» Articles » PMID: 29872707

Network-based Machine Learning and Graph Theory Algorithms for Precision Oncology

Overview
Publisher Springer Nature
Specialty Oncology
Date 2018 Jun 7
PMID 29872707
Citations 47
Authors
Affiliations
Soon will be listed here.
Abstract

Network-based analytics plays an increasingly important role in precision oncology. Growing evidence in recent studies suggests that cancer can be better understood through mutated or dysregulated pathways or networks rather than individual mutations and that the efficacy of repositioned drugs can be inferred from disease modules in molecular networks. This article reviews network-based machine learning and graph theory algorithms for integrative analysis of personal genomic data and biomedical knowledge bases to identify tumor-specific molecular mechanisms, candidate targets and repositioned drugs for personalized treatment. The review focuses on the algorithmic design and mathematical formulation of these methods to facilitate applications and implementations of network-based analysis in the practice of precision oncology. We review the methods applied in three scenarios to integrate genomic data and network models in different analysis pipelines, and we examine three categories of network-based approaches for repositioning drugs in drug-disease-gene networks. In addition, we perform a comprehensive subnetwork/pathway analysis of mutations in 31 cancer genome projects in the Cancer Genome Atlas and present a detailed case study on ovarian cancer. Finally, we discuss interesting observations, potential pitfalls and future directions in network-based precision oncology.

Citing Articles

Inferring Diagnostic and Prognostic Gene Expression Signatures Across WHO Glioma Classifications: A Network-Based Approach.

Coletti R, Leiria de Mendonca M, Vinga S, Lopes M Bioinform Biol Insights. 2024; 18:11779322241271535.

PMID: 39286768 PMC: 11403688. DOI: 10.1177/11779322241271535.


Developing an ensemble machine learning study: Insights from a multi-center proof-of-concept study.

Fanizzi A, Fadda F, Maddalo M, Saponaro S, Lorenzon L, Ubaldi L PLoS One. 2024; 19(9):e0303217.

PMID: 39255296 PMC: 11386419. DOI: 10.1371/journal.pone.0303217.


"Polytopal Rearrangement Model of Stereoisomerization" and Its Potential as the Basis for a Systematic Model of All Stereoisomerism.

Canfield P, Reimers J, Crossley M ACS Org Inorg Au. 2024; 4(4):356-372.

PMID: 39132020 PMC: 11311049. DOI: 10.1021/acsorginorgau.4c00005.


Integrating spatial transcriptomics and bulk RNA-seq: predicting gene expression with enhanced resolution through graph attention networks.

Baul S, Ahmed K, Jiang Q, Wang G, Li Q, Yong J Brief Bioinform. 2024; 25(4).

PMID: 38960406 PMC: 11221891. DOI: 10.1093/bib/bbae316.


A review of mechanistic learning in mathematical oncology.

Metzcar J, Jutzeler C, Macklin P, Kohn-Luque A, Bruningk S Front Immunol. 2024; 15:1363144.

PMID: 38533513 PMC: 10963621. DOI: 10.3389/fimmu.2024.1363144.


References
1.
. Integrated genomic characterization of oesophageal carcinoma. Nature. 2017; 541(7636):169-175. PMC: 5651175. DOI: 10.1038/nature20805. View

2.
Sultan M, Schulz M, Richard H, Magen A, Klingenhoff A, Scherf M . A global view of gene activity and alternative splicing by deep sequencing of the human transcriptome. Science. 2008; 321(5891):956-60. DOI: 10.1126/science.1160342. View

3.
Davis C, Ricketts C, Wang M, Yang L, Cherniack A, Shen H . The somatic genomic landscape of chromophobe renal cell carcinoma. Cancer Cell. 2014; 26(3):319-330. PMC: 4160352. DOI: 10.1016/j.ccr.2014.07.014. View

4.
Sun H, Wang S . Penalized logistic regression for high-dimensional DNA methylation data with case-control studies. Bioinformatics. 2012; 28(10):1368-75. PMC: 3348559. DOI: 10.1093/bioinformatics/bts145. View

5.
Kidd B, Readhead B, Eden C, Parekh S, Dudley J . Integrative network modeling approaches to personalized cancer medicine. Per Med. 2016; 12(3):245-257. PMC: 4806849. DOI: 10.2217/pme.14.87. View