MmCMS: mouse models' consensus molecular subtypes of colorectal cancer

MmCMS:小鼠模型中结直肠癌的一致分子亚型

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作者:Raheleh Amirkhah, Kathryn Gilroy, Sudhir B Malla, Tamsin R M Lannagan, Ryan M Byrne, Natalie C Fisher, Shania M Corry, Noha-Ehssan Mohamed, Hojjat Naderi-Meshkin, Megan L Mills, Andrew D Campbell, Rachel A Ridgway, Baharak Ahmaderaghi, Richard Murray, Antoni Berenguer Llergo, Rebeca Sanz-Pamplona, A

Background

Colorectal cancer (CRC) primary tumours are molecularly classified into four consensus molecular subtypes (CMS1-4). Genetically engineered mouse models

Conclusions

When applying human-based transcriptional classifiers to mouse tumour data, a pathway-level classifier, rather than an individual gene-level system, is optimal. Our R package enables researchers to select suitable mouse models of human CRC subtype for their experimental testing.

Methods

Using transcriptional data from established collections of CRC tumours, including human (TCGA cohort; n = 577) and mouse (n = 57 across n = 8 genotypes) tumours with combinations of random forest and nearest template prediction algorithms, alongside gene ontology collections, we comprehensively assess the performance of a suite of new dual-species classifiers.

Results

We developed three approaches: MmCMS-A; a gene-level classifier, MmCMS-B; an ontology-level approach and MmCMS-C; a combined pathway system encompassing multiple biological and histological signalling cascades. Although all options could identify tumours associated with stromal-rich CMS4-like biology, MmCMS-A was unable to accurately classify the biology underpinning epithelial-like subtypes (CMS2/3) in mouse tumours. Conclusions: When applying human-based transcriptional classifiers to mouse tumour data, a pathway-level classifier, rather than an individual gene-level system, is optimal. Our R package enables researchers to select suitable mouse models of human CRC subtype for their experimental testing.

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