Literature DB >> 31733349

Improving Copy Number Variant Detection from Sequencing Data with a Combination of Programs and a Predictive Model.

Salla Välipakka1, Marco Savarese2, Lydia Sagath2, Meharji Arumilli2, Teresa Giugliano3, Bjarne Udd4, Peter Hackman2.   

Abstract

Bioinformatics tools for analyzing copy number variants (CNVs) from massively parallel sequencing (MPS) data are less well developed compared with other variant types. We present an efficient bioinformatics pipeline for CNV detection from gene panel MPS data in neuromuscular disorders. CNVs were generated in silico into samples sequenced with a previously published MPS gene panel. The in silico CNVs from these samples were analyzed with four programs having complementary CNV detection ranges: CoNIFER, XHMM, ExomeDepth, and CODEX. A logistic regression model was trained with the obtained set of in silico CNV detections to predict true-positive CNV detections among all CNV detections from samples. This model was validated using 66 control samples with a verified true-positive (n = 58) or false-positive (n = 8) CNV detection. Applying all four programs together provided more sensitive detection results with in silico CNVs than other program combinations or any program alone. Furthermore, a model with CNV detection-specific scores from all four programs as variables performed overall best in the validation. No single program could detect all CNV sizes and types equally or with enough accuracy. Therefore, a combination of carefully selected programs should be used to maximize detection accuracy. In addition, the detected CNVs should be reviewed with a statistical model to streamline and standardize the filtering of the detections for annotation.
Copyright © 2020 American Society for Investigative Pathology and the Association for Molecular Pathology. Published by Elsevier Inc. All rights reserved.

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Year:  2019        PMID: 31733349     DOI: 10.1016/j.jmoldx.2019.08.009

Source DB:  PubMed          Journal:  J Mol Diagn        ISSN: 1525-1578            Impact factor:   5.568


  5 in total

1.  Array Comparative Genomic Hybridisation and Droplet Digital PCR Uncover Recurrent Copy Number Variation of the TTN Segmental Duplication Region.

Authors:  Lydia Sagath; Vilma-Lotta Lehtokari; Katarina Pelin; Kirsi Kiiski
Journal:  Genes (Basel)       Date:  2022-05-19       Impact factor: 4.141

2.  Panorama of the distal myopathies.

Authors:  Marco Savarese; Jaakko Sarparanta; Anna Vihola; Per Harald Jonson; Mridul Johari; Salla Rusanen; Peter Hackman; Bjarne Udd
Journal:  Acta Myol       Date:  2020-12-01

3.  Biallelic expansion in RFC1 as a rare cause of Parkinson's disease.

Authors:  Laura Kytövuori; Jussi Sipilä; Hiroshi Doi; Anri Hurme-Niiranen; Ari Siitonen; Eriko Koshimizu; Satoko Miyatake; Naomichi Matsumoto; Fumiaki Tanaka; Kari Majamaa
Journal:  NPJ Parkinsons Dis       Date:  2022-01-10

4.  Biallelic KIF24 Variants Are Responsible for a Spectrum of Skeletal Disorders Ranging From Lethal Skeletal Ciliopathy to Severe Acromesomelic Dysplasia.

Authors:  Madeline Louise Reilly; Noor Ul Ain; Mari Muurinen; Alice Tata; Céline Huber; Marleen Simon; Tayyaba Ishaq; Nick Shaw; Salla Rusanen; Minna Pekkinen; Wolfgang Högler; Maarten F C M Knapen; Myrthe van den Born; Sophie Saunier; Sadaf Naz; Valérie Cormier-Daire; Alexandre Benmerah; Outi Makitie
Journal:  J Bone Miner Res       Date:  2022-07-19       Impact factor: 6.390

Review 5.  Is Gene-Size an Issue for the Diagnosis of Skeletal Muscle Disorders?

Authors:  Marco Savarese; Salla Välipakka; Mridul Johari; Peter Hackman; Bjarne Udd
Journal:  J Neuromuscul Dis       Date:  2020
  5 in total

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