Department of Biostatistics Public Health and Medical Informatics, Sorbonne University, APHP, University Hospitals Pitié-Salpêtrière Charles-Foix, Paris.
University Bretagne-Loire, University of Nantes, University of Tours, Inserm UMR U1246 SPHERE 'Methods in patient-centered outcomes and health research', Nantes.
Rheumatology (Oxford). 2020 Aug 1;59(8):1842-1852. doi: 10.1093/rheumatology/kez542.
In early RA, some patients exhibit rapid radiographic progression (RRP) after one year, associated with poor functional prognosis. Matrices predicting this risk have been proposed, lacking precision or inadequately calibrated. We developed a matrix to predict RRP with high precision and adequate calibration.
Post-hoc analysis by pooling individual data from cohorts (ESPOIR and Leuven cohorts) and clinical trials (ASPIRE, BeSt and SWEFOT trials). Adult DMARD-naïve patients with active early RA for which the first therapeutic strategy after inclusion was to prescribe methotrexate or leflunomide were included. A logistic regression model to predict RRP was built. The best model was selected by 10-fold stratified cross-validation by maximizing the Area Under the Curve. Calibration and discriminatory power of the model were checked. The probabilities of RRP for each combination of levels of baseline characteristics were estimated.
1306 patients were pooled. 20.6% exhibited RRP. Four predictors were retained: rheumatoid factor positivity, presence of at least one RA erosion on X-rays, CRP > 30mg/l, number of swollen joints. The matrix estimates RRP probability for 36 combinations of level of baseline characteristics with a greatly enhanced precision compared with previously published matrices (95% CI: from ± 0.02 minimum to ± 0.08 maximum) and model calibration is excellent (P = 0.79).
A matrix proposing RRP probability with high precision and excellent calibration in early RA was built. Although the matrix has moderate sensitivity and specificity, it is easily usable and may help physicians and patients to make treatment decisions in daily clinical practice.
在早期类风湿关节炎(RA)中,一些患者在一年后出现快速放射学进展(RRP),与不良的功能预后相关。已经提出了预测这种风险的矩阵,但缺乏精度或校准不足。我们开发了一个具有高精度和适当校准的预测 RRP 的矩阵。
通过对队列(ESPOIR 和 Leuven 队列)和临床试验(ASPIRE、BeSt 和 SWEFOT 试验)的个体数据进行汇总进行事后分析。纳入的 DMARD 初治、活动期早期 RA 成年患者,纳入后首先制定的治疗策略是给予甲氨蝶呤或来氟米特。建立了一个预测 RRP 的逻辑回归模型。通过最大化曲线下面积,通过 10 折分层交叉验证选择最佳模型。检查模型的校准和区分能力。估计每个基线特征水平组合的 RRP 概率。
共纳入 1306 例患者。20.6%的患者出现 RRP。保留了 4 个预测因子:类风湿因子阳性、X 射线至少有一处 RA 侵蚀、CRP > 30mg/L、肿胀关节数。该矩阵估计了 36 种基线特征水平组合的 RRP 概率,与之前发表的矩阵相比,精度大大提高(95%CI:从±0.02 最小到±0.08 最大),且模型校准非常好(P = 0.79)。
建立了一个用于早期 RA 的 RRP 概率预测矩阵,具有高精度和良好的校准。虽然该矩阵具有中等的灵敏度和特异性,但易于使用,可能有助于医生和患者在日常临床实践中做出治疗决策。