Emerging machine learning approaches to phenotyping cellular motility and morphodynamics.
Hee June ChoiChuangqi WangXiang PanJunbong JangMengzhi CaoJoseph A BrazzoYongho BaeKwonmoo LeePublished in: Physical biology (2021)
Cells respond heterogeneously to molecular and environmental perturbations. Phenotypic heterogeneity, wherein multiple phenotypes coexist in the same conditions, presents challenges when interpreting the observed heterogeneity. Advances in live cell microscopy allow researchers to acquire an unprecedented amount of live cell image data at high spatiotemporal resolutions. Phenotyping cellular dynamics, however, is a nontrivial task and requires machine learning (ML) approaches to discern phenotypic heterogeneity from live cell images. In recent years, ML has proven instrumental in biomedical research, allowing scientists to implement sophisticated computation in which computers learn and effectively perform specific analyses with minimal human instruction or intervention. In this review, we discuss how ML has been recently employed in the study of cell motility and morphodynamics to identify phenotypes from computer vision analysis. We focus on new approaches to extract and learn meaningful spatiotemporal features from complex live cell images for cellular and subcellular phenotyping.
Keyphrases
- single cell
- deep learning
- high throughput
- machine learning
- artificial intelligence
- convolutional neural network
- big data
- optical coherence tomography
- induced apoptosis
- endothelial cells
- biofilm formation
- randomized controlled trial
- single molecule
- oxidative stress
- cell cycle arrest
- high resolution
- staphylococcus aureus
- induced pluripotent stem cells
- electronic health record
- high speed
- stem cells
- human health
- climate change
- bone marrow
- mass spectrometry
- pluripotent stem cells
- candida albicans