Automated cell lineage reconstruction using label-free 4D microscopy Journal Article


Authors: Waliman, M.; Johnson, R. L.; Natesan, G.; Peinado, N. A.; Tan, S.; Santella, A.; Hong, R. L.; Shah, P. K.
Article Title: Automated cell lineage reconstruction using label-free 4D microscopy
Abstract: Patterns of lineal descent play a critical role in the development of metazoan embryos. In eutelic organisms that generate a fixed number of somatic cells, invariance in the topology of their cell lineage provides a powerful opportunity to interrogate developmental events with empirical repeatability across individuals. Studies of embryonic development using the nematode Caenorhabditis elegans have been drivers of discovery. These studies have depended heavily on high-throughput lineage tracing enabled by 4D fluorescence microscopy and robust computer vision pipelines. For a range of applications, computer-aided yet manual lineage tracing using 4D label-free microscopy remains an essential tool. Deep learning approaches to cell detection and tracking in fluorescence microscopy have advanced significantly in recent years, yet solutions for automating cell detection and tracking in 3D label-free imaging of dense tissues and embryos remain inaccessible. Here, we describe embGAN, a deep learning pipeline that addresses the challenge of automated cell detection and tracking in label-free 3D time-lapse imaging. embGAN requires no manual data annotation for training, learns robust detections that exhibits a high degree of scale invariance, and generalizes well to images acquired in multiple labs on multiple instruments. We characterize embGAN’s performance using lineage tracing in the C. elegans embryo as a benchmark. embGAN achieves near–state-of-the-art performance in cell detection and tracking, enabling high-throughput studies of cell lineage without the need for fluorescent reporters or transgenics. © The Author(s) 2024.
Keywords: controlled study; microscopy; nonhuman; animal cell; animal; cytology; animals; image analysis; embryo; animal experiment; cell fate; embryology; automation; cell lineage; cell transformation; imaging, three-dimensional; fluorescence microscopy; microscopy, fluorescence; development; caenorhabditis elegans; image processing, computer-assisted; image processing; cell cycle phase; cell tracking; transgenics; nematode; procedures; three-dimensional imaging; time lapse imaging; article; deep learning; four-dimensional imaging; three dimensional microscopy
Journal Title: Genetics
Volume: 228
Issue: 2
ISSN: 0016-6731
Publisher: Genetics Society of America  
Date Published: 2024-10-01
Start Page: iyae135
Language: English
DOI: 10.1093/genetics/iyae135
PUBMED: 39139100
PROVIDER: scopus
PMCID: PMC11457935
DOI/URL:
Notes: Article -- Source: Scopus
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