Knowledge-guided analysis of "omics" data using the KnowEnG cloud platform

Blatti, Charles and Emad, Amin and Berry, Matthew J. and Gatzke, Lisa and Epstein, Milt and Lanier, Daniel and Rizal, Pramod and Ge, Jing and Liao, Xiaoxia and Sobh, Omar and Lambert, Mike and Post, Corey S. and Xiao, Jinfeng and Groves, Peter and Epstein, Aidan T. and Chen, Xi and Srinivasan, Subhashini and Lehnert, Erik and Kalari, Krishna R. and Wang, Liewei and Weinshilboum, Richard M. and Song, Jun S. and Jongeneel, C. Victor and Han, Jiawei and Ravaioli, Umberto and Sobh, Nahil and Bushell, Colleen B. and Sinha, Saurabh and Freeman, Thomas C. (2020) Knowledge-guided analysis of "omics" data using the KnowEnG cloud platform. PLOS Biology, 18 (1). e3000583. ISSN 1545-7885

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Abstract

We present Knowledge Engine for Genomics (KnowEnG), a free-to-use computational system for analysis of genomics data sets, designed to accelerate biomedical discovery. It includes tools for popular bioinformatics tasks such as gene prioritization, sample clustering, gene set analysis, and expression signature analysis. The system specializes in “knowledge-guided” data mining and machine learning algorithms, in which user-provided data are analyzed in light of prior information about genes, aggregated from numerous knowledge bases and encoded in a massive “Knowledge Network.” KnowEnG adheres to “FAIR” principles (findable, accessible, interoperable, and reuseable): its tools are easily portable to diverse computing environments, run on the cloud for scalable and cost-effective execution, and are interoperable with other computing platforms. The analysis tools are made available through multiple access modes, including a web portal with specialized visualization modules. We demonstrate the KnowEnG system’s potential value in democratization of advanced tools for the modern genomics era through several case studies that use its tools to recreate and expand upon the published analysis of cancer data sets.

Item Type: Article
Subjects: Academic Digital Library > Biological Science
Depositing User: Unnamed user with email info@academicdigitallibrary.org
Date Deposited: 18 Jan 2023 11:44
Last Modified: 23 Feb 2024 03:49
URI: http://publications.article4sub.com/id/eprint/257

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