLDR is designed to be easy to use and capable to leverage information provided by stratified populations of agents (e.g., age, gender, geographical allocation, and mobility patterns horizontal ellipsis ). Moreover, the proposed framework is generic and not tailored for a specific epidemic phenomena: it aims to provide a qualitative support to understanding the effects of restrictions, rather than produce forecasts/explanation of specific data-driven phenomena.
机译:由于SARS-COV-2大流行,流行病模型现在正在经历异构研究领域的研究人员不断增长的兴趣。实际上,由于这种增加的关注,已经开发了几个软件图书馆和科学工具来缓解流行性建模。然而,只有少数这样的这些资源旨在为研究公共干预措施的潜在效果提供简单的代理(例如,锁定,测试,接触跟踪)。在这项工作中,我们介绍了UTLDR,这是一个克服这些限制的框架,允许生成“如果”纳入几种公共干预措施(及其组合)的流行病方案。 UTLDR旨在易于使用,并且能够利用由分层群体提供的信息(例如,年龄,性别,地理分配和流动模式水平省略号)。此外,所提出的框架是通用的,而不是针对特定的流行病现象量身定制:它旨在为了解限制的影响,而不是产生特定数据驱动现象的预测/解释来提供定性支持。

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