Publication:
Computational approaches leveraging integrated connections of multi-omic data toward clinical applications

Placeholder

School / College / Institute

Program

KU Authors

Co-Authors

Demirel, Habibe Cansu
Arıcı, Müslüm Kaan

Publication Date

Language

Type

Embargo Status

Journal Title

Journal ISSN

Volume Title

Alternative Title

Abstract

In line with the advances in high-throughput technologies, multiple omic datasets have accumulated to study biological systems and diseases coherently. No single omics data type is capable of fully representing cellular activity. The complexity of the biological processes arises from the interactions between omic entities such as genes, proteins, and metabolites. Therefore, multi-omic data integration is crucial but challenging. The impact of the molecular alterations in multi-omic data is not local in the neighborhood of the altered gene or protein; rather, the impact diffuses in the network and changes the functionality of multiple signaling pathways and regulation of the gene expression. Additionally, multi-omic data is high-dimensional and has background noise. Several integrative approaches have been developed to accurately interpret the multi-omic datasets, including machine learning, network-based methods, and their combination. In this review, we overview the most recent integrative approaches and tools with a focus on network-based methods. We then discuss these approaches according to their specific applications, from disease-network and biomarker identification to patient stratification, drug discovery, and repurposing.

Source

Publisher

Royal Society of Chemistry (RSC)

Subject

Biochemistry, Molecular biology

Citation

Has Part

Source

Molecular Omics

Book Series Title

Edition

DOI

10.1039/d1mo00158b

item.page.datauri

Link

Rights

Copyrights Note

Endorsement

Review

Supplemented By

Referenced By

0

Views

0

Downloads

View PlumX Details