Publication | Open Access
Automated reconstruction of whole-embryo cell lineages by learning from sparse annotations
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Citations
18
References
2022
Year
EngineeringSparse AnnotationsTime-lapse Microscopy RecordingsEmbryologySingle Cell SequencingCell DivisionMorphogenesisDeep LearningMedical Image ComputingFunctional GenomicsCell BiologyBioinformaticsCell LineageDevelopmental BiologyBioimage AnalysisComputational BiologyMouse DatasetCell Fate DeterminationSystems BiologyMedicineWhole-embryo Cell LineagesCell Detection
We present a method to automatically identify and track nuclei in time-lapse microscopy recordings of entire developing embryos. The method combines deep learning and global optimization. On a mouse dataset, it reconstructs 75.8% of cell lineages spanning 1 h, as compared to 31.8% for the competing method. Our approach improves understanding of where and when cell fate decisions are made in developing embryos, tissues, and organs.
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