Abstract

Cardiomyocytes derived from human iPS cells (hiPSCs) include cells showing SAN- and non-SAN-type spontaneous APs. To examine whether the deep learning technology could identify hiPSC-derived SAN-like cells showing SAN-type-APs by their shape. We acquired phase-contrast images for hiPSC-derived SHOX2/HCN4 double-positive SAN-like and non-SAN-like cells and made a VGG16-based CNN model to classify an input image as SAN-like or non-SAN-like cell, compared to human discriminability. All parameter values such as accuracy, recall, specificity, and precision obtained from the trained CNN model were higher than those of human classification. Deep learning technology could identify hiPSC-derived SAN-like cells with considerable accuracy.

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