Cargando…
A novel ground truth dataset enables robust 3D nuclear instance segmentation in early mouse embryos
For investigations into fate specification and cell rearrangements in live images of preimplantation embryos, automated and accurate 3D instance segmentation of nuclei is invaluable; however, the performance of segmentation methods is limited by the images’ low signal-to-noise ratio and high voxel a...
Autores principales: | , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Cold Spring Harbor Laboratory
2023
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10055179/ https://www.ncbi.nlm.nih.gov/pubmed/36993260 http://dx.doi.org/10.1101/2023.03.14.532646 |
_version_ | 1785015834791378944 |
---|---|
author | Nunley, Hayden Shao, Binglun Grover, Prateek Singh, Jaspreet Joyce, Bradley Kim-Yip, Rebecca Kohrman, Abraham Watters, Aaron Gal, Zsombor Kickuth, Alison Chalifoux, Madeleine Shvartsman, Stanislav Posfai, Eszter Brown, Lisa M. |
author_facet | Nunley, Hayden Shao, Binglun Grover, Prateek Singh, Jaspreet Joyce, Bradley Kim-Yip, Rebecca Kohrman, Abraham Watters, Aaron Gal, Zsombor Kickuth, Alison Chalifoux, Madeleine Shvartsman, Stanislav Posfai, Eszter Brown, Lisa M. |
author_sort | Nunley, Hayden |
collection | PubMed |
description | For investigations into fate specification and cell rearrangements in live images of preimplantation embryos, automated and accurate 3D instance segmentation of nuclei is invaluable; however, the performance of segmentation methods is limited by the images’ low signal-to-noise ratio and high voxel anisotropy and the nuclei’s dense packing and variable shapes. Supervised machine learning approaches have the potential to radically improve segmentation accuracy but are hampered by a lack of fully annotated 3D data. In this work, we first establish a novel mouse line expressing near-infrared nuclear reporter H2B-miRFP720. H2B-miRFP720 is the longest wavelength nuclear reporter in mice and can be imaged simultaneously with other reporters with minimal overlap. We then generate a dataset, which we call BlastoSPIM, of 3D microscopy images of H2B-miRFP720-expressing embryos with ground truth for nuclear instance segmentation. Using BlastoSPIM, we benchmark the performance of five convolutional neural networks and identify Stardist-3D as the most accurate instance segmentation method across preimplantation development. Stardist-3D, trained on BlastoSPIM, performs robustly up to the end of preimplantation development (> 100 nuclei) and enables studies of fate patterning in the late blastocyst. We, then, demonstrate BlastoSPIM’s usefulness as pre-train data for related problems. BlastoSPIM and its corresponding Stardist-3D models are available at: blastospim.flatironinstitute.org. |
format | Online Article Text |
id | pubmed-10055179 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2023 |
publisher | Cold Spring Harbor Laboratory |
record_format | MEDLINE/PubMed |
spelling | pubmed-100551792023-03-30 A novel ground truth dataset enables robust 3D nuclear instance segmentation in early mouse embryos Nunley, Hayden Shao, Binglun Grover, Prateek Singh, Jaspreet Joyce, Bradley Kim-Yip, Rebecca Kohrman, Abraham Watters, Aaron Gal, Zsombor Kickuth, Alison Chalifoux, Madeleine Shvartsman, Stanislav Posfai, Eszter Brown, Lisa M. bioRxiv Article For investigations into fate specification and cell rearrangements in live images of preimplantation embryos, automated and accurate 3D instance segmentation of nuclei is invaluable; however, the performance of segmentation methods is limited by the images’ low signal-to-noise ratio and high voxel anisotropy and the nuclei’s dense packing and variable shapes. Supervised machine learning approaches have the potential to radically improve segmentation accuracy but are hampered by a lack of fully annotated 3D data. In this work, we first establish a novel mouse line expressing near-infrared nuclear reporter H2B-miRFP720. H2B-miRFP720 is the longest wavelength nuclear reporter in mice and can be imaged simultaneously with other reporters with minimal overlap. We then generate a dataset, which we call BlastoSPIM, of 3D microscopy images of H2B-miRFP720-expressing embryos with ground truth for nuclear instance segmentation. Using BlastoSPIM, we benchmark the performance of five convolutional neural networks and identify Stardist-3D as the most accurate instance segmentation method across preimplantation development. Stardist-3D, trained on BlastoSPIM, performs robustly up to the end of preimplantation development (> 100 nuclei) and enables studies of fate patterning in the late blastocyst. We, then, demonstrate BlastoSPIM’s usefulness as pre-train data for related problems. BlastoSPIM and its corresponding Stardist-3D models are available at: blastospim.flatironinstitute.org. Cold Spring Harbor Laboratory 2023-03-15 /pmc/articles/PMC10055179/ /pubmed/36993260 http://dx.doi.org/10.1101/2023.03.14.532646 Text en https://creativecommons.org/licenses/by-nd/4.0/This work is licensed under a Creative Commons Attribution-NoDerivatives 4.0 International License (https://creativecommons.org/licenses/by-nd/4.0/) , which allows reusers to copy and distribute the material in any medium or format in unadapted form only, and only so long as attribution is given to the creator. The license allows for commercial use. |
spellingShingle | Article Nunley, Hayden Shao, Binglun Grover, Prateek Singh, Jaspreet Joyce, Bradley Kim-Yip, Rebecca Kohrman, Abraham Watters, Aaron Gal, Zsombor Kickuth, Alison Chalifoux, Madeleine Shvartsman, Stanislav Posfai, Eszter Brown, Lisa M. A novel ground truth dataset enables robust 3D nuclear instance segmentation in early mouse embryos |
title | A novel ground truth dataset enables robust 3D nuclear instance segmentation in early mouse embryos |
title_full | A novel ground truth dataset enables robust 3D nuclear instance segmentation in early mouse embryos |
title_fullStr | A novel ground truth dataset enables robust 3D nuclear instance segmentation in early mouse embryos |
title_full_unstemmed | A novel ground truth dataset enables robust 3D nuclear instance segmentation in early mouse embryos |
title_short | A novel ground truth dataset enables robust 3D nuclear instance segmentation in early mouse embryos |
title_sort | novel ground truth dataset enables robust 3d nuclear instance segmentation in early mouse embryos |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10055179/ https://www.ncbi.nlm.nih.gov/pubmed/36993260 http://dx.doi.org/10.1101/2023.03.14.532646 |
work_keys_str_mv | AT nunleyhayden anovelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT shaobinglun anovelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT groverprateek anovelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT singhjaspreet anovelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT joycebradley anovelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT kimyiprebecca anovelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT kohrmanabraham anovelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT wattersaaron anovelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT galzsombor anovelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT kickuthalison anovelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT chalifouxmadeleine anovelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT shvartsmanstanislav anovelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT posfaieszter anovelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT brownlisam anovelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT nunleyhayden novelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT shaobinglun novelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT groverprateek novelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT singhjaspreet novelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT joycebradley novelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT kimyiprebecca novelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT kohrmanabraham novelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT wattersaaron novelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT galzsombor novelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT kickuthalison novelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT chalifouxmadeleine novelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT shvartsmanstanislav novelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT posfaieszter novelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos AT brownlisam novelgroundtruthdatasetenablesrobust3dnuclearinstancesegmentationinearlymouseembryos |