JūratĖ ŠaltytĖ Benth, Fred Espen Benth, Espen Rostrup Nakstad
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引用次数: 0
摘要
在全球从 COVID-19 大流行中恢复过来的同时,传染性疾病的再次爆发仍然是未来公共安全最可能面临的风险。因此,现在正是为卫生部门提供有效工具的时候,以确保他们为未来事件做好行动准备。我们提出了一种直接方法,仅使用受感染个体的数量作为输入,并利用易感-感染-恢复(SIR)模型的动态变化,就能获得可靠的近乎瞬时的传染病时变繁殖数。我们的方法基于一个多变量非线性回归模型,同时评估作为 SIR 模型函数的描述传播率和恢复率的参数。大流行开始后不久,我们的方法就能估算出每天的繁殖数量。它避免了许多额外的变化来源,为监测瞬时繁殖数量提供了通用工具。我们使用挪威 COVID-19 数据作为案例研究,并证明我们的结果与感染人数的变化以及政策干预后的变化点非常吻合。我们估计的繁殖数量波动明显较小,对感染者数量的短时预测更加可信,因此与其他两种用于监测大流行病的流行方法相比,我们的结果明显更有优势。所提出的方法有助于提高对未来传染病大流行的防范能力,因为它可以作为一种简单而强大的工具来监测大流行,提供短期预测,从而为及时采取有针对性的控制措施提供决策支持。
Nearly Instantaneous Time-Varying Reproduction Number for Contagious Diseases-a Direct Approach Based on Nonlinear Regression.
While the world recovers from the COVID-19 pandemic, another outbreak of contagious disease remains the most likely future risk to public safety. Now is therefore the time to equip health authorities with effective tools to ensure they are operationally prepared for future events. We propose a direct approach to obtain reliable nearly instantaneous time-varying reproduction numbers for contagious diseases, using only the number of infected individuals as input and utilising the dynamics of the susceptible-infected-recovered (SIR) model. Our approach is based on a multivariate nonlinear regression model simultaneously assessing parameters describing the transmission and recovery rate as a function of the SIR model. Shortly after start of a pandemic, our approach enables estimation of daily reproduction numbers. It avoids numerous sources of additional variation and provides a generic tool for monitoring the instantaneous reproduction numbers. We use Norwegian COVID-19 data as case study and demonstrate that our results are well aligned with changes in the number of infected individuals and the change points following policy interventions. Our estimated reproduction numbers are notably less volatile, provide more credible short-time predictions for the number of infected individuals, and are thus clearly favorable compared with the results obtained by two other popular approaches used for monitoring a pandemic. The proposed approach contributes to increased preparedness to future pandemics of contagious diseases, as it can be used as a simple yet powerful tool to monitor the pandemics, provide short-term predictions, and thus support decision making regarding timely and targeted control measures.
期刊介绍:
Journal of Computational Biology is the leading peer-reviewed journal in computational biology and bioinformatics, publishing in-depth statistical, mathematical, and computational analysis of methods, as well as their practical impact. Available only online, this is an essential journal for scientists and students who want to keep abreast of developments in bioinformatics.
Journal of Computational Biology coverage includes:
-Genomics
-Mathematical modeling and simulation
-Distributed and parallel biological computing
-Designing biological databases
-Pattern matching and pattern detection
-Linking disparate databases and data
-New tools for computational biology
-Relational and object-oriented database technology for bioinformatics
-Biological expert system design and use
-Reasoning by analogy, hypothesis formation, and testing by machine
-Management of biological databases