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. 2024 Mar;56(3):165-171.
doi: 10.1055/a-2174-0534. Epub 2023 Sep 12.

A machine learning-based choledocholithiasis prediction tool to improve ERCP decision making: a proof-of-concept study

Affiliations

A machine learning-based choledocholithiasis prediction tool to improve ERCP decision making: a proof-of-concept study

Steven N Steinway et al. Endoscopy. 2024 Mar.

Abstract

Background: Previous studies demonstrated limited accuracy of existing guidelines for predicting choledocholithiasis, leading to overutilization of endoscopic retrograde cholangiopancreatography (ERCP). More accurate stratification may improve patient selection for ERCP and allow use of lower-risk modalities.

Methods: A machine learning model was developed using patient information from two published cohort studies that evaluated performance of guidelines in predicting choledocholithiasis. Prediction models were developed using the gradient boosting model (GBM) machine learning method. GBM performance was evaluated using 10-fold cross-validation and area under the receiver operating characteristic curve (AUC). Important predictors of choledocholithiasis were identified based on relative importance in the GBM.

Results: 1378 patients (mean age 43.3 years; 61.2% female) were included in the GBM and 59.4% had choledocholithiasis. Eight variables were identified as predictors of choledocholithiasis. The GBM had accuracy of 71.5% (SD 2.5%) (AUC 0.79 [SD 0.06]) and performed better than the 2019 American Society for Gastrointestinal Endoscopy (ASGE) guidelines (accuracy 62.4% [SD 2.6%]; AUC 0.63 [SD 0.03]) and European Society of Gastrointestinal Endoscopy (ESGE) guidelines (accuracy 62.8% [SD 2.6%]; AUC 0.67 [SD 0.02]). The GBM correctly categorized 22% of patients directed to unnecessary ERCP by ASGE guidelines, and appropriately recommended as the next management step 48% of ERCPs incorrectly rejected by ESGE guidelines.

Conclusions: A machine learning-based tool was created, providing real-time, personalized, objective probability of choledocholithiasis and ERCP recommendations. This more accurately directed ERCP use than existing ASGE and ESGE guidelines, and has the potential to reduce morbidity associated with ERCP or missed choledocholithiasis.

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Conflict of interest statement

V. Akshintala is co-founder and chief medical officer of Origin Endoscopy Inc. M. Khashab is an advisory board member and consultant for Boston Scientific, Olympus, and Medtronic. S.N. Steinway, B. Tang, J. Telezing, A. Ashok, A. Kamal, C.Y. Yu, N. Jagtap, J.L. Buxbaum, J. Elmunzer, S.B. Wani, and B.S. Caffo declare that they have no conflict of interest.

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