Abhishek Narain Singh*
Graph network science is becoming increasingly popular, notably in big-data perspective where understanding individual entities for individual functional roles is complex and time consuming. It is likely when a set of genes are regulated by a set of genetic variants, the genes set is recruited for a common or related functional purpose. Grouping and extracting communities from network of associations becomes critical to understand system complexity, thus prioritizing genes for disease and functional associations. Workload is reduced when studying entities one at a time. For this, we present Graph Break, a suite of tools for community detection application, such as for gene coexpression, protein interaction, regulation network, etc. Although developed for use case of eQTLs regulatory genomic net-work community, study-results shown with our analysis with sample eQTL data-Graph Break can be deployed for other studies if input data has been fed in requisite format, including but not limited to gene coexpression networks, protein-protein interaction network, signaling pathway and metabolic network. Graph Break showed critical use case value in its downstream analysis for disease association of communities detected. If all independent steps of community detection and analysis are a step-by-step sub-part of the algorithm. Graph Break can be considered a new algorithm for community based functional characterization. Combination of various algorithmic implementation modules into a single script for this purpose illustrates Graph Break’s novelty. Compared to other similar tools, with Graph Break we can better detect communities with over representation of its member genes for statistical association with diseases, therefore target genes which can be prioritized for drug-positioning or drugrepositioning as the case be.
Published Date: 2023-03-08; Received Date: 2023-02-04