A guided network estimation approach using multi-omic information

Georgios Bartzis, Carel F.W. Peeters*, Wilco Ligterink, Fred A. Van Eeuwijk

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

Intoduction: In systems biology, an organism is viewed as a system of interconnected molecular entities. To understand the functioning of organisms it is essential to integrate information about the variations in the concentrations of those molecular entities. This information can be structured as a set of networks with interconnections and with some hierarchical relations between them. Few methods exist for the reconstruction of integrative networks. Objective: In this work, we propose an integrative network reconstruction method in which the network organization for a particular type of omics data is guided by the network structure of a related type of omics data upstream in the omic cascade. The structure of these guiding data can be either already known or be estimated from the guiding data themselves. Methods: The method consists of three steps. First a network structure for the guiding data should be provided. Next, responses in the target set are regressed on the full set of predictors in the guiding data with a Lasso penalty to reduce the number of predictors and an L2 penalty on the differences between coefficients for predictors that share edges in the network for the guiding data. Finally, a network is reconstructed on the fitted target responses as functions of the predictors in the guiding data. This way we condition the target network on the network of the guiding data. Conclusions: We illustrate our approach on two examples in Arabidopsis. The method detects groups of metabolites that have a similar genetic or transcriptomic basis.

Original languageEnglish
Article number202
JournalBMC Bioinformatics
Volume25
DOIs
Publication statusPublished - 30 May 2024

Keywords

  • Multi-omics
  • Network integration
  • Network reconstruction

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