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兽医流行病学中的暴露变量:它们传达给我们的信息是我们所认为的那样吗?

Exposure variables in veterinary epidemiology: are they telling us what we think they are?

作者信息

Ruple Audrey, Sargeant Jan M, O'Connor Annette M, Renter David G

机构信息

Department of Population Health Sciences, VA-MD College of Veterinary Medicine, Virginia Tech, Blacksburg, VA, United States.

Department of Population Medicine, Ontario Veterinary College, University of Guelph, Guelph, ON, Canada.

出版信息

Front Vet Sci. 2024 Jul 30;11:1442308. doi: 10.3389/fvets.2024.1442308. eCollection 2024.

Abstract

This manuscript summarizes a presentation delivered by the first author at the 2024 symposium for the Calvin Schwabe Award for Lifetime Achievement in Veterinary Epidemiology and Preventive Medicine, which was awarded to Dr. Jan Sargeant. Epidemiologic research plays a crucial role in understanding the complex relationships between exposures and health outcomes. However, the accuracy of the conclusions drawn from these investigations relies upon the meticulous selection and measurement of exposure variables. Appropriate exposure variable selection is crucial for understanding disease etiologies, but it is often the case that we are not able to directly measure the exposure variable of interest and use proxy measures to assess exposures instead. Inappropriate use of proxy measures can lead to erroneous conclusions being made about the true exposure of interest. These errors may lead to biased estimates of associations between exposures and outcomes. The consequences of such biases extend beyond research concerns as health decisions can be made based on flawed evidence. Recognizing and mitigating these biases are essential for producing reliable evidence that informs health policies and interventions, ultimately contributing to improved population health outcomes. To address these challenges, researchers must adopt rigorous methodologies for exposure variable selection and validation studies to minimize measurement errors.

摘要

本手稿总结了第一作者在2024年卡尔文·施瓦贝兽医流行病学和预防医学终身成就奖研讨会上的发言,该奖项授予了扬·萨金特博士。流行病学研究在理解暴露因素与健康结果之间的复杂关系方面起着至关重要的作用。然而,从这些调查中得出的结论的准确性取决于对暴露变量的精心选择和测量。合适的暴露变量选择对于理解疾病病因至关重要,但我们常常无法直接测量感兴趣的暴露变量,而是使用替代指标来评估暴露情况。不当使用替代指标可能导致对真正感兴趣的暴露情况得出错误结论。这些错误可能导致对暴露因素与结果之间关联的估计出现偏差。这种偏差的后果不仅限于研究方面,因为健康决策可能基于有缺陷的证据做出。认识并减轻这些偏差对于产生为健康政策和干预措施提供依据的可靠证据至关重要,最终有助于改善人群健康结果。为应对这些挑战,研究人员必须采用严格的方法进行暴露变量选择和验证研究,以尽量减少测量误差。

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