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Integrated multiomics analysis and machine learning refine molecular subtypes and prognosis for muscle-invasive urothelial cancer

Authors :
Guangdi Chu
Xiaoyu Ji
Yonghua Wang
Haitao Niu
Source :
Molecular Therapy: Nucleic Acids, Vol 33, Iss , Pp 110-126 (2023)
Publication Year :
2023
Publisher :
Elsevier, 2023.

Abstract

Muscle-invasive urothelial cancer (MUC), characterized by high aggressiveness and significant heterogeneity, is currently lacking highly precise individualized treatment options. We used a computational pipeline to synthesize multiomics data from MUC patients using 10 clustering algorithms, which were then combined with 10 machine learning algorithms to identify molecular subgroups of high resolution and develop a robust consensus machine learning-driven signature (CMLS). Through multiomics clustering, we identified three cancer subtypes (CSs) that are related to prognosis, with CS2 exhibiting the most favorable prognostic outcome. Subsequent screening enabled identification of 12 hub genes that constitute a CMLS with robust predictive power for prognosis. The low-CMLS group exhibited a more favorable prognosis and greater responsiveness to immunotherapy and was more likely to exhibit the “hot tumor” phenotype. The high-CMLS group had a poor prognosis and lower likelihood of benefitting from immunotherapy, but dasatinib and romidepsin may serve as promising treatments for them. Comprehensive analysis of multiomics data can offer important insights and further refine the molecular classification of MUC. Identification of CMLS represents a valuable tool for early prediction of patient prognosis and for screening potential candidates likely to benefit from immunotherapy, with broad implications for clinical practice.

Details

Language :
English
ISSN :
21622531
Volume :
33
Issue :
110-126
Database :
Directory of Open Access Journals
Journal :
Molecular Therapy: Nucleic Acids
Publication Type :
Academic Journal
Accession number :
edsdoj.444649bd844d5191d101e05058d3e1
Document Type :
article
Full Text :
https://doi.org/10.1016/j.omtn.2023.06.001