Deep learning identifies heterogeneous subpopulations in breast cancer cell lines
Tyler A. Jost,
Andrea L. Gardner,
Daylin Morgan
et al.
Abstract:MotivationCells exhibit a wide array of morphological features, enabling computer vision methods to identify and track relevant parameters. Morphological analysis has long been implemented to identify specific cell types and cell responses. Here we asked whether morphological features might also be used to classify transcriptomic subpopulations withinin vitrocancer cell lines. Identifying cell subpopulations furthers our understanding of morphology as a reflection of underlying cell phenotype and could enable … Show more
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