首页|期刊导航|浙江大学学报(医学版)|类风湿关节炎患者并发弥漫性实质性肺疾病风险评估模型的构建及验证

类风湿关节炎患者并发弥漫性实质性肺疾病风险评估模型的构建及验证OA

Development and validation of a risk assessment model for interstitial lung disease in patients with rheumatoid arthritis

中文摘要英文摘要

目的:构建和验证华东地区类风湿关节炎(RA)患者并发弥漫性实质性肺疾病(ILD)的风险预测模型.方法:回顾性分析2021年1月1日至2024年6月30日上海中医药大学附属光华医院312例RA患者的临床资料,按是否并发ILD分为单纯RA组和RA-ILD组.收集患者的基本信息、实验室检测指标、临床表现、疾病活动度、药物史、关节X射线检查以及中医证型等作为预测因子,通过单因素分析、LASSO回归筛选变量,采用二元logistic回归构建模型,并通过R语言中的rms程序构建列线图.通过受试者操作特征曲线(ROC)曲线下面积(AUC)及临床决策曲线评估模型的区分度和临床效用,并基于Bootstrap法(1000次重抽样)绘制校准曲线.基于多因素回归筛选出的变量,通过LightGBM机器学习算法构建模型并绘制ROC曲线和准确率-召回率(PR)曲线,并进一步通过五折交叉验证绘制各折ROC曲线,评估模型预测因子的稳健性.结果:多因素logistic回归分析结果显示性别、年龄、抗环瓜氨酸肽抗体(CCP)、基于红细胞沉降率的28个关节疾病活动度评分(DAS28-ESR)、涎液化糖链抗原-6(KL-6)、国际标准化比值(INR)、活化部分凝血活酶时间(APTT)以及使用甲氨蝶呤是RA患者并发ILD的独立预测因子(均P<0.05).ROC曲线AUC为0.976;校准曲线显示预测概率与实际发生率具有高度一致性,乐观校正的斜率接近理想值(0.9973);临床决策曲线显示该模型可提供较高的临床净收益.LightGBM机器学习验证结果显示,模型ROC曲线AUC为0.8464,PR曲线AUC为0.9417;五折交叉验证中ROC曲线AUC均大于0.65.结论:构建的RA患者并发ILD风险预测模型具有较高的预测能力及实用性.

Objective:To develop and validate a risk assessment model for interstitial lung disease(ILD)in patients with rheumatoid arthritis(RA).Methods:A retrospective study analyzed clinical data from 312 patients with RA treated at Guanghua Hospital Affiliated to Shanghai University of Traditional Chinese Medicine between January 1,2021 and June 30,2024.Patients were divided into an RA-only group and an RA-ILD group based on the presence of ILD.Demographic characteristics,laboratory test results,clinical manifestations,disease activity scores,medication history,joint X-ray findings,and traditional Chinese medicine(TCM)syndrome types were collected as potential predictors.Variables were screened using univariable analysis and LASSO regression,and binary logistic regression was used to build the model and construct a nomogram using the rms package in R software.The discrimination and clinical utility of this model were assessed via receiver operating characteristic(ROC)and decision curves,and calibration was evaluated using Bootstrap-resampled(1000 iterations)calibration curves.A LightGBM machine learning model was also developed based on the selected predictors,and its performance was evaluated using ROC and precision-recall(PR)curves.Five-fold cross-validation was employed to further assess the robustness of the predictors.Results:Multivariate logistic regression identified sex,age,anti-cyclic citrullinated peptide(CCP)antibody,disease activity score in 28 joints(DAS28)based on erythrocyte sedimentation rate(ESR),Krebs von den Lungen-6(KL-6),international normalized ratio(INR),activated partial thromboplastin time(APTT),and methotrexate use as independent predictors of RA-ILD(all P<0.05).The model showed excellent discrimination with an area under the curve(AUC)of 0.976.Calibration curves showed strong agreement between predicted and observed probabilities,with an optimism-corrected slope approaching unity(0.9973).Decision curve analysis demonstrated a high net clinical benefit.The LightGBM model yielded an ROC AUC of 0.8464 and a PR AUC of 0.9417.In five-fold cross-validation,all ROC AUC values were greater than 0.65.Conclusion:The developed risk assessment model for ILD in patients with RA indicates high predictive ability and clinical utility.

许修远;梁丹;叶威巍;郭梦如;肖剑伟;汪荣盛;何东仪

上海中医药大学附属光华医院风湿免疫科,上海 200052||上海中医药大学光华临床医学院,上海 201203上海中医药大学附属光华医院风湿免疫科,上海 200052||上海中医药大学光华临床医学院,上海 201203上海市徐汇区大华医院内分泌科,上海 200237上海中医药大学附属光华医院风湿免疫科,上海 200052深圳市福田区风湿病专科医院风湿免疫科,广东 深圳 518000上海中医药大学附属光华医院风湿免疫科,上海 200052上海中医药大学附属光华医院风湿免疫科,上海 200052

医药卫生

类风湿关节炎弥漫性实质性肺疾病风险评估模型列线图机器学习算法

Rheumatoid arthritisInterstitial lung diseaseRisk assessment modelNomogramsMachine learning algorithm

《浙江大学学报(医学版)》 2026 (4)

294-302,9

国家重点研发计划(2024YFC3506203)上海市长宁区科学技术委员会科研课题(CNKW2024Y24)This study was supported by National Key R&D Program of China(2024YFC3506203) and Science and Technology Committee Project of Shanghai Changning District(CNKW2024Y24)

10.3724/zdxbyxb-2025-0507

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