2.5 years' experience of GeneMatcher data-sharing: a powerful tool for identifying new genes responsible for rare diseases

Affiliation auteurs!!!! Error affiliation !!!!
Titre2.5 years' experience of GeneMatcher data-sharing: a powerful tool for identifying new genes responsible for rare diseases
Type de publicationJournal Article
Year of Publication2019
AuteursBruel A-L, Vitobello A, Mau-Them FTran, Nambot S, Duffourd Y, Quere V, Kuentz P, Garret P, Thevenon J, Moutton S, Lehalle D, Jean-Marcais N, Garde A, Delanne J, Lefebvre M, Lecoquierre F, Trost D, Cho M, Begtrup A, Telegrafi A, Vabres P, Mosca-Boidron A-L, Callier P, Philippe C, Faivre L, Thauvin-Robinet C, Grp OPhysicians
JournalGENETICS IN MEDICINE
Volume21
Pagination1657-1661
Date PublishedJUL
Type of ArticleArticle
ISSN1098-3600
Mots-clésdata-sharing, GeneMatcher, NGS
Résumé

Purpose: Exome sequencing (ES) powerfully identifies the molecular bases of heterogeneous conditions such as intellectual disability and/or multiple congenital anomalies (ID/MCA). Current ES analysis, combining diagnosis analysis restricted to disease-causing genes reported in OMIM database and subsequent research investigation extended to other genes, indicated causal and candidate genes around 40% and 10%. Nonconclusive results are frequent in such ultrarare conditions that recurrence and genotype-phenotype correlations are limited. International data-sharing permits the gathering of additional patients carrying variants in the same gene to draw definitive conclusions on their implication as disease causing. Several web-based tools have been developed and grouped in Matchmaker Exchange. In this study, we report our current experience as a regional center that has implemented ES as a first-line diagnostic test since 2013, working with a research laboratory devoted to disease gene identification. Methods: We used GeneMatcher over 2.5 years to share 71 novel candidate genes identified by ES. Results: Matches occurred in 60/71 candidate genes allowing to confirm the implication of 39% of matched genes as causal and to rule out 6% of them. Conclusion: The introduction of user-friendly gene-matching tools, such as GeneMatcher, appeared to be an essential step for the rapid identification of novel disease genes responsible for ID/MCA.

DOI10.1038/s41436-018-0383-z