Integrative analysis and machine learning based characterization of single circulating tumor cells

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Abstract

We collated publicly available single-cell expression profiles of circulating tumor cells (CTCs) and showed that CTCs across cancers lie on a near-perfect continuum of epithelial to mesenchymal (EMT) transition. Integrative analysis of CTC transcriptomes also highlighted the inverse gene expression pattern between PD-L1 and MHC, which is implicated in cancer immunotherapy. We used the CTCs expression profiles in tandem with publicly available peripheral blood mononuclear cell (PBMC) transcriptomes to train a classifier that accurately recognizes CTCs of diverse phenotype. Further, we used this classifier to validate circulating breast tumor cells captured using a newly developed microfluidic system for label-free enrichment of CTCs.

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Iyer, A., Gupta, K., Sharma, S., Hari, K., Lee, Y. F., Ramalingam, N., … Sengupta, D. (2020). Integrative analysis and machine learning based characterization of single circulating tumor cells. Journal of Clinical Medicine, 9(4). https://doi.org/10.3390/jcm9041206

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