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Development and validation of a machine learning-based model for varices screening in compensated cirrhosis (CHESS2001): an international multicenter study.

Authors :
Huang Y
Li J
Zheng T
Ji D
Wong YJ
You H
Gu Y
Li M
Zhao L
Li S
Geng S
Yang N
Chen G
Wang Y
Kumar M
Jindal A
Qin W
Chen Z
Xin Y
Jiang Z
Chi X
Cheng J
Zhang M
Liu H
Lu M
Li L
Zhang Y
Pu C
Ma D
He Q
Tang S
Wang C
Liu S
Wang J
Liu Y
Liu C
Liu H
Sarin SK
Xiaolong Qi
Source :
Gastrointestinal endoscopy [Gastrointest Endosc] 2023 Mar; Vol. 97 (3), pp. 435-444.e2. Date of Electronic Publication: 2022 Oct 14.
Publication Year :
2023

Abstract

Background and Aims: The prevalence of high-risk varices (HRV) is low among compensated cirrhotic patients undergoing EGD. Our study aimed to identify a novel machine learning (ML)-based model, named ML EGD, for ruling out HRV and avoiding unnecessary EGDs in patients with compensated cirrhosis.<br />Methods: An international cohort from 17 institutions from China, Singapore, and India were enrolled (CHESS2001). The variables with the top 3 importance scores (liver stiffness, platelet count, and total bilirubin) were selected by the Shapley additive explanation and input into a light gradient-boosting machine algorithm to develop ML EGD for identification of HRV. Furthermore, we built a web-based calculator for ML EGD, which is free with open access (http://www.pan-chess.cn/calculator/MLEGD_score). Unnecessary EGDs that were not performed and the rates of missed HRV were used to assess the efficacy and safety for varices screening.<br />Results: Of 2794 enrolled patients, 1283 patients formed a real-world cohort from 1 university hospital in China used to develop and internally validate the performance of ML EGD for varices screening. They were randomly assigned into the training (n = 1154) and validation (n = 129) cohorts with a ratio of 9:1. In the training cohort, ML EGD spared 607 (52.6%) unnecessary EGDs with a missed HRV rate of 3.6%. In the validation cohort, ML EGD spared 75 (58.1%) EGDs with a missed HRV rate of 1.4%. To externally test the performance of ML EGD, 966 patients from 14 university hospitals in China (test cohort 1) and 545 from 2 hospitals in Singapore and India (test cohort 2) comprised the 2 test cohorts. In test cohort 1, ML EGD spared 506 (52.4%) EGDs with a missed HRV rate of 2.8%. In test cohort 2, ML EGD spared 224 (41.1%) EGDs with a missed HRV rate of 3.1%. When compared with the Baveno VI criteria, ML EGD spared more screening EGDs in all cohorts (training cohort, 52.6% vs 29.4%; validation cohort, 58.1% vs 44.2%; test cohort 1, 52.4% vs 26.5%; test cohort 2, 41.1% vs 21.1%, respectively; P < .001).<br />Conclusions: We identified a novel model based on liver stiffness, platelet count, and total bilirubin, named ML EGD, as a free web-based calculator. ML EGD could efficiently help rule out HRV and avoid unnecessary EGDs in patients with compensated cirrhosis. (Clinical trial registration number: NCT04307264.).<br /> (Copyright © 2023 American Society for Gastrointestinal Endoscopy. Published by Elsevier Inc. All rights reserved.)

Details

Language :
English
ISSN :
1097-6779
Volume :
97
Issue :
3
Database :
MEDLINE
Journal :
Gastrointestinal endoscopy
Publication Type :
Academic Journal
Accession number :
36252870
Full Text :
https://doi.org/10.1016/j.gie.2022.10.018