Litcius/Paper detail

Fast and accurate prediction of drug induced proarrhythmic risk with sex specific cardiac emulators

Paula Dominguez-Gomez, Alberto Zingaro, Laura Baldo-Canut, Caterina Balzotti, Börje Darpö, Christopher L. Morton, Mariano Vázquez, Jazmín Aguado‐Sierra

2024npj Digital Medicine11 citationsDOIOpen Access PDF

Abstract

In silico trials for drug safety assessment require many high-fidelity 3D cardiac simulations to predict drug-induced QT interval prolongation, which is often computationally prohibitive. To streamline this process, we developed sex-specific emulators for a fast prediction of QT interval, trained on a dataset of 900 simulations. Our results show significant differences between 3D and 0D single-cell models as risk levels increase, underscoring the ability of 3D modeling to capture more complex cardiac responses. The emulators demonstrated an average error of 4% compared to simulations, allowing for efficient global sensitivity analysis and fast replication of in silico clinical trials. This approach enables rapid, multi-dose drug testing on standard hardware, addressing critical industry challenges around trial design, assay variability, and cost-effective safety evaluations. By integrating these emulators into drug development, we can improve preclinical reliability and advance the practical application of digital twins in biomedicine.

Topics & Concepts

Computer scienceIn silicoDrug developmentReliability (semiconductor)DrugReliability engineeringFidelityBiomedicineClinical trialRisk analysis (engineering)MedicineMachine learningBioinformaticsPharmacologyInternal medicineBiologyEngineeringGeneQuantum mechanicsTelecommunicationsPhysicsPower (physics)BiochemistryCardiac electrophysiology and arrhythmiasReceptor Mechanisms and SignalingSemiconductor materials and devices