期刊文献+

Machine learning-guided prevention and management of low anterior resection syndrome:Development of an XGBoost prediction model and validation via SHAP

原文传递
导出
摘要 Objective:Colorectal cancer is among the top three cancers in terms of incidence and mortality worldwide.Although laparoscopic and robotic-assisted sphincter-preserving surgeries reduce permanent colostomy rates to under 20%,60%–80%of patients develop postoperative low anterior resection syndrome(LARS),nearly half of whom progress to major LARS.This study aims to develop a highprecision machine learning model for predicting LARS,thereby optimizing the early identification,prevention,and management of major LARS in rectal cancer patients,providing a reliable tool for personalized clinical decision-making.Methods:This retrospective study screened 3,986 rectal cancer patients who underwent laparoscopic and robotic-assisted sphincter-preserving surgeries from January 2012 to January 2022.Key predictors were identifiedvia LASSO regression to develop an XGBoost machine learning model for major LARS prediction,which was validated via SHapley additive exPlanations(SHAP).Results:The XGBoost model achieved 93%accuracy for major LARS prediction,with 84%precision,74%recall,and an F1 score of 0.78,outperforming POLARS(69%accuracy,82%precision,36%recall,F1 score of 0.5).SHAP analysis confirmedthat tumor height was the strongest predictor,followed by age at surgery,stoma status,preoperative radiotherapy,and gender.The model enabled real-time risk stratification,reducing overtreatment in non-LARS and minor LARS patients in clinical application.The model has been integrated into a user-friendly offlinesoftware(XGBoostLARS)and has been applied to the early clinical identification,prediction,and management of LARS.Conclusion:This high-precision XGBoost model optimizes the early identification,prevention,and management of major LARS,leading to new progress in personalized treatment for rectal cancer survivors.
出处 《Laparoscopic, Endoscopic and Robotic Surgery》 2025年第4期185-190,共6页 腔镜、内镜与机器人外科(英文)
基金 the core team(Zhangfa Song,Xuefeng Huang,Sheng Dai)and technical team(Ruijie Ma,LeiWu,Shichao Zhou)for their contributions.

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部