Litcius/Paper detail

seqQscorer: automated quality control of next-generation sequencing data using machine learning

Steffen Albrecht, Maximilian Sprang, Miguel A. Andrade‐Navarro, Jean−Fred Fontaine

2021Genome biology30 citationsDOIOpen Access PDF

Abstract

Controlling quality of next-generation sequencing (NGS) data files is a necessary but complex task. To address this problem, we statistically characterize common NGS quality features and develop a novel quality control procedure involving tree-based and deep learning classification algorithms. Predictive models, validated on internal and external functional genomics datasets, are to some extent generalizable to data from unseen species. The derived statistical guidelines and predictive models represent a valuable resource for users of NGS data to better understand quality issues and perform automatic quality control. Our guidelines and software are available at https://github.com/salbrec/seqQscorer .

Topics & Concepts

BiologyHuman geneticsGenome BiologyComputational biologyDNA sequencingQuality (philosophy)Control (management)GenomicsMachine learningArtificial intelligenceComputer scienceGeneticsGenomeDNAGenePhilosophyEpistemologyGenomics and Phylogenetic StudiesGene expression and cancer classificationCancer Genomics and Diagnostics