Department of Epidemiology, Harvard T.H. Chan School of Public Health, 677 Huntington Ave, Boston, MA 02115, USA; Division of Rheumatology, Inflammation and Immunity, Department of Medicine, Brigham and Women's Hospital, Harvard Medical School, Boston, MA, USA.
Division of Rheumatology, Inflammation and Immunity, Department of Medicine, Brigham and Women's Hospital, Harvard Medical School, Boston, MA, USA.
Semin Arthritis Rheum. 2021 Oct;51(5):1016-1022. doi: 10.1016/j.semarthrit.2021.07.006. Epub 2021 Jul 10.
We sought to improve seropositive rheumatoid arthritis (RA) risk prediction using a novel weighted genetic risk score (wGRS) and preclinical plasma metabolites associated with RA risk. Predictive performance was compared to previously validated models including RA-associated environmental factors.
This nested case-control study matched incident seropositive RA cases (meeting ACR 1987 or EULAR/ACR 2010 criteria) in the Nurses' Health Studies (NHS) to two controls on age, blood collection features, and post-menopausal hormone use at pre-RA blood draw. Environmental variables were measured at the questionnaire cycle preceding blood draw. Four models were generated and internally validated using a bootstrapped optimism estimate: (a) base with environmental factors (E), (b) environmental, genetic and gene-environment interaction factors (E + G + GEI), c) environmental and metabolic factors (E + M), and d) all factors (E + G + GEI + M). A fifth model including all factors and interaction terms was fit using ridge regression and cross-validation. Models were compared using area under the receiver operating characteristic curve (AUC).
150 pre-RA cases and 455 matched controls were included. The E model yielded an optimism-corrected AUC of 0.622. The E + M model did not show improvement over the E model (corrected AUC 0.620). Including genetic factors increased prediction, producing corrected AUCs of 0.677 in the E + G + GEI model and 0.674 in the E + G + GEI + M model. Similarly, the performance of the cross-validated ridge regression model yielded an AUC of 0.657.
Addition of wGRS and gene-environment interaction improved seropositive RA risk prediction models. Preclinical metabolite levels did not significantly contribute to prediction.
我们旨在通过一种新的加权遗传风险评分(wGRS)和与 RA 风险相关的临床前血浆代谢物来提高血清阳性类风湿关节炎(RA)的风险预测。预测性能与之前验证的模型进行了比较,包括 RA 相关的环境因素。
这项巢式病例对照研究在护士健康研究(NHS)中匹配了符合 ACR 1987 或 EULAR/ACR 2010 标准的血清阳性 RA 病例(在 RA 血液采集前的问卷周期中测量了环境变量。生成了四个模型并使用bootstrap 乐观估计进行内部验证:(a)仅包含环境因素(E)的基础模型,(b)包含环境、遗传和基因-环境相互作用因素(E+G+GEI)的模型,(c)包含环境和代谢因素(E+M)的模型,以及(d)所有因素(E+G+GEI+M)的模型。使用岭回归和交叉验证拟合了包含所有因素和交互项的第五个模型。使用接受者操作特征曲线(ROC)下的面积(AUC)比较模型。
纳入了 150 例 pre-RA 病例和 455 例匹配对照。E 模型的校正 AUC 为 0.622。E+M 模型并未显示出优于 E 模型的预测效果(校正 AUC 为 0.620)。纳入遗传因素可提高预测效果,E+G+GEI 模型的校正 AUC 为 0.677,E+G+GEI+M 模型的校正 AUC 为 0.674。同样,交叉验证岭回归模型的性能产生了 0.657 的 AUC。
加权遗传风险评分和基因-环境相互作用的加入改善了血清阳性 RA 风险预测模型。临床前代谢物水平对预测没有显著贡献。