Electrocardiogram-based diagnosis of liver diseases: an externally validated and explainable machine learning approach
Juan Miguel Lopez Alcaraz, Wilhelm Haverkamp, Nils Strodthoff

TL;DR
This study develops and validates an explainable machine learning model using ECG data to detect liver diseases non-invasively, highlighting key features like QTc interval as potential biomarkers.
Contribution
The paper introduces a robust, interpretable ECG-based machine learning approach for liver disease diagnosis validated across large external datasets.
Findings
High AUROC scores for liver disease detection
Age and QTc interval are key predictive features
Model generalizes well across datasets
Abstract
Background: Liver diseases present a significant global health challenge and often require costly, invasive diagnostics. Electrocardiography (ECG), a widely available and non-invasive tool, can enable the detection of liver disease by capturing cardiovascular-hepatic interactions. Methods: We trained tree-based machine learning models on ECG features to detect liver diseases using two large datasets: MIMIC-IV-ECG (467,729 patients, 2008-2019) and ECG-View II (775,535 patients, 1994-2013). The task was framed as binary classification, with performance evaluated via the area under the receiver operating characteristic curve (AUROC). To improve interpretability, we applied explainability methods to identify key predictive features. Findings: The models showed strong predictive performance with good generalizability. For example, AUROCs for alcoholic liver disease (K70) were 0.8025 (95%…
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Taxonomy
TopicsECG Monitoring and Analysis
