采用队列设计的 COVID-19 疫苗有效性研究存在偏差。

IF 3.1 3区 医学 Q1 MEDICINE, GENERAL & INTERNAL
Frontiers in Medicine Pub Date : 2024-10-30 eCollection Date: 2024-01-01 DOI:10.3389/fmed.2024.1474045
Suneth Agampodi, Birkneh Tilahun Tadesse, Sushant Sahastrabuddhe, Jean-Louis Excler, Jerome Han Kim
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引用次数: 0

摘要

有关 COVID-19 疫苗有效性 (VE) 的观察性研究提供了重要的真实世界数据,为全球公共卫生政策提供了信息。这些研究主要利用已有的数据源,在评估不同人群的疫苗效果和制定可持续的疫苗接种策略方面发挥了不可或缺的作用。VE 研究经常采用队列设计。在 COVID-19 大流行期间,疫苗接种活动的快速实施带来了受社会人口差异、公共政策、感知风险、健康促进行为和健康状况影响的不同疫苗接种情况,可能导致偏差,如健康使用者偏差、健康接种者效应、虚弱偏差、易感性差异耗竭偏差和适应症混淆。医疗保健系统不堪重负,数据不准确的风险也随之增加,从而导致结果分类错误。此外,大流行期间使用的大量诊断测试也造成了分类偏差。急于迅速发表文章可能会进一步影响这些偏差或导致其被忽视,从而影响研究结果的有效性。研究中的这些偏差因环境、数据来源和分析方法的不同而有很大差异,在中低收入国家(LMIC),由于数据基础设施不足,这些偏差可能更加明显。解决并减少这些偏差对于准确估计 VE、指导公共卫生策略以及维持公众对疫苗接种项目的信任至关重要。就这些偏差进行透明的沟通并严格改进未来观察性研究的设计至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Biases in COVID-19 vaccine effectiveness studies using cohort design.

Observational studies on COVID-19 vaccine effectiveness (VE) have provided critical real-world data, informing public health policy globally. These studies, primarily using pre-existing data sources, have been indispensable in assessing VE across diverse populations and developing sustainable vaccination strategies. Cohort design is frequently employed in VE research. The rapid implementation of vaccination campaigns during the COVID-19 pandemic introduced differential vaccination influenced by sociodemographic disparities, public policies, perceived risks, health-promoting behaviors, and health status, potentially resulting in biases such as healthy user bias, healthy vaccinee effect, frailty bias, differential depletion of susceptibility bias, and confounding by indication. The overwhelming burden on healthcare systems has escalated the risk of data inaccuracies, leading to outcome misclassifications. Additionally, the extensive array of diagnostic tests used during the pandemic has also contributed to misclassification biases. The urgency to publish quickly may have further influenced these biases or led to their oversight, affecting the validity of the findings. These biases in studies vary considerably depending on the setting, data sources, and analytical methods and are likely more pronounced in low- and middle-income country (LMIC) settings due to inadequate data infrastructure. Addressing and mitigating these biases is essential for accurate VE estimates, guiding public health strategies, and sustaining public trust in vaccination programs. Transparent communication about these biases and rigorous improvement in the design of future observational studies are essential.

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来源期刊
Frontiers in Medicine
Frontiers in Medicine Medicine-General Medicine
CiteScore
5.10
自引率
5.10%
发文量
3710
审稿时长
12 weeks
期刊介绍: Frontiers in Medicine publishes rigorously peer-reviewed research linking basic research to clinical practice and patient care, as well as translating scientific advances into new therapies and diagnostic tools. Led by an outstanding Editorial Board of international experts, this multidisciplinary open-access journal is at the forefront of disseminating and communicating scientific knowledge and impactful discoveries to researchers, academics, clinicians and the public worldwide. In addition to papers that provide a link between basic research and clinical practice, a particular emphasis is given to studies that are directly relevant to patient care. In this spirit, the journal publishes the latest research results and medical knowledge that facilitate the translation of scientific advances into new therapies or diagnostic tools. The full listing of the Specialty Sections represented by Frontiers in Medicine is as listed below. As well as the established medical disciplines, Frontiers in Medicine is launching new sections that together will facilitate - the use of patient-reported outcomes under real world conditions - the exploitation of big data and the use of novel information and communication tools in the assessment of new medicines - the scientific bases for guidelines and decisions from regulatory authorities - access to medicinal products and medical devices worldwide - addressing the grand health challenges around the world
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