Development of a miRNA-based classifier for detection of colorectal cancer molecular subtypes
Publication year
2022Source
Molecular Oncology, 16, 14, (2022), pp. 2693-2709ISSN
Publication type
Article / Letter to editor
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Organization
Medical Oncology
Pathology
Journal title
Molecular Oncology
Volume
vol. 16
Issue
iss. 14
Page start
p. 2693
Page end
p. 2709
Subject
Radboudumc 14: Tumours of the digestive tract RIHS: Radboud Institute for Health Sciences; Radboudumc 9: Rare cancers RIHS: Radboud Institute for Health Sciences; Pathology - Radboud University Medical CenterAbstract
Previously, colorectal cancer (CRC) has been classified into four distinct molecular subtypes based on transcriptome data. These consensus molecular subtypes (CMSs) have implications for our understanding of tumor heterogeneity and the prognosis of patients. So far, this classification has been based on the use of messenger RNAs (mRNAs), although microRNAs (miRNAs) have also been shown to play a role in tumor heterogeneity and biological differences between CMSs. In contrast to mRNAs, miRNAs have a smaller size and increased stability, facilitating their detection. Therefore, we built a miRNA-based CMS classifier by converting the existing mRNA-based CMS classification using machine learning (training dataset of n = 271). The performance of this miRNA-assigned CMS classifier (CMS-miRaCl) was evaluated in several datasets, achieving an overall accuracy of ~ 0.72 (0.6329-0.7987) in the largest dataset (n = 158). To gain insight into the biological relevance of CMS-miRaCl, we evaluated the most important features in the classifier. We found that miRNAs previously reported to be relevant in microsatellite-instable CRCs or Wnt signaling were important features for CMS-miRaCl. Following further studies to validate its robustness, this miRNA-based alternative might simplify the implementation of CMS classification in clinical workflows.
This item appears in the following Collection(s)
- Academic publications [246764]
- Electronic publications [134215]
- Faculty of Medical Sciences [93461]
- Open Access publications [107738]
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