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A stacking ensemble machine learning model for evaluating cardiac toxicity of drugs based on in silico biomarkers. | LitMetric

AI Article Synopsis

  • - This study focuses on improving the assessment of drug-induced torsades de pointes (TdP) risk, which is crucial for drug development due to potential arrhythmias and sudden cardiac death.
  • - It introduces a stacking ensemble machine learning model that combines various biomarkers and hERG dynamics, achieving high accuracy in predicting risk levels associated with TdP.
  • - The research also looks into the variability among individuals by using data from different human ventricular cell models and identifies critical ion channels that significantly impact TdP risk prediction.

Article Abstract

This study addresses the critical issue of drug-induced torsades de pointes (TdP) risk assessment, a vital aspect of new drug development due to its association with arrhythmia and sudden cardiac death. Existing methodologies, particularly those reliant on a single biomarker derived from CiPA O'Hara-Rudy (CiPAORdv1.0) ventricular cell model without the hERG dynamic as input to the individual machine learning model, have limitations in capturing the complexity inherent in the comprehensive range of factors influencing drug-induced TdP risk. This study aims to overcome these limitations by proposing a stacking ensemble machine learning approach by integrating multiple in silico biomarkers derived from the CiPAORdv1.0 with hERG dynamic characteristics. The ensemble machine learning model consisted of three artificial neural network (ANN) models as baseline model and support vector machine (SVM), logistic regression (LR), random forest (RF), and extreme gradient boosting (XGBoost) models as meta-classifier. The highest AUC score of 1.00 (0.90-1.00) for high risk, 0.97 (0.84-1.00) for intermediate risk, and 1.00 (0.87-1.00) for low risk were obtained using seven biomarkers derived from the CiPAORdv1.0 with hERG dynamic characteristics. Furthering our investigation, we explored the model's robustness by incorporating interindividual variability into the generation of in silico biomarkers from a population of human ventricular cell models. This study also enabled an analysis of TdP risk classification under high clinical exposure and therapeutic scenarios for several drugs. Additionally, from a sensitivity analysis, we revealed four important ion channels, namely, CaL, NaL, Na, and Kr channels that affect significantly the important biomarkers for TdP risk prediction.

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Source
http://dx.doi.org/10.1002/psp4.13229DOI Listing
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11646942PMC

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