首页> 外文期刊>Annals of the Rheumatic Diseases: A Journal of Clinical Rheumatology and Connective Tissue Research >A matrix risk model for the prediction of rapid radiographic progression in patients with rheumatoid arthritis receiving different dynamic treatment strategies: post hoc analyses from the BeSt study.
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A matrix risk model for the prediction of rapid radiographic progression in patients with rheumatoid arthritis receiving different dynamic treatment strategies: post hoc analyses from the BeSt study.

机译:用于预测接受不同动态治疗策略的类风湿关节炎患者快速影像学进展的矩阵风险模型:BeSt研究的事后分析。

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OBJECTIVES: To develop a matrix model for the prediction of rapid radiographic progression (RRP) in subpopulations of patients with recent-onset rheumatoid arthritis (RA) receiving different dynamic treatment strategies. METHODS: Data from 465 patients with recent-onset RA randomised to receive initial monotherapy or combination therapy were used. Predictors for RRP (increase in Sharp-van der Heijde score > or =5 after 1 year) were identified by multivariate logistic regression analysis. For subpopulations, the estimated risk of RRP per treatment group and the number needed to treat (NNT) were visualised in a matrix. RESULTS: The presence of autoantibodies, baseline C-reactive protein (CRP) level, erosion score and treatment group were significant independent predictors of RRP in the matrix. Combination therapy was associated with a markedly reduced risk of RRP. The positive and negative predictive values of the matrix were 62% and 91%, respectively. The NNT with initial combination therapy to prevent one patient from RRP with monotherapy was in the range 2-3, 3-7 and 7-25 for patients with a high, intermediate and low predicted risk, respectively. CONCLUSION: The matrix model visualises the risk of RRP for subpopulations of patients with recent-onset RA if treated dynamically with initial monotherapy or combination therapy. Rheumatologists might use the matrix for weighing their initial treatment choice.
机译:目的:建立一种矩阵模型,以预测接受不同动态治疗策略的新近发病的类风湿关节炎(RA)患者亚群的快速放射学进展(RRP)。方法:使用465例近期发作的RA患者的数据,这些患者随机接受初始单药治疗或联合治疗。通过多因素logistic回归分析确定RRP的预测因子(1年后Sharp-van der Heijde评分升高或≥5)。对于亚人群,每个治疗组的RRP估计风险和需要治疗的数量(NNT)在矩阵中可视化。结果:自身抗体的存在,基线C反应蛋白(CRP)水平,侵蚀评分和治疗组是基质中RRP的重要独立预测因子。联合治疗与RRP风险显着降低有关。矩阵的正预测值和负预测值分别为62%和91%。对于具有高,中和低预测风险的患者,采用初始联合疗法以防止一名患者接受单药RRP的NNT分别在2-3、3-7和7-25范围内。结论:如果采用初始单一疗法或联合疗法进行动态治疗,矩阵模型可视化了近期发病的RA患者亚群的RRP风险。风湿病学家可能会使用矩阵来权衡其最初的治疗选择。

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