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Enhancing Maturation and Translatability of Human Pluripotent Stem Cell-Derived Cardiomyocytes through a Novel Medium Containing Acetyl-CoA Carboxylase 2 Inhibitor.

Cláudia CorreiaJonas ChristofferssonSandra TejedorSaïd El-HaouMeztli Matadamas-GuzmanSyam NairPierre DönnesGentian MusaMattias RohmanMonika SundqvistRebecca B RiddleBramasta NugrahaIoritz Sorzabal BellidoMarkus JohanssonQing-Dong WangAlejandro HidalgoKarin JennbackenJane SynnergrenDaniela Später
Published in: Cells (2024)
Human pluripotent stem cell-derived cardiomyocytes (hPSC-CMs) constitute an appealing tool for drug discovery, disease modeling, and cardiotoxicity screening. However, their physiological immaturity, resembling CMs in the late fetal stage, limits their utility. Herein, we have developed a novel, scalable cell culture medium designed to enhance the maturation of hPSC-CMs. This medium facilitates a metabolic shift towards fatty acid utilization and augments mitochondrial function by targeting Acetyl-CoA carboxylase 2 (ACC2) with a specific small molecule inhibitor. Our findings demonstrate that this maturation protocol significantly advances the metabolic, structural, molecular and functional maturity of hPSC-CMs at various stages of differentiation. Furthermore, it enables the creation of cardiac microtissues with superior structural integrity and contractile properties. Notably, hPSC-CMs cultured in this optimized maturation medium display increased accuracy in modeling a hypertrophic cardiac phenotype following acute endothelin-1 induction and show a strong correlation between in vitro and in vivo target engagement in drug screening efforts. This approach holds promise for improving the utility and translatability of hPSC-CMs in cardiac disease modeling and drug discovery.
Keyphrases
  • drug discovery
  • endothelial cells
  • fatty acid
  • small molecule
  • left ventricular
  • high glucose
  • randomized controlled trial
  • skeletal muscle
  • social media
  • emergency department
  • drug induced
  • smooth muscle
  • machine learning