Deep learning based characterization of human organoids using optical coherence tomography.
Bingjie WangRazieh GanjeeIrona KhandakerKeevon FlohrYuanhang HeGuang LiJoshua WesaloJosé-Alain SahelSusana da SilvaShaohua PiPublished in: Biomedical optics express (2024)
Organoids, derived from human induced pluripotent stem cells (hiPSCs), are intricate three-dimensional in vitro structures that mimic many key aspects of the complex morphology and functions of in vivo organs such as the retina and heart. Traditional histological methods, while crucial, often fall short in analyzing these dynamic structures due to their inherently static and destructive nature. In this study, we leveraged the capabilities of optical coherence tomography (OCT) for rapid, non-invasive imaging of both retinal, cerebral, and cardiac organoids. Complementing this, we developed a sophisticated deep learning approach to automatically segment the organoid tissues and their internal structures, such as hollows and chambers. Utilizing this advanced imaging and analysis platform, we quantitatively assessed critical parameters, including size, area, volume, and cardiac beating, offering a comprehensive live characterization and classification of the organoids. These findings provide profound insights into the differentiation and developmental processes of organoids, positioning quantitative OCT imaging as a potentially transformative tool for future organoid research.
Keyphrases
- induced pluripotent stem cells
- optical coherence tomography
- high resolution
- deep learning
- diabetic retinopathy
- optic nerve
- machine learning
- left ventricular
- artificial intelligence
- heart failure
- gene expression
- endothelial cells
- mass spectrometry
- convolutional neural network
- current status
- subarachnoid hemorrhage
- autism spectrum disorder
- sensitive detection