Publication | Open Access
Integrative Analysis and Machine Learning Based Characterization of Single Circulating Tumor Cells
38
Citations
37
References
2020
Year
Ctc TranscriptomesEngineeringMachine LearningImmunologyPathologyIntegrative AnalysisTumor BiologyDiverse PhenotypeTumor HeterogeneitySingle Cell SequencingMolecular DiagnosticsCancer ResearchCtcs Expression ProfilesMedicineBiomarker TargetSingle-cell AnalysisCell BiologyTumor MicroenvironmentCancer GenomicsBreast CancerOncologyCell Detection
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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