Home > Publications Database > Gaussian and Mixed Graphical Models as (multi-)omics data analysis tools. |
Journal Article (Review Article) | DZNE-2020-00410 |
; ; ; ;
2020
Elsevier
Amsterdam [u.a.]
This record in other databases:
Please use a persistent id in citations: doi:10.1016/j.bbagrm.2019.194418
Abstract: Gaussian Graphical Models (GGMs) are tools to infer dependencies between biological variables. Popular applications are the reconstruction of gene, protein, and metabolite association networks. GGMs are an exploratory research tool that can be useful to discover interesting relations between genes (functional clusters) or to identify therapeutically interesting genes, but do not necessarily infer a network in the mechanistic sense. Although GGMs are well investigated from a theoretical and applied perspective, important extensions are not well known within the biological community. GGMs assume, for instance, multivariate normal distributed data. If this assumption is violated Mixed Graphical Models (MGMs) can be the better choice. In this review, we provide the theoretical foundations of GGMs, present extensions such as MGMs or multi-class GGMs, and illustrate how those methods can provide insight in biological mechanisms. We summarize several applications and present user-friendly estimation software. This article is part of a Special Issue entitled: Transcriptional Profiles and Regulatory Gene Networks edited by Dr. Dr. Federico Manuel Giorgi and Dr. Shaun Mahony.
Keyword(s): Gene Regulatory Networks (MeSH) ; Genomics (MeSH) ; Humans (MeSH) ; Metabolomics (MeSH) ; Models, Genetic (MeSH) ; Models, Statistical (MeSH) ; Normal Distribution (MeSH) ; Software (MeSH)
![]() |
The record appears in these collections: |