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Modeling using clinical examination indicators predicts interstitial lung disease among patients with rheumatoid arthritis

机译:使用临床检查指标进行建模可预测类风湿关节炎患者的间质性肺疾病

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摘要

Interstitial lung disease (ILD) is a severe extra-articular manifestation of rheumatoid arthritis (RA) that is well-defined as a chronic systemic autoimmune disease. A proportion of patients with RA-associated ILD (RA-ILD) develop pulmonary fibrosis (PF), resulting in poor prognosis and increased lifetime risk. We investigated whether routine clinical examination indicators (CEIs) could be used to identify RA patients with high PF risk. A total of 533 patients with established RA were recruited in this study for model building and 32 CEIs were measured for each of them. To identify PF risk, a new artificial neural network (ANN) was built, in which inputs were generated by calculating Euclidean distance of CEIs between patients. Receiver operating characteristic curve analysis indicated that the ANN performed well in predicting the PF risk (Youden index = 0.436) by only incorporating four CEIs including age, eosinophil count, platelet count, and white blood cell count. A set of 218 RA patients with healthy lungs or suffering from ILD and a set of 87 RA patients suffering from PF were used for independent validation. Results showed that the model successfully identified ILD and PF with a true positive rate of 84.9% and 82.8%, respectively. The present study suggests that model integration of multiple routine CEIs contributes to identification of potential PF risk among patients with RA.
机译:间质性肺疾病(ILD)是类风湿关节炎(RA)的严重关节外表现,已明确定义为慢性全身性自身免疫性疾病。一部分RA相关性ILD(RA-ILD)患者发展为肺纤维化(PF),导致预后不良和终生风险增加。我们调查了常规临床检查指标(CEIs)是否可用于识别高PF风险的RA患者。在本研究中,共招募了533名已建立RA的患者用于模型构建,并为每个人测量了32个CEI。为了确定PF风险,建立了一个新的人工神经网络(ANN),其中通过计算患者之间CEI的欧几里得距离来产生输入。受试者工作特征曲线分析表明,ANN仅通过合并四个CEI(包括年龄,嗜酸性粒细胞计数,血小板计数和白细胞计数)在预测PF风险方面表现良好(Youden指数= 0.436)。使用一组218名健康肺部或患有ILD的RA患者和一组87名患有PF的RA患者进行独立验证。结果表明,该模型成功识别了ILD和PF,真实阳性率分别为84.9%和82.8%。本研究表明,多个常规CEI的模型集成有助于识别RA患者中潜在的PF风险。

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