FB2026_01 , released March 12, 2026
FB2026_01 , released March 12, 2026
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Citation
Hailstone, M., Waithe, D., Samuels, T.J., Yang, L., Costello, I., Arava, Y., Robertson, E., Parton, R.M., Davis, I. (2020). CytoCensus, mapping cell identity and division in tissues and organs using machine learning.  eLife 9(): e51085.
FlyBase ID
FBrf0245754
Publication Type
Research paper
Abstract
A major challenge in cell and developmental biology is the automated identification and quantitation of cells in complex multilayered tissues. We developed CytoCensus: an easily deployed implementation of supervised machine learning that extends convenient 2D 'point-and-click' user training to 3D detection of cells in challenging datasets with ill-defined cell boundaries. In tests on such datasets, CytoCensus outperforms other freely available image analysis software in accuracy and speed of cell detection. We used CytoCensus to count stem cells and their progeny, and to quantify individual cell divisions from time-lapse movies of explanted Drosophila larval brains, comparing wild-type and mutant phenotypes. We further illustrate the general utility and future potential of CytoCensus by analysing the 3D organisation of multiple cell classes in Zebrafish retinal organoids and cell distributions in mouse embryos. CytoCensus opens the possibility of straightforward and robust automated analysis of developmental phenotypes in complex tissues.
PubMed ID
PubMed Central ID
PMC7237217 (PMC) (EuropePMC)
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Secondary IDs
    Language of Publication
    English
    Additional Languages of Abstract
    Parent Publication
    Publication Type
    Journal
    Abbreviation
    eLife
    Title
    eLife
    ISBN/ISSN
    2050-084X
    Data From Reference
    Genes (4)