A framework for considering prior information in network‐based approaches to omics data analysis

Author:

Somers Julia1ORCID,Fenner Madeleine1ORCID,Kong Garth12ORCID,Thirumalaisamy Dharani1ORCID,Yashar William M.12ORCID,Thapa Kisan3,Kinali Meric3ORCID,Nikolova Olga12ORCID,Babur Özgün3ORCID,Demir Emek1ORCID

Affiliation:

1. Department of Biomedical Engineering Oregon Health and Science University Portland Oregon USA

2. Division of Oncological Sciences Oregon Health and Science University Portland Oregon USA

3. Computer Science Department, University of Massachusetts Boston College of Science and Mathematics Boston Massachusetts USA

Abstract

AbstractFor decades, molecular biologists have been uncovering the mechanics of biological systems. Efforts to bring their findings together have led to the development of multiple databases and information systems that capture and present pathway information in a computable network format. Concurrently, the advent of modern omics technologies has empowered researchers to systematically profile cellular processes across different modalities. Numerous algorithms, methodologies, and tools have been developed to use prior knowledge networks (PKNs) in the analysis of omics datasets. Interestingly, it has been repeatedly demonstrated that the source of prior knowledge can greatly impact the results of a given analysis. For these methods to be successful it is paramount that their selection of PKNs is amenable to the data type and the computational task they aim to accomplish. Here we present a five‐level framework that broadly describes network models in terms of their scope, level of detail, and ability to inform causal predictions. To contextualize this framework, we review a handful of network‐based omics analysis methods at each level, while also describing the computational tasks they aim to accomplish.

Publisher

Wiley

Subject

Molecular Biology,Biochemistry

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