TL;DR
Sarc-Graph is a computational framework that automates segmentation, tracking, and analysis of sarcomeres in hiPSC-derived cardiomyocytes, enabling detailed functional insights with high efficiency and novel network-based metrics.
Contribution
We introduce Sarc-Graph, a novel tool for automated sarcomere analysis that includes innovative network and deformation gradient metrics for hiPSC-CMs.
Findings
High accuracy in sarcomere segmentation and tracking
Efficient performance with minimal parameter tuning
Novel quantitative descriptors of cell function
Abstract
A better fundamental understanding of human induced pluripotent stem cell-derived cardiomyocytes (hiPSC-CMs) has the potential to advance applications ranging from drug discovery to cardiac repair. Automated quantitative analysis of beating hiPSC-CMs is an important and fast developing component of the hiPSC-CM research pipeline. Here we introduce "Sarc-Graph," a computational framework to segment, track, and analyze sarcomeres in fluorescently tagged hiPSC-CMs. Our framework includes functions to segment z-discs and sarcomeres, track z-discs and sarcomeres in beating cells, and perform automated spatiotemporal analysis and data visualization. In addition to reporting good performance for sarcomere segmentation and tracking with little to no parameter tuning and a short runtime, we introduce two novel analysis approaches. First, we construct spatial graphs where z-discs correspond to…
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