机构地区:[1]石河子大学第一附属医院泌尿外科,新疆石河子832000 [2]石河子大学第一附属医院妇产科,新疆石河子832000
出 处:《现代泌尿外科杂志》2025年第3期196-206,共11页Journal of Modern Urology
基 金:2023人才发展专项-兵团英才项目(No.CZ000821)。
摘 要:目的运用K最近邻法(KNN)、支持向量机(SVM)、决策树(DT)及随机森林(RF)构建女性压力性尿失禁(SUI)发病的预测模型,并评估各模型效能,为SUI的早期诊断提供参考。方法回顾性分析2019年10月—2023年10月石河子大学第一附属医院泌尿外科及妇产科治疗的女性SUI患者及同期行健康查体女性的临床资料,将产后42 d女性纳入产后组(n=611),围绝经期与绝经后女性纳入非产后组(n=409)。设置随机种子数并以7∶3的比例分为训练集与验证集。收集所有研究对象的相关临床资料,使用单因素及Lasso回归筛选有意义的变量,将其纳入KNN、SVM、DT及RF算法中并构建模型,分别计算模型的敏感度、特异度、准确度、曲线下面积(AUC)等,筛选出最优的模型。结果产后组SUI患者为352例,占57.6%。根据单因素及Lasso回归,产后组筛选出有意义的变量为:年龄、身体质量指数(BMI)、快肌阶段最大值、孕次、膀胱颈移动度(BND)、尿道旋转角(URA)、会阴侧切、既往尿失禁史及便秘。在产后组验证集中KNN、SVM、DT、RF模型的AUC分别为0.881、0.878、0.750、0.905,RF模型的AUC、准确度、F1指数及Kappa值均最大。非产后组SUI患者为260例,占63.6%。根据单因素及Lasso回归,非产后组筛选出有意义的变量为:年龄、BMI、快肌阶段最大值及恢复时间、慢肌阶段平均值、后静息阶段变异性、阴道分娩、既往尿失禁史及便秘。在非产后组验证集中KNN、SVM、DT、RF模型的AUC分别为0.819、0.805、0.603、0.830,RF模型的AUC、准确度、Kappa值均最大。结论本研究基于机器学习成功建立4种产后42 d女性,围绝经期及绝经后女性SUI发病的预测模型,其中采用RF算法的模型预测效率最佳。Objective To construct prediction models of female stress urinary incontinence(SUI),and evaluate the efficacy of each model,so as to provide reference for the early diagnosis of SUI.Methods Female SUI patients treated in our hospital during Oct.2019 and Oct.2023 and healthy women undergoing physical examination during the same period were involved.Women 42 days after delivery were included in the postpartum group(n=611),and perimenopausal and postmenopausal women were included in the non-postpartum group(n=409).The number of random seeds was set and the participants were divided into the training and verification sets in a ratio of 7∶3.Relevant clinical data were collected,and meaningful variables were screened using single factor and Lasso regression,which were then incorporated into the K-nearest neighbor method(KNN),support vector machine(SVM),decision tree(DT)and random forest(RF)algorithms.The sensitivity,specificity,accuracy and area under the receiver operating characteristic curve(AUC)of the models were calculated to screen out the optimal model.Results There were 352 SUI patients(57.6%)in the postpartum group.According to single factor and Lasso regression,significant variables included age,body mass index(BMI),maximum rapid muscle stage,parity,bladder neck mobility(BND),urethral rotation angle(URA),lateral perineal incision,past incontinence,and constipation.In the verification set,the AUC of KNN,SVM,DT and RF models were 0.881,0.878,0.750 and 0.905,respectively;the AUC,accuracy,F1 index and Kappa value of RF model were the largest.In the non-postpartum group,there were 260 SUI patients,accounting for 63.6%.The significant variables were age,BMI,maximum value and recovery time of fast muscle stage,mean value of slow muscle stage,post-resting stage variability,vaginal delivery,past incontinence,and constipation.In the verification set,the AUC of KNN,SVM,DT and RF models were 0.819,0.805,0.603 and 0.830,respectively;the AUC,accuracy,Kappa value of the RF model were the largest.Conclusion This study succ
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