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Kmerator Suite: design of specific <i>k</i> -mer signatures and automatic metadata discovery in large RNA-seq datasets

Sébastien Riquier, Chloé Bessière, Benoît Guibert, Anne-Laure Bougé, Anthony Boureux, Florence Rufflé, Jérôme Audoux, Nicolas Gilbert, Haoliang Xue, Daniel Gautheret, Thérèse Commes

2021NAR Genomics and Bioinformatics16 citationsDOIOpen Access PDF

Abstract

Abstract The huge body of publicly available RNA-sequencing (RNA-seq) libraries is a treasure of functional information allowing to quantify the expression of known or novel transcripts in tissues. However, transcript quantification commonly relies on alignment methods requiring a lot of computational resources and processing time, which does not scale easily to large datasets. K-mer decomposition constitutes a new way to process RNA-seq data for the identification of transcriptional signatures, as k-mers can be used to quantify accurately gene expression in a less resource-consuming way. We present the Kmerator Suite, a set of three tools designed to extract specific k-mer signatures, quantify these k-mers into RNA-seq datasets and quickly visualize large dataset characteristics. The core tool, Kmerator, produces specific k-mers for 97% of human genes, enabling the measure of gene expression with high accuracy in simulated datasets. KmerExploR, a direct application of Kmerator, uses a set of predictor gene-specific k-mers to infer metadata including library protocol, sample features or contaminations from RNA-seq datasets. KmerExploR results are visualized through a user-friendly interface. Moreover, we demonstrate that the Kmerator Suite can be used for advanced queries targeting known or new biomarkers such as mutations, gene fusions or long non-coding RNAs for human health applications.

Topics & Concepts

Computer scienceSuiteComputational biologyMetadataRNA-SeqData miningSet (abstract data type)GeneTranscriptomeBiologyGene expressionGeneticsWorld Wide WebHistoryProgramming languageArchaeologyGenomics and Phylogenetic StudiesRNA modifications and cancerCancer-related molecular mechanisms research
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