Litcius/Paper detail

Supervised learning of gene-regulatory networks based on graph distance profiles of transcriptomics data

Zahra Razaghi‐Moghadam, Zoran Nikoloski

2020npj Systems Biology and Applications47 citationsDOIOpen Access PDF

Abstract

Characterisation of gene-regulatory network (GRN) interactions provides a stepping stone to understanding how genes affect cellular phenotypes. Yet, despite advances in profiling technologies, GRN reconstruction from gene expression data remains a pressing problem in systems biology. Here, we devise a supervised learning approach, GRADIS, which utilises support vector machine to reconstruct GRNs based on distance profiles obtained from a graph representation of transcriptomics data. By employing the data from Escherichia coli and Saccharomyces cerevisiae as well as synthetic networks from the DREAM4 and five network inference challenges, we demonstrate that our GRADIS approach outperforms the state-of-the-art supervised and unsupervided approaches. This holds when predictions about target genes for individual transcription factors as well as for the entire network are considered. We employ experimentally verified GRNs from E. coli and S. cerevisiae to validate the predictions and obtain further insights in the performance of the proposed approach. Our GRADIS approach offers the possibility for usage of other network-based representations of large-scale data, and can be readily extended to help the characterisation of other cellular networks, including protein-protein and protein-metabolite interactions.

Topics & Concepts

Gene regulatory networkInferenceComputer scienceGraphMachine learningArtificial intelligenceGraphical modelComputational biologySystems biologySaccharomyces cerevisiaeData miningGeneBiologyGene expressionTheoretical computer scienceGeneticsGene Regulatory Network AnalysisBioinformatics and Genomic NetworksMicrobial Metabolic Engineering and Bioproduction