A deep learning algorithm to translate and classify cardiac electrophysiology.
Parya AghasafariPei-Chi YangDivya C KernikKazuho SakamotoYasunari KandaJunko KurokawaIgor VorobyovColleen E ClancyPublished in: eLife (2021)
The development of induced pluripotent stem cell-derived cardiomyocytes (iPSC-CMs) has been a critical in vitro advance in the study of patient-specific physiology, pathophysiology, and pharmacology. We designed a new deep learning multitask network approach intended to address the low throughput, high variability, and immature phenotype of the iPSC-CM platform. The rationale for combining translation and classification tasks is because the most likely application of the deep learning technology we describe here is to translate iPSC-CMs following application of a perturbation. The deep learning network was trained using simulated action potential (AP) data and applied to classify cells into the drug-free and drugged categories and to predict the impact of electrophysiological perturbation across the continuum of aging from the immature iPSC-CMs to the adult ventricular myocytes. The phase of the AP extremely sensitive to perturbation due to a steep rise of the membrane resistance was found to contain the key information required for successful network multitasking. We also demonstrated successful translation of both experimental and simulated iPSC-CM AP data validating our network by prediction of experimental drug-induced effects on adult cardiomyocyte APs by the latter.
Keyphrases
- deep learning
- drug induced
- liver injury
- artificial intelligence
- convolutional neural network
- machine learning
- induced pluripotent stem cells
- transcription factor
- big data
- high glucose
- electronic health record
- left ventricular
- induced apoptosis
- heart failure
- healthcare
- clinical trial
- working memory
- emergency department
- high throughput
- endothelial cells
- angiotensin ii
- endoplasmic reticulum stress
- cell cycle arrest
- body composition
- single cell
- signaling pathway