Guidelines for splicing analysis in molecular diagnosis derived from a set of 327 combined in silico/in vitro studies on BRCA1 and BRCA2 variants

Claude Houdayer(Institut Curie), Virginie Caux‐Moncoutier(Délégation Paris 5), Sophie Krieger(Université de Caen Normandie), Michel Barrois(Institut Gustave Roussy), Françoise Bonnet(Institut Bergonié), Violaine Bourdon(Institut Paoli-Calmettes), Myriam Bronner(Centre Hospitalier Régional et Universitaire de Nancy), Monique Buisson(Inserm), Florence Coulet(Sorbonne Université), Pascaline Gaildrat(Université de Rouen Normandie), Cédrick Lefol(Institut Curie), Mélanie Léoné(Centre Léon Bérard), Sylvie Mazoyer(Centre National de la Recherche Scientifique), Danielle Muller, Audrey Remenieras(Institut Gustave Roussy), Françoise Révillion(Centre Oscar Lambret), Étienne Rouleau(Hôpital René Huguenin), Joanna Sokołowska(Centre Hospitalier Régional et Universitaire de Nancy), Jean‐Philippe Vert(Inserm), Rosette Lidereau(Hôpital René Huguenin), Florent Soubrier(Pitié-Salpêtrière Hospital), Hagay Sobol(Institut Paoli-Calmettes), Nicolas Sévenet(Institut Bergonié), Brigitte Bressac–de Paillerets(Inserm), Agnès Hardouin(Université de Caen Normandie), Mario Tosi(Institute for Research and Innovation in Biomedicine), Olga M. Sinilnikova(Centre de Recherche en Cancérologie de Lyon), Dominique Stoppa‐Lyonnet(Institut Curie)
Human Mutation
April 13, 2012
Cited by 240

Abstract

Assessing the impact of variants of unknown significance (VUS) on splicing is a key issue in molecular diagnosis. This impact can be predicted by in silico tools, but proper evaluation and user guidelines are lacking. To fill this gap, we embarked upon the largest BRCA1 and BRCA2 splice study to date by testing 272 VUSs (327 analyses) within the BRCA splice network of Unicancer. All these VUSs were analyzed by using six tools (splice site prediction by neural network, splice site finder (SSF), MaxEntScan (MES), ESE finder, relative enhancer and silencer classification by unanimous enrichment, and human splicing finder) and the predictions obtained were compared with transcript analysis results. Combining MES and SSF gave 96% sensitivity and 83% specificity for VUSs occurring in the vicinity of consensus splice sites, that is, the surrounding 11 and 14 bases for the 5' and 3' sites, respectively. This study was also an opportunity to define guidelines for transcript analysis along with a tentative classification of splice variants. The guidelines drawn from this large series should be useful for the whole community, particularly in the context of growing sequencing capacities that require robust pipelines for variant interpretation.


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