| Literature DB >> 32647253 |
Joyce Y Buikhuisen1,2, Arezo Torang1,2, Jan Paul Medema3,4.
Abstract
Colon cancer inter-tumour heterogeneity is installed on multiple levels, ranging from (epi)genetic driver events to signalling pathway rewiring reflected by differential gene expression patterns. Although the existence of heterogeneity in colon cancer has been recognised for a longer period of time, it is sparingly incorporated as a determining factor in current clinical practice. Here we describe how unsupervised gene expression-based classification efforts, amongst which the consensus molecular subtypes (CMS), can stratify patients in biological subgroups associated with distinct disease outcome and responses to therapy. We will discuss what is needed to extend these subtyping efforts to the clinic and we will argue that preclinical models recapitulate CMS subtypes and can be of vital use to increase our understanding of treatment response and resistance and to discover novel targets for therapy.Entities:
Year: 2020 PMID: 32647253 PMCID: PMC7347540 DOI: 10.1038/s41389-020-00250-6
Source DB: PubMed Journal: Oncogenesis ISSN: 2157-9024 Impact factor: 7.485
Fig. 1Key characteristics of CMS and CRIS subtypes and their inter relatedness.
Defining features of the CMS (top) and CRIS (bottom) subtypes are summarised in the respective tables. The relationship between classification systems is illustrated by the Sankey diagram in the middle. A total of 119 established cell lines (N = 91) and primary cell and organoid cultures (N = 28) could be assigned with high confidence using both classifiers[89,90]. Colours of nodes correspond to the respective CMS and CRIS subtypes in the tables, size of the nodes reflects the number of cultures adhering to that particular subtype. For comparison with patient CMS–CRIS distribution, please refer to the publication of Isella et al.[89].
Fig. 2CMS subtypes in preclinical models.
Top: Pie charts illustrating distribution of CMS subtypes in different preclinical models compared to distribution amongst patients as reported in Guinney et al.[73]. Classifier used for cell lines is the support vector machine classifier developed and trained as described in Linnekamp, van Hooff et al.[91]. Datasets used for cell lines: GSE36133, GSE100478, GSE59857 and GSE68950. Datasets for primary cell lines: GSE100549 and GSE100479 supplemented with additional primary spheroid culture gene expression profiles generated by RNAseq in the laboratory of Prof. Dr. Giorgio Stassi in Palermo (unpublished data). (Primary) cell lines were allocated to a certain CMS class using the following rules: (i) consistent CMS class prediction across all datasets with probability score >0.4. (ii) Consistent CMS class prediction across all datasets with probability score >0.5 in 33% of datasets and >0.35 in all other datasets. (iii) Probability score >0.5 for one consistent CMS class in 66% of the datasets. CMS class prediction in other datasets could differ from majority, but with probability score <0.5. (iv) Probability score cut-off was set to >0.5 if cell line was present in a single dataset. PDX classification and distribution obtained from and implemented according to Prasetyanti et al.[95]. Bottom: Overview of reported CRISPR-edited organoids and genetically engineered mouse models that reflect distinct biology of human adenomas and colon carcinomas. Numbers in between parentheses refer to original publication.
Summary of literature addressing the association of CMS(-like) subtypes with therapy response.
| Therapy composition | Reference | Trial/Cohort | Samples | Stage | Treatment | Main results |
|---|---|---|---|---|---|---|
| Chemotherapy only | Roepman et al.[ | Local cohort | 222 | Stage III | No adjuvant therapy vs. 5-FU-based therapy | Epithelial B-type benefits from chemotherapy, mesenchymal C-type does not. |
| Song et al.[ | NASBP C-07 | 1729 | Stage II and III | Leucovorin and 5-FU ± Oxaliplatin | Addition of oxaliplatin only benefits CMS2(-like) patients | |
| Okita et al.[ | Local cohort | 193 | Metastatic | Irinotecan-based vs. Oxaliplatin-based | CMS4 benefits from irinotecan-based therapy | |
| Allena, Dunnea et al.[ | Local cohort Marisa et al.[ | 156, 479 | Stage II and III | No adjuvant therapy vs. 5-FU-based therapy | Only stage II and III CMS2 and stage III CMS3 benefit from adjuvant chemotherapy | |
| Cetuximab | De Sousa e Meloa, Wanga et al.[ | Khambata-Forda, Garretta et al.[ | 110 | Metastatic | No therapy vs. cetuximab mono therapy | No benefit for cetuximab in KRAS wildtype mesenchymal CCS3/stem-like subtypes, only in CCS1/TA-like epithelial subtypes. |
| Chemo- plus targeted therapy | Mooi et al.[ | AGITG MAX | 237 | Metastatic | Capecitabine vs. Capecitabine + Bevacizumab (± Mitomycin) | Bevacizumab use only benefits CMS2 and possibly CMS3. |
| Smeets et al.[ | ANGIOPREDICT, CAIRO[ | 204, 205 | Metastatic | Fluoropyrimidine-based chemotherapy ± Bevacizumab | CIN-intermediate/high (enriched for CMS2 & CMS4) benefit from bevacizumab, CIN-low (enriched for CMS1 & CMS3) do not. | |
| Trinh et al.[ | CAIRO2[ | 311 | Metastatic | Capecitabine + Oxaliplatin + Bevacizumab ± Cetuximab | Benefit cetuximab only observed in KRAS wildtype epithelial (CMS2 & CMS3) group, not in mesenchymal (CMS4) group. | |
| Stintzing et al.[ | FIRE3 | 315 | Metastatic | FOLFIRI + Bevacizumab | Cetuximab yields more benefit than bevacizumab in CMS4. | |
| Lenz et al.[ | CALGB/SWOG 80405 | 581 | Metastatic | ~75% FOLFOX, ~25% FOLFIRI + Bevacizumab | Bevacizumab yields more benefit than cetuximab in CMS1. Cetuximab yields more benefit than bevacizumab in CMS2. |
Main characteristics of studies are listed, as well as the most notable outcomes. Superscripted numbers refer to original publication.
vs. versus.
aIndicates shared first authorship.