Steven Riley's discussion contribution to papers in Session 3 of the Royal Statistical Society's Special Topic Meeting on COVID-19 transmission: 11 June 2021

IF 1.5 3区 数学 Q2 SOCIAL SCIENCES, MATHEMATICAL METHODS
Steven Riley
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引用次数: 0

Abstract

I congratulate Pellis and colleagues, and Dunbar and Held on their excellent papers describing a variety of mechanistic models of SARS-Cov-2 transmission, and more generally on their work to support policy formulation during the COVID-19 pandemic. Both papers address the difficulties of predicting and then evaluating the impact if non-pharmaceutical interventions (NPIs) against the transmission of severe respiratory pathogens. These are likely to remain key ongoing challenges for the analytical science of pandemic preparedness, with high demand from policy makers for accurate estimates of the epidemiological benefits of NPIs. Here, I would like to make one related methodological point.

There may be benefits in making the null hypotheses in mechanistic modelling studies of NPIs more explicit and more general. For example, models usually contain an underlying basic rate of transmissibility per unit time per infected individual, often denoted β $$ \beta $$ . The parameter β $$ \beta $$ is used to calculate the risk of infection per susceptible and is modified by other parameters to reflect differences in infectiousness, susceptibility and mixing (Keeling & Rohani, 2011). For example, when schools are closed, it may be assumed that mixing patterns for children change on that day and that the efficacy of school closures can be estimated by fitting a version of the model to incidence data which includes a free parameter describing the strength of change in mixing. However, this type of calculation is implicitly making the strong assumption that a step change on the day of the intervention is a good explanation for the overall pattern of changing transmissibility at that time, which may not be the case. It may be useful to explicitly represented β $$ \beta $$ as a smooth function of time in an alternative model, as is common practice for similar parameters in other analytical frameworks (Wood, 2017), so that typical measures of parsimony can be used to assess the information contained in specific model fits when strong assumptions are made about the timing of interventions.

Steven Riley在2021年6月11日皇家统计学会2019冠状病毒病传播专题会议第三次会议上对论文的讨论贡献
我祝贺Pellis及其同事、Dunbar和Held撰写的优秀论文,他们描述了SARS-Cov-2传播的各种机制模型,以及他们在COVID-19大流行期间为支持政策制定所做的更广泛的工作。两篇论文都解决了预测和评估非药物干预措施(npi)对严重呼吸道病原体传播的影响的困难。这些可能仍然是大流行病防范分析科学面临的主要挑战,因为决策者对准确估计国家行动方案在流行病学方面的益处有很高的要求。在这里,我想提出一个相关的方法论观点。在npi的机制建模研究中,使零假设更明确和更普遍可能是有益的。例如,模型通常包含每个受感染个体单位时间内潜在的基本传播率,通常表示为β $$ \beta $$。参数β $$ \beta $$用于计算每个易感人群的感染风险,并通过其他参数进行修改以反映感染性、易感性和混合性的差异(Keeling &Rohani, 2011)。例如,当学校关闭时,可以假设儿童的混合模式在当天发生变化,并且可以通过将模型的一个版本拟合到包含描述混合变化强度的自由参数的发生率数据来估计学校关闭的效果。然而,这种类型的计算隐含了一种强烈的假设,即干预当天的阶跃变化可以很好地解释当时变化的传播率的总体模式,事实可能并非如此。在替代模型中将β $$ \beta $$明确表示为时间的平滑函数可能是有用的,这是其他分析框架中类似参数的常见做法(Wood, 2017),因此,当对干预时间做出强有力的假设时,可以使用典型的简约度量来评估特定模型拟合中包含的信息。
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来源期刊
CiteScore
2.90
自引率
5.00%
发文量
136
审稿时长
>12 weeks
期刊介绍: Series A (Statistics in Society) publishes high quality papers that demonstrate how statistical thinking, design and analyses play a vital role in all walks of life and benefit society in general. There is no restriction on subject-matter: any interesting, topical and revelatory applications of statistics are welcome. For example, important applications of statistical and related data science methodology in medicine, business and commerce, industry, economics and finance, education and teaching, physical and biomedical sciences, the environment, the law, government and politics, demography, psychology, sociology and sport all fall within the journal''s remit. The journal is therefore aimed at a wide statistical audience and at professional statisticians in particular. Its emphasis is on well-written and clearly reasoned quantitative approaches to problems in the real world rather than the exposition of technical detail. Thus, although the methodological basis of papers must be sound and adequately explained, methodology per se should not be the main focus of a Series A paper. Of particular interest are papers on topical or contentious statistical issues, papers which give reviews or exposés of current statistical concerns and papers which demonstrate how appropriate statistical thinking has contributed to our understanding of important substantive questions. Historical, professional and biographical contributions are also welcome, as are discussions of methods of data collection and of ethical issues, provided that all such papers have substantial statistical relevance.
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