基于可解释性机器学习算法构建针刺干预腰椎间盘突出症预后评估模型OA
Construction of a prognostic assessment model of acupuncture intervention for lumbar disc herniation based on interpretable machine learning algorithms
目的:构建并验证针刺干预腰椎间盘突出症(LDH)的预后评估模型,分析影响针刺疗效的关键因素,为临床个体化治疗方案提供决策支持.方法:回顾性分析478 例LDH患者临床资料,采用最小绝对收缩与选择算子(LASSO)回归筛选预测变量,构建决策树、随机森林、极端梯度提升、支持向量机、多层感知机、Logistic回归、轻量级梯度提升机及 K 近邻 8 种机器学习预测模型.通过五折交叉验证评估各模型性能,采用 SHapley 加性特征解释方法(SHAP)分析模型可解释性,并开发基于 Shiny 的在线交互式应用.结果:LASSO 回归筛选出15 个预测变量;支持向量机模型在五折交叉验证中表现最优,平均受试者工作特征曲线下面积(ROC AUC)为0.862,平均 Brier 评分为 0.157;决策曲线分析显示该模型具有良好临床应用价值.SHAP 分析显示:针刺联合浮针、温针灸、电针及每日针刺 1 次与预后良好相关;体质量指数(BMI)值越高、从事重体力工作、应用糖皮质激素和高渗脱水药及不同节段椎间盘突出、椎管狭窄与预后不良相关.结论:基于可解释性机器学习算法的针刺干预 LDH 预后评估模型预测性能良好,可为临床个体化治疗方案选择提供依据,但后续仍需更多外部验证加以优化.
Objective To construct and validate a prognostic assessment model of acupuncture intervention for lumbar disc herniation(LDH),and analyze the key factors of acupuncture efficacy,so as to provide the decision support for clinical individualized treatment.Methods Clinical data of 478 LDH patients were retrospectively analyzed.The least absolute shrinkage and selection operator(LASSO)regression was used to select predictive variables,and 8 machine learning prediction models were constructed,including decision tree,random forest,extreme gradient boosting,support vector machine,multilayer perceptron,logistic regression,light gradient boosting machine,and K-nearest neighbor.The performance of each model was evaluated through five-fold cross-validation.SHapley additive exPlanations(SHAP)method was employed to analyze model interpretability,and an online interactive application based on Shiny was developed.Results LASSO regression selected 15 predictive variables;the support vector machine performed the best in five-fold cross-validation,with an average area under the receiver operating characteristic curve(AUC)of 0.862 and an average Brier score of 0.157.Decision curve analysis indicated a good clinical application value for this model.SHAP analysis showed that the combined therapies of acupuncture with Fu's acupuncture,warm needling,electroacupuncture and acupuncture delivered once daily were associated with favorable prognosis;and the higher body mass indexes(BMI),engagement in heavy physical labor,and the use of glucocorticoids and hyperosmotic dehydration agents,as well as the disc herniation of different segments and spinal canal stenosis were associated with unfavorable prognosis.Conclusion The interpretable machine learning-based prognostic assessment model of acupuncture intervention for LDH demonstrates a good predictive performance,providing evidence for clinical individualized treatment.However,more external validations are required for its optimization.
王喆;宁乙锞;崔华峰;刘兴雨;丁瑞欣;姜国梁;盛春月;韩晶
山东中医药大学针灸推拿学院,济南 250355山东中医药大学针灸推拿学院,济南 250355山东中医药大学附属医院针灸科,济南 250013山东中医药大学针灸推拿学院,济南 250355山东中医药大学护理学院,济南 250355山东中医药大学针灸推拿学院,济南 250355德州市妇幼保健院中医科山东中医药大学附属医院针灸科,济南 250013
腰椎间盘突出症针刺机器学习临床预测模型
lumbar disc herniationacupuncturemachine learningclinical prediction model
《中国针灸》 2026 (5)
678-686,9
山东省中医药疗效机理重点实验室项目:PKL2024C23泰山学者工程专项经费资助项目:tsqn202312376济南市中医针灸临床医学研究中心项目:济科技[2023]1号
评论