医学
布里氏评分
逻辑回归
物理疗法
算法
机器学习
随机森林
前瞻性队列研究
递归分区
统计的
沃马克
关节置换术
队列
入射(几何)
物理医学与康复
骨关节炎
外科
内科学
统计
计算机科学
病理
光学
物理
替代医学
数学
作者
Zeping Yan,Mengqi Liu,Xiaoli Wang,Jiurui Wang,Zhiwei Wang,Jian Liu,Shicai Wu,Xiaorong Luan
标识
DOI:10.1016/j.pmn.2023.04.008
摘要
Chronic post-surgical pain (CPSP) is a common but undertreated condition with a high prevalence among patients undergoing total knee arthroplasty (TKA). An effective model for CPSP prediction has not been established yet.To construct and validate machine learning models for the early prediction of CPSP among patients undergoing TKA.A prospective cohort study.A total of 320 patients in the modeling group and 150 patients in the validation group were recruited from two independent hospitals between December 2021 and July 2022. They were followed up for 6 months to determine the outcomes of CPSP through telephone interviews.Four machine learning algorithms were developed through 10-fold cross-validation for five times. In the validation group, the discrimination and calibration of the machine learning algorithms were compared by the logistic regression model. The importance of the variables in the best model identified was ranked.The incidence of CPSP in the modeling group was 25.3%, and that in the validation group was 27.6%. Compared with other models, the random forest model achieved the best performance with the highest C-statistic of 0.897 and the lowest Brier score of 0.119 in the validation group. The top three important factors for predicting CPSP were knee joint function, fear of movement, and pain at rest in the baseline.The random forest model demonstrated good discrimination and calibration capacity for identifying patients undergoing TKA at high risk for CPSP. Clinical nurses would screen out high-risk patients for CPSP by using the risk factors identified in the random forest model, and efficiently distribute preventive strategy.
科研通智能强力驱动
Strongly Powered by AbleSci AI