Author:
Pournoor Ehsan,Mousavian Zaynab,Dalini Abbas Nowzari,Masoudi-Nejad Ali
Abstract
AbstractComplexity of cascading interrelations between molecular cell components at different levels from genome to metabolome ordains a massive difficulty in comprehending biological happenings. However, considering these complications in the systematic modelings will result in realistic and reliable outputs. The multilayer networks approach is a relatively innovative concept that could be applied for multiple omics datasets as an integrative methodology to overcome heterogeneity difficulties. Herein, we employed the multilayer framework to rehabilitate colon adenocarcinoma network by observing co-expression correlations, regulatory relations, and physical binding interactions. Hub nodes in this three-layer network were selected using a heterogeneous random walk with random jump procedure. We exploited local composite modules around the hub nodes having high overlay with cancer-specific pathways, and investigated their genes showing a different expressional pattern in the tumor progression. These genes were examined for survival effects on the patient’s lifespan, and those with significant impacts were selected as potential candidate biomarkers. Results suggest that identified genes indicate noteworthy importance in the carcinogenesis of the colon.
Publisher
Springer Science and Business Media LLC
Reference60 articles.
1. Tomczak, K., Czerwińska, P. & Wiznerowicz, M. The Cancer Genome Atlas (TCGA): an immeasurable source of knowledge. Contemporary oncology 19, A68 (2015).
2. Motieghader, H., Najafi, A., Sadeghi, B. & Masoudi-Nejad, A. A hybrid gene selection algorithm for microarray cancer classification using genetic algorithm and learning automata. Informatics in Medicine Unlocked 9, 246–254 (2017).
3. Masoudi-Sobhanzadeh, Y., Omidi, Y., Amanlou, M. & Masoudi-Nejad, A. DrugR+: A comprehensive relational database for drug repurposing, combination therapy, and replacement therapy. Computers in biology and medicine 109, 254–262 (2019).
4. Yugi, K., Kubota, H., Hatano, A. & Kuroda, S. Trans-omics: how to reconstruct biochemical networks across multiple ‘omic’layers. Trends in biotechnology 34, 276–290 (2016).
5. Yan, J., Risacher, S. L., Shen, L. & Saykin, A. J. Network approaches to systems biology analysis of complex disease: integrative methods for multi-omics data. Briefings in bioinformatics 19, 1370–1381 (2017).
Cited by
8 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献