BackgroundTranscriptional classification has been used to stratify colorectal cancer (CRC) into molecular subtypes with distinct biological and clinical features. However, it is not clear whether such subtypes represent discrete, mutually exclusive entities or molecular/phenotypic states with potential overlap. Therefore, we focused on the CRC Intrinsic Subtype (CRIS) classifier and evaluated whether assigning multiple CRIS subtypes to the same sample provides additional clinically and biologically relevant information.MethodsA multi-label version of the CRIS classifier (multiCRIS) was applied to newly generated RNA-seq profiles from 606 CRC patient-derived xenografts (PDXs), together with human CRC bulk and single-cell RNA-seq datasets. Biological and clinical associations of single- and multi-label CRIS were compared. Finally, a machine learning-based multi-label CRIS predictor ((MLCRIS)-C-2) was developed for single-sample classification.ResultsSurprisingly, about half of the CRC cases could be significantly assigned to more than one CRIS subtype. Single-cell RNA-seq analysis revealed that multiple CRIS membership can be a consequence of the concomitant presence of cells of different CRIS class or, less frequently, of cells with hybrid phenotype. Multi-label assignments were found to improve prediction of CRC prognosis and response to treatment. Finally, the (MLCRIS)-C-2 classifier was validated for retaining the same biological and clinical associations also in the context of single-sample classification.ConclusionsThese results show that CRIS subtypes retain their biological and clinical features even when concomitantly assigned to the same CRC sample. This approach could be potentially extended to other cancer types and classification systems.

Multi-label transcriptional classification of colorectal cancer reflects tumor cell population heterogeneity / S. Cascianelli, C. Barbera, A.A. Ulla, E. Grassi, B. Lupo, D. Pasini, A. Bertotti, L. Trusolino, E. Medico, C. Isella, M. Masseroli. - In: GENOME MEDICINE. - ISSN 1756-994X. - 15:1(2023), pp. 37.1-37.17. [10.1186/s13073-023-01176-5]

Multi-label transcriptional classification of colorectal cancer reflects tumor cell population heterogeneity

B. Lupo;D. Pasini;M. Masseroli
Ultimo
2023

Abstract

BackgroundTranscriptional classification has been used to stratify colorectal cancer (CRC) into molecular subtypes with distinct biological and clinical features. However, it is not clear whether such subtypes represent discrete, mutually exclusive entities or molecular/phenotypic states with potential overlap. Therefore, we focused on the CRC Intrinsic Subtype (CRIS) classifier and evaluated whether assigning multiple CRIS subtypes to the same sample provides additional clinically and biologically relevant information.MethodsA multi-label version of the CRIS classifier (multiCRIS) was applied to newly generated RNA-seq profiles from 606 CRC patient-derived xenografts (PDXs), together with human CRC bulk and single-cell RNA-seq datasets. Biological and clinical associations of single- and multi-label CRIS were compared. Finally, a machine learning-based multi-label CRIS predictor ((MLCRIS)-C-2) was developed for single-sample classification.ResultsSurprisingly, about half of the CRC cases could be significantly assigned to more than one CRIS subtype. Single-cell RNA-seq analysis revealed that multiple CRIS membership can be a consequence of the concomitant presence of cells of different CRIS class or, less frequently, of cells with hybrid phenotype. Multi-label assignments were found to improve prediction of CRC prognosis and response to treatment. Finally, the (MLCRIS)-C-2 classifier was validated for retaining the same biological and clinical associations also in the context of single-sample classification.ConclusionsThese results show that CRIS subtypes retain their biological and clinical features even when concomitantly assigned to the same CRC sample. This approach could be potentially extended to other cancer types and classification systems.
Colorectal cancer; Computational biology; Molecular subtyping; Tumor heterogeneity
Settore BIO/11 - Biologia Molecolare
Settore MED/06 - Oncologia Medica
   The functional interaction of EGFR and beta-catenin signalling in colorectal cancer: Genetics, mechanisms, and therapeutic potential.
   BEAT
   European Commission
   Horizon 2020 Framework Programme
   724748

   EurOPDX Distributed Infrastructure for Research on patient-derived cancer Xenografts
   EDIReX
   European Commission
   Horizon 2020 Framework Programme
   731105

   Advancing a Precision Medicine Paradigm in metastatic Colorectal Cancer: Systems based patient stratification solutions
   COLOSSUS
   European Commission
   Horizon 2020 Framework Programme
   754923
2023
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/999550
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