Combined High—Throughput Proteomics and Random Forest Machine-Learning Approach Differentiates and Classifies Metabolic, Immune, Signaling and ECM Intra-Tumor Heterogeneity of Colorectal Cancer

Author:

Contini Cristina1ORCID,Manconi Barbara2ORCID,Olianas Alessandra2ORCID,Guadalupi Giulia3ORCID,Schirru Alessandra2,Zorcolo Luigi3,Castagnola Massimo4ORCID,Messana Irene5ORCID,Faa Gavino16ORCID,Diaz Giacomo7ORCID,Cabras Tiziana2ORCID

Affiliation:

1. Department of Medical Sciences and Public Health, Statal University of Cagliari, 09042 Monserrato (CA), Italy

2. Department of Life and Environmental Sciences, Statal University of Cagliari, 09042 Monserrato (CA), Italy

3. Department of Surgical Sciences, Statal University of Cagliari, 09042 Monserrato (CA), Italy

4. Laboratorio di Proteomica, Centro Europeo di Ricerca sul Cervello, IRCCS Fondazione Santa Lucia, 00143 Roma, Italy

5. Istituto di Scienze e Tecnologie Chimiche “Giulio Natta”, Consiglio Nazionale delle Ricerche, 00168 Roma, Italy

6. Department of Biology, College of Science and Technology, Temple University, Philadelphia, PA 19122, USA

7. Department of Biomedical Sciences, Statal University of Cagliari, 09042 Monserrato (CA), Italy

Abstract

Colorectal cancer (CRC) is a frequent, worldwide tumor described for its huge complexity, including inter-/intra-heterogeneity and tumor microenvironment (TME) variability. Intra-tumor heterogeneity and its connections with metabolic reprogramming and epithelial–mesenchymal transition (EMT) were investigated with explorative shotgun proteomics complemented by a Random Forest (RF) machine-learning approach. Deep and superficial tumor regions and distant-site non-tumor samples from the same patients (n = 16) were analyzed. Among the 2009 proteins analyzed, 91 proteins, including 23 novel potential CRC hallmarks, showed significant quantitative changes. In addition, a 98.4% accurate classification of the three analyzed tissues was obtained by RF using a set of 21 proteins. Subunit E1 of 2-oxoglutarate dehydrogenase (OGDH-E1) was the best classifying factor for the superficial tumor region, while sorting nexin-18 and coatomer-beta protein (beta-COP), implicated in protein trafficking, classified the deep region. Down- and up-regulations of metabolic checkpoints involved different proteins in superficial and deep tumors. Analogously to immune checkpoints affecting the TME, cytoskeleton and extracellular matrix (ECM) dynamics were crucial for EMT. Galectin-3, basigin, S100A9, and fibronectin involved in TME–CRC–ECM crosstalk were found to be differently variated in both tumor regions. Different metabolic strategies appeared to be adopted by the two CRC regions to uncouple the Krebs cycle and cytosolic glucose metabolism, promote lipogenesis, promote amino acid synthesis, down-regulate bioenergetics in mitochondria, and up-regulate oxidative stress. Finally, correlations with the Dukes stage and budding supported the finding of novel potential CRC hallmarks and therapeutic targets.

Funder

REGIONE SARDEGNA

Publisher

MDPI AG

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