Rare diseases; Exome sequencing; Copy number variation
Abstract :
[en] We report the diagnostic results of a comprehensive copy number variant (CNV) reanalysis of 9,171 exome sequencing (ES) datasets from 5,757 families, including 6,143 individuals affected by a rare disease (RD). The data analysed was extremely heterogeneous, having been generated using 28 different exome enrichment kits, and sequenced on multiple short-read sequencing platforms, by 42 different research groups across Europe partnering in the Solve-RD project. Each of these research groups had previously undertaken their own analysis of the ES data but had failed to identify disease-causing variants.We applied three CNV calling algorithms to maximise sensitivity: ClinCNV, Conifer, and ExomeDepth. Rare CNVs overlapping genes of interest in custom lists provided by one of four partner European Reference Networks (ERN) were identified and taken forward for interpretation by clinical experts in RD. To facilitate interpretation, Integrative Genomics Viewer (IGV) screenshots incorporating a variety of custom-made tracks were generated for all prioritised CNVs.These analyses have resulted in a molecular diagnosis being provided for 51 families in this sample, with ClinCNV performing the best of the three algorithms in identifying disease-causing CNVs. We also identified pathogenic CNVs that are partially explanatory of the proband’s phenotype in a further 34 individuals. This work illustrates the value of reanalysing EScold casesfor CNVs even where analyses had been undertaken previously. Crucially, identification of these previously undetected CNVs has resulted in the conclusion of the diagnostic odyssey for these RD families, some of which had endured decades.
Research center :
Luxembourg Centre for Systems Biomedicine (LCSB): Bioinformatics Core (R. Schneider Group)
Disciplines :
Genetics & genetic processes Human health sciences: Multidisciplinary, general & others
Author, co-author :
Demidov, German
Yaldiz, Burcu
Garcia-Pelaez, José
de Boer, Elke
Schuermans, Nika
Van de Vondel, Liedewei
Paramonov, Ida
Johansson, Lennart F.
Musacchia, Francesco
Benetti, Elisa
Bullich, Gemma
Sablauskas, Karolis
Beltran, Sergi
Gilissen, Christian
Hoischen, Alexander
Ossowski, Stephan
de Voer, Richarda
Lohmann, Katja
Oliveira, Carla
Topf, Ana
Vissers, Lisenka E.L.M.
MAY, Patrick ; University of Luxembourg > Luxembourg Centre for Systems Biomedicine (LCSB) > Bioinformatics Core