Published August 4, 2022 | Version v2. Preprint, Author ́s version of the Contribution. Includes figures.
Preprint Open

Inference of multi-omics networks in plant systems

  • 1. Broad Institute of MIT and Harvard
  • 2. La Trobe University
  • 3. Iowa State University

Description

The inference of gene regulatory networks can reveal molecular connections underlying biological processes and improve our understanding of complex biological phenomena in plants. Many previous network studies have inferred networks using only one type of omics data, such as transcriptomics. However, given more recent work applying multi-omics integration in plant biology, such as combining (phospho)proteomics with transcriptomics, it may be advantageous to integrate multiple omics data types into a comprehensive network prediction. Here, we describe a state-of-the-art approach for integrating multi-omics data with gene regulatory network inference to describe signaling pathways and uncover novel regulators. We detail how to download and process transcriptomics and (phospho)proteomics data for network inference, using an example dataset from the plant hormone signaling field. We provide a step-by-step protocol for inference, visualization, and analysis of an integrative multi-omics network using currently available methods. This chapter serves as an accessible guide for novice and intermediate bioinformaticians to analyze their own datasets and reanalyze published work.

 

 

Notes

This is a preprint of the following chapter: Clark et al, A Practical Guide to Inferring Multi-Omics Networks in Plant Systems published in Plant Gene Regulatory Networks, edited by Kerstin Kaufmann & Klaas Vandepoele, 2023, Humana Press, reproduced with permission of Humana Press. The final authenticated version is available online at: https://doi.org/10.1007/978-1-0716-3354-0_15

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Related works

Is new version of
Preprint: 10.5281/zenodo.6962317 (DOI)
Is published in
Book chapter: 10.1007/978-1-0716-3354-0_15 (DOI)