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英国生物银行中自我报告不准确的影响及其与选择性参与的相互作用。

The impact of self-report inaccuracy in the UK Biobank and its interplay with selective participation.

作者信息

Schoeler Tabea, Pingault Jean-Baptiste, Kutalik Zoltán

机构信息

Department of Computational Biology, University of Lausanne, Lausanne, Switzerland.

Department of Clinical, Educational and Health Psychology, University College London, London, UK.

出版信息

Nat Hum Behav. 2025 Mar;9(3):584-594. doi: 10.1038/s41562-024-02061-w. Epub 2024 Dec 18.

Abstract

Although the use of short self-report measures is common practice in biobank initiatives, such a phenotyping strategy is inherently prone to reporting errors. To explore challenges related to self-report errors, we first derived a reporting error score in the UK Biobank (UKBB; n = 73,127), capturing inconsistent self-reporting in time-invariant phenotypes across multiple measurement occasions. We then performed genome-wide scans on the reporting error score, applied downstream analyses (linkage disequilibrium score regression and Mendelian randomization) and compared its properties to the UKBB participation propensity. Finally, we improved phenotype resolution for 24 measures and inspected the changes in genomic findings. We found that reporting error was present across all 33 assessed self-report measures, with repeatability levels as low as 47% (childhood body size). Reporting error was not independent from UKBB participation, evidenced by the negative genetic correlation between the two outcomes (r = -0.77), their shared causes (for example, education) and the loss in self-report accuracy following participation bias correction. Across all analyses, the impact of reporting error ranged from reduced power (for example, for gene discovery) to biased estimates (for example, if present in the exposure variable) and attenuation of genome-wide quantities (for example, 21% relative attenuation in SNP heritability for childhood height). Our findings highlight that both self-report accuracy and selective participation are competing biases and sources of poor reproducibility for biobank-scale research.

摘要

尽管在生物样本库计划中使用简短的自我报告测量方法是常见做法,但这种表型分析策略本身就容易出现报告错误。为了探究与自我报告错误相关的挑战,我们首先在英国生物样本库(UKBB;n = 73127)中得出了一个报告错误分数,该分数反映了在多个测量时点上时不变表型的自我报告不一致情况。然后,我们对报告错误分数进行了全基因组扫描,应用了下游分析(连锁不平衡分数回归和孟德尔随机化),并将其特性与UKBB参与倾向进行了比较。最后,我们提高了24项测量指标的表型分辨率,并检查了基因组研究结果的变化。我们发现,在所有33项评估的自我报告测量指标中都存在报告错误,重复性水平低至47%(儿童期身体大小)。报告错误与UKBB参与并非独立,这一点体现在这两个结果之间的负遗传相关性(r = -0.77)、它们的共同成因(例如教育)以及参与偏差校正后自我报告准确性的下降。在所有分析中,报告错误的影响范围从降低效能(例如基因发现方面)到有偏差的估计(例如暴露变量中存在错误时),以及全基因组数量的衰减(例如儿童身高的SNP遗传度相对衰减21%)。我们的研究结果表明,自我报告准确性和选择性参与都是生物样本库规模研究中相互竞争的偏差和可重复性差的根源。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a49b/11936832/3563c8df7651/41562_2024_2061_Fig1_HTML.jpg

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