Combined High—Throughput Proteomics and Random Forest Machine-Learning Approach Differentiates and Classifies Metabolic, Immune, Signaling and ECM Intra-Tumor Heterogeneity of Colorectal Cancer
Cristina Contini(University of Cagliari), Tiziana Cabras(University of Cagliari), Giacomo Diaz(University of Cagliari), Luigi Zorcolo(University of Cagliari), Massimo Castagnola(European Brain Research Institute), Barbara Manconi(University of Cagliari), Irene Messana(Istituto di Chimica Biomolecolare), Giulia Guadalupi(Istituto Nazionale di Fisica Nucleare, Sezione di Cagliari), Gavino Faa(University of Cagliari), Alessandra Schirru(University of Cagliari), Alessandra Olianas(University of Cagliari)
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