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Construction and validation of machine learning-based predictive model for colorectal polyp recurrence one year after endoscopic mucosal resection

Yi-Heng Shi, Junliang Liu, Congcong Cheng, Wenling Li, Han Sun, Xi-Liang Zhou, Hong Wei, Sujuan Fei

2025World Journal of Gastroenterology11 citationsDOIOpen Access PDF

Abstract

BACKGROUND: Colorectal polyps are precancerous diseases of colorectal cancer. Early detection and resection of colorectal polyps can effectively reduce the mortality of colorectal cancer. Endoscopic mucosal resection (EMR) is a common polypectomy procedure in clinical practice, but it has a high postoperative recurrence rate. Currently, there is no predictive model for the recurrence of colorectal polyps after EMR. AIM: To construct and validate a machine learning (ML) model for predicting the risk of colorectal polyp recurrence one year after EMR. METHODS: This study retrospectively collected data from 1694 patients at three medical centers in Xuzhou. Additionally, a total of 166 patients were collected to form a prospective validation set. Feature variable screening was conducted using univariate and multivariate logistic regression analyses, and five ML algorithms were used to construct the predictive models. The optimal models were evaluated based on different performance metrics. Decision curve analysis (DCA) and SHapley Additive exPlanation (SHAP) analysis were performed to assess clinical applicability and predictor importance. RESULTS: < 0.05). Among the models, eXtreme Gradient Boosting (XGBoost) demonstrated the highest area under the curve (AUC) in the training set, internal validation set, and prospective validation set, with AUCs of 0.909 (95%CI: 0.89-0.92), 0.921 (95%CI: 0.90-0.94), and 0.963 (95%CI: 0.94-0.99), respectively. DCA indicated favorable clinical utility for the XGBoost model. SHAP analysis identified smoking history, family history, and age as the top three most important predictors in the model. CONCLUSION: The XGBoost model has the best predictive performance and can assist clinicians in providing individualized colonoscopy follow-up recommendations.

Topics & Concepts

MedicineLogistic regressionColonoscopyColorectal cancerInternal medicineColorectal PolypUnivariateProspective cohort studyMultivariate analysisStepwise regressionUnivariate analysisPolypectomyMultivariate statisticsGastroenterologyMachine learningCancerComputer scienceColorectal Cancer Screening and DetectionGastric Cancer Management and OutcomesColorectal Cancer Surgical Treatments
Construction and validation of machine learning-based predictive model for colorectal polyp recurrence one year after endoscopic mucosal resection | Litcius