AimsPerturbations of myocardial metabolism and energy depletion are well-established hallmarks of heart failure (HF), yet methods for their systematic assessment remain limited in humans. This study aimed to determine the ability of computational modelling of patient-specific myocardial metabolism to assess individual bioenergetic phenotypes and their clinical implications in HF.Methods and resultsBased on proteomics-derived enzyme quantities in 136 cardiac biopsies, personalized computational models of myocardial metabolism were generated in two independent cohorts of advanced HF patients together with sex- and body mass index-matched non-failing controls. The bioenergetic impact of dynamic changes in substrate availability and myocardial workload were simulated, and the models' ability to predict the myocardial response following left ventricular assist device (LVAD) implantation was assessed. Compared to controls, HF patients had a reduced ATP production capacity (p ConclusionsComputational modelling identified a subset of advanced HF patients with preserved myocardial metabolism despite a similar degree of systolic dysfunction. Substrate preference was associated with the myocardial response after LVAD implantation, which suggests a role for substrate manipulation as a therapeutic approach. Computational assessment of myocardial metabolism in HF may improve understanding of disease heterogeneity, individual risk stratification, and guidance of personalized clinical decision-making in the future.
Journal article
European journal of heart failure
07/2025
Division of Cardiovascular Medicine, Radcliffe Department of Medicine, University of Oxford, Oxford, UK.