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提高孤立性雷诺现象系统性硬化症的预后预测:自身抗体和甲襞毛细血管镜的作用。

Improving outcome prediction of systemic sclerosis from isolated Raynaud's phenomenon: role of autoantibodies and nail-fold capillaroscopy.

机构信息

Department of Rheumatology, Istituto Gaetano Pini, Milano, Italy.

出版信息

Rheumatology (Oxford). 2010 Apr;49(4):797-805. doi: 10.1093/rheumatology/kep447. Epub 2010 Jan 25.

Abstract

OBJECTIVE

A simple weighted prognostic algorithm, based on capillaroscopy and autoantibodies, is developed to classify patients at different risk of transition from isolated RP to SSc within 5 years from the screening visit.

METHODS

Two hundred and eighty-eight of 768 patients with isolated RP who underwent capillaroscopy were recruited. The prognostic contributions of capillaroscopic findings (giant loops, haemorrhages and the number of capillaries) and SSc-associated autoantibodies (ACAs, anti-topo I and ANAs) were assessed in a semi-parametric regression models suitable for competing risks. A prognostic index was built by a bagging technique. A structured tree approach was used to extract simple classificatory rules that can be directly interpreted.

RESULTS

Thirty-four transitions from isolated RP to SSc and 42 to other CTDs were observed. All of the chosen variables had a substantial prognostic impact. A complex non-linear prognostic pattern was observed for capillaries, with the risk of developing SSc increasing as the number of loops decreased. The presence of ANAs had a strong impact on prognosis [hazard ratio (HR) = 9.70], which was increased by the presence of ACA (HR = 3.94; P < 0.001). A weighted prognostic classification for the development of SSc was constructed using capillary number, giant loops and ANAs. The prognostic discrimination was satisfactory (Harrell's C-index = 0.86).

CONCLUSION

Our prognostic model is based on easy-to-obtain features (i.e. the number of capillaries, giant loops and ANAs) and could be used to facilitate clinical decision making in the screening phase, and may also have important implications for stratifying patients into risk groups for future clinical assessment.

摘要

目的

开发一种简单的加权预后算法,基于毛细血管镜和自身抗体,用于在筛查就诊后 5 年内将从孤立性硬皮病(RP)向系统性硬皮病(SSc)过渡的患者分为不同风险组。

方法

招募了 768 例孤立性 RP 患者中的 288 例进行毛细血管镜检查。在适合竞争风险的半参数回归模型中评估了毛细血管镜检查结果(巨环、出血和毛细血管数量)和 SSc 相关自身抗体(ACA、抗拓扑异构酶 I 和 ANA)的预后贡献。通过袋装技术构建了预后指数。使用结构化树方法提取可以直接解释的简单分类规则。

结果

观察到 34 例从孤立性 RP 向 SSc 转移,42 例向其他 CTD 转移。所有选择的变量都具有实质性的预后影响。观察到毛细血管具有复杂的非线性预后模式,随着环数的减少,发生 SSc 的风险增加。ANA 的存在对预后有强烈影响[风险比(HR)=9.70],ACA 的存在增加了这种影响(HR=3.94;P<0.001)。使用毛细血管数量、巨环和 ANA 构建了用于 SSc 发展的加权预后分类。预后判别能力令人满意(Harrell's C 指数=0.86)。

结论

我们的预后模型基于易于获得的特征(即毛细血管数量、巨环和 ANA),可用于在筛查阶段辅助临床决策,也可能对将患者分层为未来临床评估的风险组具有重要意义。

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