Deep learning identifies heterogeneous subpopulations in breast cancer cell lines

深度学习识别乳腺癌细胞系中的异质亚群

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作者:Tyler A Jost, Andrea L Gardner, Daylin Morgan, Amy Brock

Results

We demonstrate that cell morphology can reflect underlying transcriptomic differences in vitro using convolutional neural networks. First, we find that changes induced by chemotherapy treatment are highly identifiable in a breast cancer cell line. We then show that the intra cell line subpopulations that comprise breast cancer cell lines under standard growth conditions are also identifiable using cell morphology. We find that cell morphology is influenced by neighborhood effects beyond the cell boundary, and that including image information surrounding the cell can improve model discrimination ability.

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