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KOBAS-i: intelligent prioritization and exploratory visualization of biological functions for gene enrichment analysis

Dechao Bu, Haitao Luo, Peipei Huo, Zhihao Wang, Shan Zhang, Zihao He, Yang Wu, Lianhe Zhao, Jingjia Liu, Jincheng Guo, Shuangsang Fang, Wanchen Cao, Lan Yi, Yi Zhao, Lei Kong

2021Nucleic Acids Research1,970 citationsDOIOpen Access PDF

Abstract

Gene set enrichment (GSE) analysis plays an essential role in extracting biological insight from genome-scale experiments. ORA (overrepresentation analysis), FCS (functional class scoring), and PT (pathway topology) approaches are three generations of GSE methods along the timeline of development. Previous versions of KOBAS provided services based on just the ORA method. Here we presented version 3.0 of KOBAS, which is named KOBAS-i (short for KOBAS intelligent version). It introduced a novel machine learning-based method we published earlier, CGPS, which incorporates seven FCS tools and two PT tools into a single ensemble score and intelligently prioritizes the relevant biological pathways. In addition, KOBAS has expanded the downstream exploratory visualization for selecting and understanding the enriched results. The tool constructs a novel view of cirFunMap, which presents different enriched terms and their correlations in a landscape. Finally, based on the previous version's framework, KOBAS increased the number of supported species from 1327 to 5944. For an easier local run, it also provides a prebuilt Docker image that requires no installation, as a supplementary to the source code version. KOBAS can be freely accessed at http://kobas.cbi.pku.edu.cn, and a mirror site is available at http://bioinfo.org/kobas.

Topics & Concepts

VisualizationTimelineBiologySource codeSet (abstract data type)PrioritizationClass (philosophy)Exploratory analysisComputer scienceComputational biologyGenomeMachine learningArtificial intelligenceGeneGeneticsData scienceProgramming languageArchaeologyEconomicsManagement scienceHistoryBioinformatics and Genomic NetworksGene expression and cancer classificationMachine Learning in Bioinformatics