通过病例日志的停留时间分析和流行病学模型评估早期大流行应对:以2020年初新加坡为例

Q2 Mathematics
Jaya Sreevalsan-Nair, Anuj Mubayi, Janvi Chhabra, Reddy Rani Vangimalla, Pritesh Rajesh Ghogale
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引用次数: 0

摘要

现在已经知道,政府在大流行管理中的早期干预有助于在初始阶段减缓大流行,在此期间可以保持保守的基本复制数。在2020年全球爆发COVID-19期间,有几种方法可以评估这些早期应对策略。作为一种创新,我们通过病人康复后勤的角度来评估他们。在这里,我们在2020年1月22日至4月1日期间的新加坡案例研究中使用了数据驱动的恢复分析方法,这实际上是对政府医疗机构国家传染病中心的住院时间进行分析。我们建议使用数据驱动的方法,包括周期化、统计分析、回归模型和流行病学模型。我们证明,新加坡对繁殖数量的估计显示出不同年龄组和时期的差异,表明在大流行的最初传播阶段早期干预战略取得了成功。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating early pandemic response through length-of-stay analysis of case logs and epidemiological modeling: A case study of Singapore in early 2020
Abstract It is now known that early government interventions in pandemic management helps in slowing down the pandemic in the initial phase, during which a conservative basic reproduction number can be maintained. There have been several ways to evaluate these early response strategies for COVID-19 during its outbreak globally in 2020. As a novelty, we evaluate them through the lens of patient recovery logistics. Here, we use a data-driven approach of recovery analysis in a case study of Singapore during January 22–April 01, 2020, which is effectively the analysis of length-of-stay in the government healthcare facility, National Center for Infectious Diseases. We propose the use of a data-driven method involving periodization, statistical analysis, regression models, and epidemiological models. We demonstrate that the estimates of reproduction number in Singapore shows variation in different age groups and periods, indicating the success of early intervention strategy in the initial transmission stages of the pandemic.
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来源期刊
Computational and Mathematical Biophysics
Computational and Mathematical Biophysics Mathematics-Mathematical Physics
CiteScore
2.50
自引率
0.00%
发文量
8
审稿时长
30 weeks
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