Genomic biomarker discovery in disease progression and therapy response in bladder cancer utilizing machine learning Journal Article


Authors: Liosis, K. C.; Marouf, A. A.; Rokne, J. G.; Ghosh, S.; Bismar, T. A.; Alhajj, R.
Article Title: Genomic biomarker discovery in disease progression and therapy response in bladder cancer utilizing machine learning
Abstract: Cancer in all its forms of expression is a major cause of death. To identify the genomic reason behind cancer, discovery of biomarkers is needed. In this paper, genomic data of bladder cancer are examined for the purpose of biomarker discovery. Genomic biomarkers are indicators stemming from the study of the genome, either at a very low level based on the genome sequence itself, or more abstractly such as measuring the level of gene expression for different disease groups. The latter method is pivotal for this work, since the available datasets consist of RNA sequencing data, transformed to gene expression levels, as well as data on a multitude of clinical indicators. Based on this, various methods are utilized such as statistical modeling via logistic regression and regularization techniques (elastic-net), clustering, survival analysis through Kaplan–Meier curves, and heatmaps for the experiments leading to biomarker discovery. The experiments have led to the discovery of two gene signatures capable of predicting therapy response and disease progression with considerable accuracy for bladder cancer patients which correlates well with clinical indicators such as Therapy Response and T-Stage at surgery with Disease Progression in a time-to-event manner. © 2023 by the authors.
Keywords: cancer survival; treatment response; unclassified drug; gene sequence; cancer staging; biological marker; gene expression; smoking; information processing; bladder cancer; histology; diet; disease progression; neoadjuvant chemotherapy; bioinformatics; disease exacerbation; therapy response; machine learning; data extraction; human; article; rna sequencing; differential expression analysis; differential gene expression; bioinformatics analysis; elastic-net; genomic biomarker; genomic biomarker discovery
Journal Title: Cancers
Volume: 15
Issue: 19
ISSN: 2072-6694
Publisher: MDPI  
Date Published: 2023-10-01
Start Page: 4801
Language: English
DOI: 10.3390/cancers15194801
PROVIDER: scopus
PMCID: PMC10571566
PUBMED: 37835496
DOI/URL:
Notes: Article -- Source: Scopus
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  1. Konstantinos Christos Liosis
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