转型中的流行病学方法:最小化经典方法和数字方法的偏差。

PLOS digital health Pub Date : 2025-01-13 eCollection Date: 2025-01-01 DOI:10.1371/journal.pdig.0000670
Sara Mesquita, Lília Perfeito, Daniela Paolotti, Joana Gonçalves-Sá
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引用次数: 0

摘要

流行病学和公共卫生越来越依赖于在典型卫生系统内外收集的结构化和非结构化数据,以研究、识别和减轻人群层面的疾病。以传染病为重点,我们回顾了2020年初数字流行病学的状况,以及在2019冠状病毒病大流行之后它在性质和广度上的变化。我们认为,流行病学对临床和公共卫生系统之外产生的数据的逐步使用带来了几个技术挑战,特别是在携带几乎不可能先验纠正的特定偏见方面。从统计学的角度来看,通过澄清关键的方法差异和差距,我们讨论了强调“数据类型”而不是“数据源”的数字流行病学定义如何在操作上更有用。因此,我们简要描述了各种收集方法和来源可能产生的一些偏差,并提出了一些建议,以更好地探索数字流行病学的潜力,特别是如何帮助减少不平等。
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Epidemiological methods in transition: Minimizing biases in classical and digital approaches.

Epidemiology and Public Health have increasingly relied on structured and unstructured data, collected inside and outside of typical health systems, to study, identify, and mitigate diseases at the population level. Focusing on infectious diseases, we review the state of Digital Epidemiology at the beginning of 2020 and how it changed after the COVID-19 pandemic, in both nature and breadth. We argue that Epidemiology's progressive use of data generated outside of clinical and public health systems creates several technical challenges, particularly in carrying specific biases that are almost impossible to correct for a priori. Using a statistical perspective, we discuss how a definition of Digital Epidemiology that emphasizes "data-type" instead of "data-source," may be more operationally useful, by clarifying key methodological differences and gaps. Therefore, we briefly describe some of the possible biases arising from varied collection methods and sources, and offer some recommendations to better explore the potential of Digital Epidemiology, particularly on how to help reduce inequity.

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