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传染病漏报预测因素包括国家准备情况、政治因素和病原体严重程度。

Infectious Disease Underreporting Is Predicted by Country-Level Preparedness, Politics, and Pathogen Severity.

机构信息

Amanda J. Meadows, PhD, is a Data Scientist/Modeler, Metabiota, San Francisco, CA.

Ben Oppenheim, PhD, MA, MSc, is Vice President of Product, Policy, and Partnerships, Metabiota, San Francisco, CA.

出版信息

Health Secur. 2022 Jul-Aug;20(4):331-338. doi: 10.1089/hs.2021.0197. Epub 2022 Aug 4.

Abstract

Underreporting of infectious diseases is a pervasive challenge in public health that has emerged as a central issue in characterizing the dynamics of the COVID-19 pandemic. Infectious diseases are underreported for a range of reasons, including mild or asymptomatic infections, weak public health infrastructure, and government censorship. In this study, we investigated factors associated with cross-country and cross-pathogen variation in reporting. We performed a literature search to collect estimates of empirical reporting rates, calculated as the number of cases reported divided by the estimated number of true cases. This literature search yielded a dataset of reporting rates for 32 pathogens, representing 52 countries. We combined epidemiological and social science theory to identify factors specific to pathogens, country health systems, and politics that could influence empirical reporting rates. We performed generalized linear regression to test the relationship between the pathogen- and country-specific factors that we hypothesized could influence reporting rates, and the reporting rate estimates that we collected in our literature search. Pathogen- and country-specific factors were predictive of reporting rates. Deadlier pathogens and sexually transmitted diseases were more likely to be reported. Country epidemic preparedness was positively associated with reporting completeness, while countries with high levels of media bias in favor of incumbent governments were less likely to report infectious disease cases. Underreporting is a complex phenomenon that is driven by factors specific to pathogens, country health systems, and politics. In this study, we identified specific and measurable components of these broader factors that influence pathogen- and country-specific reporting rates and used model selection techniques to build a model that can guide efforts to diagnose, characterize, and reduce underreporting. Furthermore, this model can characterize uncertainty and correct for bias in reported infectious disease statistics, particularly when outbreak-specific empirical estimates of underreporting are unavailable. More precise estimates can inform control policies and improve the accuracy of infectious disease models.

摘要

传染病漏报是公共卫生领域普遍存在的挑战,也是描述 COVID-19 大流行动态的核心问题。传染病漏报的原因有很多,包括轻度或无症状感染、薄弱的公共卫生基础设施和政府审查。在这项研究中,我们调查了与跨国和跨病原体报告变化相关的因素。我们进行了文献检索,以收集实证报告率的估计值,计算方法为报告的病例数除以估计的真实病例数。这项文献检索产生了一个报告率数据集,涵盖了 32 种病原体,代表了 52 个国家。我们结合了流行病学和社会科学理论,以确定可能影响实证报告率的病原体、国家卫生系统和政治方面的具体因素。我们进行了广义线性回归,以检验我们假设的可能影响报告率的病原体和国家特定因素与我们在文献检索中收集的报告率估计值之间的关系。病原体和国家特定因素与报告率有关。致死性更强的病原体和性传播疾病更有可能被报告。国家疫情防范准备情况与报告完整性呈正相关,而对现任政府有利的媒体偏见水平较高的国家报告传染病病例的可能性较小。漏报是一个复杂的现象,由病原体、国家卫生系统和政治方面的特定因素驱动。在这项研究中,我们确定了这些更广泛因素中影响病原体和国家特定报告率的具体和可衡量的组成部分,并使用模型选择技术构建了一个模型,可以指导诊断、描述和减少漏报的努力。此外,该模型可以描述不确定性并纠正报告传染病统计数据中的偏差,特别是当无法获得特定暴发的漏报经验估计值时。更准确的估计可以为控制政策提供信息,并提高传染病模型的准确性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/86f8/10818036/2a0f77a0d796/hs.2021.0197_figure1.jpg

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