Litcius/Paper detail

iMOKA: k-mer based software to analyze large collections of sequencing data

Claudio Lorenzi, Sylvain Barrière, Jean-Philippe Villemin, Laureline Dejardin Bretones, Alban Mancheron, William Ritchie

2020Genome biology20 citationsDOIOpen Access PDF

Abstract

iMOKA (interactive multi-objective k-mer analysis) is a software that enables comprehensive analysis of sequencing data from large cohorts to generate robust classification models or explore specific genetic elements associated with disease etiology. iMOKA uses a fast and accurate feature reduction step that combines a Naïve Bayes classifier augmented by an adaptive entropy filter and a graph-based filter to rapidly reduce the search space. By using a flexible file format and distributed indexing, iMOKA can easily integrate data from multiple experiments and also reduces disk space requirements and identifies changes in transcript levels and single nucleotide variants. iMOKA is available at https://github.com/RitchieLabIGH/iMOKA and Zenodo https://doi.org/10.5281/zenodo.4008947 .

Topics & Concepts

SoftwareComputer scienceData miningFilter (signal processing)Computational biologyBiologyComputer visionProgramming languageBioinformatics and Genomic NetworksMachine Learning in BioinformaticsEpigenetics and DNA Methylation