Department of Public Health and Primary Care, University of Cambridge, Cambridge, United Kingdom.
Department of Cardiovascular Sciences and NIHR Leicester Biomedical Research Centre, University of Leicester, Leicester, United Kingdom.
PLoS Med. 2021 Jan 14;18(1):e1003498. doi: 10.1371/journal.pmed.1003498. eCollection 2021 Jan.
Polygenic risk scores (PRSs) can stratify populations into cardiovascular disease (CVD) risk groups. We aimed to quantify the potential advantage of adding information on PRSs to conventional risk factors in the primary prevention of CVD.
Using data from UK Biobank on 306,654 individuals without a history of CVD and not on lipid-lowering treatments (mean age [SD]: 56.0 [8.0] years; females: 57%; median follow-up: 8.1 years), we calculated measures of risk discrimination and reclassification upon addition of PRSs to risk factors in a conventional risk prediction model (i.e., age, sex, systolic blood pressure, smoking status, history of diabetes, and total and high-density lipoprotein cholesterol). We then modelled the implications of initiating guideline-recommended statin therapy in a primary care setting using incidence rates from 2.1 million individuals from the Clinical Practice Research Datalink. The C-index, a measure of risk discrimination, was 0.710 (95% CI 0.703-0.717) for a CVD prediction model containing conventional risk predictors alone. Addition of information on PRSs increased the C-index by 0.012 (95% CI 0.009-0.015), and resulted in continuous net reclassification improvements of about 10% and 12% in cases and non-cases, respectively. If a PRS were assessed in the entire UK primary care population aged 40-75 years, assuming that statin therapy would be initiated in accordance with the UK National Institute for Health and Care Excellence guidelines (i.e., for persons with a predicted risk of ≥10% and for those with certain other risk factors, such as diabetes, irrespective of their 10-year predicted risk), then it could help prevent 1 additional CVD event for approximately every 5,750 individuals screened. By contrast, targeted assessment only among people at intermediate (i.e., 5% to <10%) 10-year CVD risk could help prevent 1 additional CVD event for approximately every 340 individuals screened. Such a targeted strategy could help prevent 7% more CVD events than conventional risk prediction alone. Potential gains afforded by assessment of PRSs on top of conventional risk factors would be about 1.5-fold greater than those provided by assessment of C-reactive protein, a plasma biomarker included in some risk prediction guidelines. Potential limitations of this study include its restriction to European ancestry participants and a lack of health economic evaluation.
Our results suggest that addition of PRSs to conventional risk factors can modestly enhance prediction of first-onset CVD and could translate into population health benefits if used at scale.
多基因风险评分(PRSs)可以将人群分层为心血管疾病(CVD)风险组。我们旨在量化在 CVD 的一级预防中,将 PRS 信息添加到传统危险因素中可能带来的优势。
我们使用来自 UK Biobank 的 306654 名无 CVD 病史且未接受降脂治疗的个体(平均年龄[SD]:56.0[8.0]岁;女性:57%;中位随访时间:8.1 年)的数据,我们计算了在传统风险预测模型(即年龄、性别、收缩压、吸烟状况、糖尿病史以及总胆固醇和高密度脂蛋白胆固醇)中添加 PRS 后风险区分和再分类的指标。然后,我们使用来自 210 万人的临床实践研究数据链接的发病率来模拟在初级保健环境中启动指南推荐的他汀类药物治疗的影响。风险区分的 C 指数为 0.710(95%CI 0.703-0.717),包含单独的传统风险预测因子的 CVD 预测模型。添加 PRS 信息后,C 指数增加了 0.012(95%CI 0.009-0.015),并且在病例和非病例中分别导致连续净重新分类改善约 10%和 12%。如果在整个年龄在 40-75 岁的英国初级保健人群中评估 PRS,假设根据英国国家卫生与保健卓越研究所的指南(即,对于预测风险≥10%的人,以及对于那些具有某些其他风险因素的人,如糖尿病,无论其 10 年预测风险如何)启动他汀类药物治疗,那么它可以帮助预防大约每 5750 名筛查者中发生 1 例额外的 CVD 事件。相比之下,仅在具有中等(即 5%至<10%)10 年 CVD 风险的人群中进行靶向评估,大约每 340 名筛查者中就可以预防 1 例额外的 CVD 事件。这种靶向策略可以比单独使用传统风险预测预防更多的 CVD 事件(7%)。与传统危险因素相比,评估 PRS 提供的潜在收益将比评估某些风险预测指南中包含的血浆生物标志物 C 反应蛋白提供的潜在收益高约 1.5 倍。这项研究的潜在局限性包括其仅限于欧洲血统的参与者和缺乏健康经济学评估。
我们的研究结果表明,将 PRS 添加到传统危险因素中可以适度提高首发 CVD 的预测能力,如果大规模应用,可能会带来人群健康效益。