Chaddock N J M, Crossfield S S R, Pujades-Rodriguez M, Iles M M, Morgan A W
University of Leeds (School of Medicine and Leeds Institute for Data Analytics), Leeds, UK.
Leeds Teaching Hospitals NHS Trust (NIHR Leeds Biomedical Research Centre and NIHR Leeds Medtech and In vitro Diagnostics Co-operative), Leeds, UK.
Sci Rep. 2025 Jan 15;15(1):2083. doi: 10.1038/s41598-025-86260-z.
Routine use of genetic data in healthcare is much-discussed, yet little is known about its performance in epidemiological models including traditional risk factors. Using severe COVID-19 as an exemplar, we explore the integration of polygenic risk scores (PRS) into disease models alongside sociodemographic and clinical variables. PRS were optimized for 23 clinical variables and related traits previously-associated with severe COVID-19 in up to 450,449 UK Biobank participants, and tested in 9,560 individuals diagnosed in the pre-vaccination era. Associations were further adjusted for (i) sociodemographic and (ii) clinical variables. Pathway analyses of PRS were performed to improve biological understanding of disease. In univariate analyses, 17 PRS were associated with increased risk of severe COVID-19 and, of these, four remained associated with COVID-19 outcomes following adjustment for sociodemographic/clinical variables: hypertension PRS (OR = 1.1, 95%CI 1.03-1.18), atrial fibrillation PRS (OR = 1.12, 95%CI 1.03-1.22), peripheral vascular disease PRS (OR = 0.9, 95%CI 0.82-0.99), and Alzheimer's disease PRS (OR = 1.14, 95%CI 1.05-1.25). Pathway analyses revealed enrichment of genetic variants in pathways for cardiac muscle contraction (genes N = 5; beta[SE] = 3.48[0.60]; adjusted-P = 1.86 × 10). These findings underscore the potential for integrating genetic data into epidemiological models and highlight the advantages of utilizing multiple trait PRS rather than a single PRS for a specific outcome of interest.
在医疗保健中常规使用基因数据一直是备受讨论的话题,但对于其在包括传统风险因素在内的流行病学模型中的表现却知之甚少。以重症 COVID-19 为例,我们探索将多基因风险评分(PRS)与社会人口统计学和临床变量一起纳入疾病模型。在多达 450,449 名英国生物银行参与者中,针对 23 个临床变量和先前与重症 COVID-19 相关的性状对 PRS 进行了优化,并在 9,560 名在疫苗接种前时代被诊断的个体中进行了测试。关联进一步针对(i)社会人口统计学和(ii)临床变量进行了调整。对 PRS 进行了通路分析,以增进对疾病的生物学理解。在单变量分析中,17 个 PRS 与重症 COVID-19 风险增加相关,其中,在对社会人口统计学/临床变量进行调整后,有 4 个仍与 COVID-19 结局相关:高血压 PRS(OR = 1.1,95%CI 1.03 - 1.18)、心房颤动 PRS(OR = 1.12,95%CI 1.03 - 1.22)、外周血管疾病 PRS(OR = 0.9,95%CI 0.82 - 0.99)和阿尔茨海默病 PRS(OR = 1.14,95%CI 1.05 - 1.25)。通路分析揭示了心肌收缩通路中基因变异的富集(基因 N = 5;β[SE] = 3.48[0.60];校正 P = 1.86 × 10)。这些发现强调了将基因数据整合到流行病学模型中的潜力,并突出了利用多性状 PRS 而非针对特定感兴趣结局的单一 PRS 的优势。