Back to Search Start Over

Nuclear instance segmentation and tracking for preimplantation mouse embryos.

Authors :
Nunley, Hayden
Binglun Shao
Denberg, David
Grover, Prateek
Singh, Jaspreet
Avdeeva, Maria
Joyce, Bradley
Kim-Yip, Rebecca
Kohrman, Abraham
Biswas, Abhishek
Watters, Aaron
Gal, Zsombor
Kickuth, Alison
Chalifoux, Madeleine
Shvartsman, Stanislav Y.
Brown, Lisa M.
Posfai, Eszter
Source :
Development (09501991); Nov2024, Vol. 151 Issue 21, p1-18, 18p
Publication Year :
2024

Abstract

For investigations into fate specification and morphogenesis in timelapse images of preimplantation embryos, automated 3D instance segmentation and tracking of nuclei are invaluable. Low signal-tonoise ratio, high voxel anisotropy, high nuclear density, and variable nuclear shapes can limit the performance of segmentation methods, while tracking is complicated by cell divisions, low frame rates, and sample movements. Supervised machine learning approaches can radically improve segmentation accuracy and enable easier tracking, but they often require large amounts of annotated 3D data. Here, we first report a previously unreported mouse line expressing nearinfrared nuclear reporter H2B-miRFP720. We then generate a dataset (termed BlastoSPIM) of 3D images of H2B-miRFP720-expressing embryos with ground truth for nuclear instances. Using BlastoSPIM, we benchmark seven convolutional neural networks and identify Stardist-3D as the most accurate instance segmentation method. With our BlastoSPIM-trained Stardist-3Dmodels, we construct a complete pipeline for nuclear instance segmentation and lineage tracking from the eight-cell stage to the end of preimplantation development (>100 nuclei). Finally, we demonstrate the usefulness of BlastoSPIM as pre-train data for related problems, both for a different imaging modality and for different model systems. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09501991
Volume :
151
Issue :
21
Database :
Complementary Index
Journal :
Development (09501991)
Publication Type :
Academic Journal
Accession number :
181012128
Full Text :
https://doi.org/10.1242/dev.202817