Ma Zhimin, Zhu Zhaopeng, Pang Guanlian, Gong Feilong, Gao Jiaxin, Ge Wenjing, Wang Guoqing, Zhu Mingxuan, Gong Linnan, Li Qiao, Ji Chen, Fu Yating, Jin Chen, Ma Hongxia, Ji Yong, Zhu Meng
Department of Epidemiology, International Joint Research Center on Environment and Human Health, Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing, China.
Department of Thoracic Surgery, The Affiliated Wuxi People's Hospital of Nanjing Medical University, Wuxi People's Hospital, Wuxi Medical Center, Nanjing Medical University, Wuxi, China.
Int J Cancer. 2025 Mar 1;156(5):953-963. doi: 10.1002/ijc.35210. Epub 2024 Oct 8.
Incorporating susceptibility genetic variants of risk factors has been reported to enhance the risk prediction of polygenic risk score (PRS). However, it remains unclear whether this approach is effective for lung cancer. Hence, we aimed to construct a meta polygenic risk score (metaPRS) of lung cancer and assess its prediction of lung cancer risk and implication for risk stratification. Here, a total of 2180 genetic variants were used to develop nine PRSs for lung cancer, three PRSs for different histopathologic subtypes, and 17 PRSs for lung cancer-related risk factors, respectively. These PRSs were then integrated into a metaPRS for lung cancer using the elastic-net Cox regression model in the UK Biobank (N = 442,508). Furthermore, the predictive effects of the metaPRS were assessed in the prostate, lung, colorectal, and ovarian (PLCO) cancer screening trial (N = 108,665). The metaPRS was associated with lung cancer risk with a hazard ratio of 1.33 (95% confidence interval: 1.27-1.39) per standard deviation increased. The metaPRS showed the highest C-index (0.580) compared with the previous nine PRSs (C-index: 0.513-0.564) in PLCO. Besides, smokers in the intermediate risk group predicted by the clinical risk model (1.34%-1.51%) with the intermediate-high genetic risk had a 6-year average absolute lung cancer risk that exceeded the clinical risk model threshold (≥1.51%). The addition of metaPRS to the clinical risk model showed continuous net reclassification improvement (continuous NRI = 6.50%) in PLCO. These findings suggest the metaPRS can improve the predictive efficiency of lung cancer compared with the previous PRSs and refine risk stratification for lung cancer.
据报道,纳入风险因素的易感性基因变异可提高多基因风险评分(PRS)对疾病风险的预测能力。然而,这种方法对肺癌是否有效仍不清楚。因此,我们旨在构建一个肺癌的元多基因风险评分(metaPRS),并评估其对肺癌风险的预测以及对风险分层的意义。在此,共使用2180个基因变异分别开发了9个肺癌PRS、3个不同组织病理学亚型的PRS以及17个肺癌相关风险因素的PRS。然后,在英国生物银行(N = 442,508)中,使用弹性网Cox回归模型将这些PRS整合为一个肺癌metaPRS。此外,在前列腺、肺、结肠和卵巢(PLCO)癌筛查试验(N = 108,665)中评估了metaPRS的预测效果。metaPRS与肺癌风险相关,每增加一个标准差,风险比为1.33(95%置信区间:1.27 - 1.39)。与PLCO中之前的9个PRS(C指数:0.513 - 0.564)相比,metaPRS显示出最高的C指数(0.580)。此外,临床风险模型预测的中风险组(1.34% - 1.51%)中具有中高遗传风险的吸烟者,其6年平均绝对肺癌风险超过了临床风险模型阈值(≥1.51%)。在PLCO中,将metaPRS添加到临床风险模型中显示出持续的净重新分类改善(连续NRI = 6.50%)。这些发现表明,与之前的PRS相比,metaPRS可以提高肺癌的预测效率,并优化肺癌的风险分层。