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Artificial Intelligence Supports Automated Characterization of Differentiated Human Pluripotent Stem Cells

Katarzyna Marzec-Schmidt, Nidal Ghosheh, Sören Richard Stahlschmidt, Barbara Küppers-Munther, Jane Synnergren, Benjamin Ulfenborg

2023Stem Cells23 citationsDOIOpen Access PDF

Abstract

Revolutionary advances in AI and deep learning in recent years have resulted in an upsurge of papers exploring applications within the biomedical field. Within stem cell research, promising results have been reported from analyses of microscopy images to, that is, distinguish between pluripotent stem cells and differentiated cell types derived from stem cells. In this work, we investigated the possibility of using a deep learning model to predict the differentiation stage of pluripotent stem cells undergoing differentiation toward hepatocytes, based on morphological features of cell cultures. We were able to achieve close to perfect classification of images from early and late time points during differentiation, and this aligned very well with the experimental validation of cell identity and function. Our results suggest that deep learning models can distinguish between different cell morphologies, and provide alternative means of semi-automated functional characterization of stem cell cultures.

Topics & Concepts

Induced pluripotent stem cellBiologyStem cellCellular differentiationCell biologyCell typeDeep learningEmbryonic stem cellCellComputational biologyArtificial intelligenceComputer scienceGeneticsGeneCell Image Analysis Techniques3D Printing in Biomedical ResearchAdvanced Neural Network Applications
Artificial Intelligence Supports Automated Characterization of Differentiated Human Pluripotent Stem Cells | Litcius