根据常规监测数据推断多种病原体、变异、亚型或血清型的时间趋势。

IF 5 2区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Oliver Eales, Saras M Windecker, James M McCaw, Freya M Shearer
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引用次数: 0

摘要

估计传染病活动的时间趋势对于监测疾病传播和干预措施的影响至关重要。为监测这些趋势而常规收集的监测指标往往是多种病原体的组合。例如,“流感样疾病”——作为流感感染的常规监测指标——是一种症状定义,可能由多种病原体引起,包括流感、SARS-CoV-2和RSV的多种亚型。从这种复合时间序列推断的趋势可能不能反映任何一种组成病原体的趋势,每一种病原体都可能表现出不同的动态。尽管许多监测系统例行地检测对监测指标有贡献的个体子集(提供有关组成病原体的相对贡献的信息),但趋势可能被时变的检测率或观察过程中的大量噪声所掩盖。在这里,我们开发了一个一般的统计框架,从常规收集的监测数据推断多种病原体的时间趋势。我们展示了它在三种不同的监测系统中的应用,包括多种病原体(流感、SARS-CoV-2、登革热)、地点(澳大利亚、新加坡、美国、台湾、英国)、场景(季节性流行、非季节性流行、大流行出现)和时间报告决议(每周、每天)。这一方法适用于广泛的病原体和监测系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inferring temporal trends of multiple pathogens, variants, subtypes or serotypes from routine surveillance data.

Estimating the temporal trends in infectious disease activity is crucial for monitoring disease spread and the impact of interventions. Surveillance indicators routinely collected to monitor these trends are often a composite of multiple pathogens. For example, 'influenza-like illness'-routinely monitored as a proxy for influenza infections-is a symptom definition that could be caused by a wide range of pathogens, including multiple subtypes of influenza, SARS-CoV-2, and RSV. Inferred trends from such composite time series may not reflect the trends of any one of the component pathogens, each of which can exhibit distinct dynamics. Although many surveillance systems routinely test a subset of individuals contributing to a surveillance indicator-providing information on the relative contribution of the component pathogens-trends may be obscured by time-varying testing rates or substantial noise in the observation process. Here we develop a general statistical framework for inferring temporal trends of multiple pathogens from routinely collected surveillance data. We demonstrate its application to three different surveillance systems covering multiple pathogens (influenza, SARS-CoV-2, dengue), locations (Australia, Singapore, USA, Taiwan, UK), scenarios (seasonal epidemics, non-seasonal epidemics, pandemic emergence), and temporal reporting resolutions (weekly, daily). This methodology is applicable to a wide range of pathogens and surveillance systems.

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来源期刊
American journal of epidemiology
American journal of epidemiology 医学-公共卫生、环境卫生与职业卫生
CiteScore
7.40
自引率
4.00%
发文量
221
审稿时长
3-6 weeks
期刊介绍: The American Journal of Epidemiology is the oldest and one of the premier epidemiologic journals devoted to the publication of empirical research findings, opinion pieces, and methodological developments in the field of epidemiologic research. It is a peer-reviewed journal aimed at both fellow epidemiologists and those who use epidemiologic data, including public health workers and clinicians.
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