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"Yi Liu"

Original Article
Predictive machine learning model in intensive care unit patients with acute-on-chronic liver failure and two or more organ failures
Yee Hui Yeo, Mengyi Zhang, Martin S. McCoy, Jian Zu, Yingli He, Yi Liu, Juan Li, Taotao Yan, Yuan Wang, Hirsh D. Trivedi, Ju Dong Yang, Vinay Sundaram, Xiaodan Sun, Zhujun Cao, Chun-Ying Wu, Jonel Trebicka, Fanpu Ji
Clin Mol Hepatol 2025;31(4):1355-1371.
Published online September 1, 2025
DOI: https://doi.org/10.3350/cmh.2025.0573
Background/Aims
Prediction of short-term mortality in patients with acute-on-chronic liver failure (ACLF) admitted to the intensive care unit (ICU) may enhance effective management.
Methods
To develop, explain, and validate a predictive machine learning (ML) model for short-term mortality in patients with ACLF with two or more organ failures (OFs). Utilizing a large ICU cohort with detailed clinical information, we identified ACLF patients with two or more OFs according to the EASL-CLIF and NACSELD definitions. ML model was developed for each definition to predict 30-day mortality. The Shapley value was estimated to explain the models. Validation and calibration of these models were performed.
Results
Of 5,994 patients with cirrhosis admitted to ICU, 1,511 met NACSELD criteria, and 1,692 met EASL-CLIF grade II or higher criteria. The CatBoost ACLF (CBA) model had the greatest accuracy in the NACSELD cohort (area under curve [AUC] of 0.87), while the Random Forest ACLF (RFA) model performed best in the EASL-CLIF cohort (AUC of 0.83). Both models showed robust calibration. The models were explained by SHAP score analysis, yielding a rank list, and the top twelve predictors were selected. Both simplified models demonstrated similar performance (CBA model: AUC 0.89, RFA model: AUC 0.81) and significantly outperformed contemporary scoring systems, including CLIF-C ACLF and MELD 3.0. The models were validated in both internal and external cohorts. A simple-to-use online tool was created to predict mortality rates.
Conclusions
We presented explainable, well-validated, and calibrated predictive models for ACLF patients with two or more OFs, which outperformed existing predictive scores.

Citations

Citations to this article as recorded by  Crossref logo
  • Unbiased clustering of acute-on-chronic liver failure patients using machine learning in a real-world ICU cohort
    Mengyi Zhang, Fanpu Ji, Jian Zu, Yingli He, Tao Chen, Yi Liu, Hirsh D. Trivedi, Ju Dong Yang, Vinay Sundaram, Yuan Wang, Xiaodan Sun, Zhujun Cao, Chun-Ying Wu, Yee Hui Yeo, Rajiv Jalan
    Nature Communications.2026;[Epub]     CrossRef
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