IMI-driver: Integrating multi-level gene networks and multi-omics for cancer driver gene identification

Author:

Shi Peiting,Han Junmin,Zhang Yinghao,Li Guanpu,Zhou XionghuiORCID

Abstract

The identification of cancer driver genes is crucial for early detection, effective therapy, and precision medicine of cancer. Cancer is caused by the dysregulation of several genes at various levels of regulation. However, current techniques only capture a limited amount of regulatory information, which may hinder their efficacy. In this study, we present IMI-driver, a model that integrates multi-omics data into eight biological networks and applies Multi-view Collaborative Network Embedding to embed the gene regulation information from the biological networks into a low-dimensional vector space to identify cancer drivers. We apply IMI-driver to 29 cancer types from The Cancer Genome Atlas (TCGA) and compare its performance with nine other methods on nine benchmark datasets. IMI-driver outperforms the other methods, demonstrating that multi-level network integration enhances prediction accuracy. We also perform a pan-cancer analysis using the genes identified by IMI-driver, which confirms almost all our selected candidate genes as known or potential drivers. Case studies of the new positive genes suggest their roles in cancer development and progression.

Funder

Biological Breeding-Major Projects

Fundamental Research Funds for the Central Universities

the National Training Program of Innovation and Entrepreneurship for Undergraduates of Huazhong Agricultural University

Publisher

Public Library of Science (PLoS)

Reference56 articles.

1. Hallmarks of Cancer: New Dimensions.;D. Hanahan;Cancer Discov,2022

2. Review The Cancer Genome Atlas (TCGA): an immeasurable source of knowledge;K Tomczak;Contemp Oncol (Pozn).,2015

3. The International Cancer Genome Consortium Data Portal;J Zhang;Nat Biotechnol,2019

4. CLNN-loop: a deep learning model to predict CTCF-mediated chromatin loops in the different cell lines and CTCF-binding sites (CBS) pair types;P. Zhang;Bioinformatics,2022

5. DriverML: a machine learning algorithm for identifying driver genes in cancer sequencing studies;Y Han;Nucleic Acids Res,2019

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