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      • Department of Molecular Biology and Genetics
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      A stemness and EMT based gene expression signature identifies phenotypic plasticity and is a predictive but not prognostic biomarker for breast cancer

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      Author(s)
      Akbar, Muhammad Waqas
      Belder, Nevin
      Demirkol-Canlı, Seçil
      Küçükkaraduman, Barış
      Türk, Can
      Şahin, Özgür
      Güre, Ali Osmay
      Date
      2020
      Source Title
      Journal of Cancer
      Print ISSN
      1837-9664
      Publisher
      Ivyspring International Publisher
      Volume
      11
      Issue
      1
      Pages
      949 - 961
      Language
      English
      Type
      Article
      Item Usage Stats
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      Abstract
      Aims: Molecular heterogeneity of breast cancer results in variation in morphology, metastatic potential and response to therapy. We previously showed that breast cancer cell line sub-groups obtained by a clustering approach using highly variable genes overlapped almost completely with sub-groups generated by a drug cytotoxicity-profile based approach. Two distinct cell populations thus identified were CSC(cancer stem cell)-like and non-CSC-like. In this study we asked whether an mRNA based gene signature identifying these two cell types would explain variation in stemness, EMT, drug sensitivity, and prognosis in silico and in vitro. Main methods: In silico analyses were performed using publicly available cell line and patient tumor datasets. In vitro analyses of phenotypic plasticity and drug responsiveness were obtained using human breast cancer cell lines. Key findings: We find a novel gene list (CNCL) that can generate both categorical and continuous variables corresponding to the stemness/EMT (epithelial to mesenchymal transition) state of tumors. We are presenting a novel robust gene signature that unites previous observations related either to EMT or stemness in breast cancer. We show in silico, that this signature perfectly predicts behavior of tumor cells tested in vitro, and can reflect tumor plasticity. We thus demonstrate for the first time, that breast cancer subtypes are sensitive to either Lapatinib or Midostaurin. The same gene list is not capable of predicting prognosis in most cohorts, except for one that includes patients receiving neo-adjuvant taxene therapy. Significance: CNCL is a robust gene list that can identify both stemness and the EMT state of cell lines and tumors. It can be used to trace tumor cells during the course of phenotypic changes they undergo, that result in altered responses to therapeutic agents. The fact that such a list cannot be used to identify prognosis in most patient cohorts suggests that presence of factors other than stemness and EMT affect mortality.
      Keywords
      Breast cancer
      Predictive biomarkers
      Tumor plasticity
      Transcriptomics
      Permalink
      http://hdl.handle.net/11693/73185
      Published Version (Please cite this version)
      https://dx.doi.org/10.7150/jca.34649
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