Non-invasive maturity assessment of iPSC-CMs based on optical maturity characteristics using interpretable AI
Fabian Scheurer, Alexander Hammer, Mario Schubert, Robert-Patrick Steiner, Oliver Gamm, Kaomei Guan, Frank Sonntag, Hagen Malberg, Martin Schmidt

TL;DR
This study presents a non-invasive, AI-driven method to accurately assess the maturation of iPSC-derived cardiomyocytes using video-based motion analysis, enhancing reproducibility and reducing sample damage.
Contribution
The paper introduces an interpretable AI approach combining optical motion analysis and support vector machines for non-invasive iPSC-CM maturity classification.
Findings
Achieved 99.5% accuracy in classifying cell maturity
Identified key features like displacement and relaxation time for assessment
Demonstrated potential for improving experimental reproducibility
Abstract
Human induced pluripotent stem cell-derived cardiomyocytes (iPSC-CMs) are an important resource for the identification of new therapeutic targets and cardioprotective drugs. After differentiation iPSC-CMs show an immature, fetal-like phenotype. Cultivation of iPSC-CMs in lipid-supplemented maturation medium (MM) strongly enhances their structural, metabolic and functional phenotype. Nevertheless, assessing iPSC-CM maturation state remains challenging as most methods are time consuming and go in line with cell damage or loss of the sample. To address this issue, we developed a non-invasive approach for automated classification of iPSC-CM maturity through interpretable artificial intelligence (AI)-based analysis of beat characteristics derived from video-based motion analysis. In a prospective study, we evaluated 230 video recordings of early-state, immature iPSC-CMs on day 21 after…
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Taxonomy
MethodsSupport Vector Machine
