TY - JOUR
T1 - Novel diagnostic tool for prediction of variant spliceogenicity derived from a set of 395 combined in silico/in vitro studies
T2 - an international collaborative effort
AU - Leman, Raphaël
AU - Gaildrat, Pascaline
AU - Gac, Gérald L
AU - Ka, Chandran
AU - Fichou, Yann
AU - Audrezet, Marie-Pierre
AU - Caux-Moncoutier, Virginie
AU - Caputo, Sandrine M
AU - Boutry-Kryza, Nadia
AU - Léone, Mélanie
AU - Mazoyer, Sylvie
AU - Bonnet-Dorion, Françoise
AU - Sevenet, Nicolas
AU - Guillaud-Bataille, Marine
AU - Rouleau, Etienne
AU - Bressac-de Paillerets, Brigitte
AU - Wappenschmidt, Barbara
AU - Rossing, Maria
AU - Muller, Danielle
AU - Bourdon, Violaine
AU - Revillon, Françoise
AU - Parsons, Michael T
AU - Rousselin, Antoine
AU - Davy, Grégoire
AU - Castelain, Gaia
AU - Castéra, Laurent
AU - Sokolowska, Joanna
AU - Coulet, Florence
AU - Delnatte, Capucine
AU - Férec, Claude
AU - Spurdle, Amanda B
AU - Martins, Alexandra
AU - Krieger, Sophie
AU - Houdayer, Claude
PY - 2018
Y1 - 2018
N2 - Variant interpretation is the key issue in molecular diagnosis. Spliceogenic variants exemplify this issue as each nucleotide variant can be deleterious via disruption or creation of splice site consensus sequences. Consequently, reliable in silico prediction of variant spliceogenicity would be a major improvement. Thanks to an international effort, a set of 395 variants studied at the mRNA level and occurring in 5' and 3' consensus regions (defined as the 11 and 14 bases surrounding the exon/intron junction, respectively) was collected for 11 different genes, including BRCA1, BRCA2, CFTR and RHD, and used to train and validate a new prediction protocol named Splicing Prediction in Consensus Elements (SPiCE). SPiCE combines in silico predictions from SpliceSiteFinder-like and MaxEntScan and uses logistic regression to define optimal decision thresholds. It revealed an unprecedented sensitivity and specificity of 99.5 and 95.2%, respectively, and the impact on splicing was correctly predicted for 98.8% of variants. We therefore propose SPiCE as the new tool for predicting variant spliceogenicity. It could be easily implemented in any diagnostic laboratory as a routine decision making tool to help geneticists to face the deluge of variants in the next-generation sequencing era. SPiCE is accessible at (https://sourceforge.net/projects/spicev2-1/).
AB - Variant interpretation is the key issue in molecular diagnosis. Spliceogenic variants exemplify this issue as each nucleotide variant can be deleterious via disruption or creation of splice site consensus sequences. Consequently, reliable in silico prediction of variant spliceogenicity would be a major improvement. Thanks to an international effort, a set of 395 variants studied at the mRNA level and occurring in 5' and 3' consensus regions (defined as the 11 and 14 bases surrounding the exon/intron junction, respectively) was collected for 11 different genes, including BRCA1, BRCA2, CFTR and RHD, and used to train and validate a new prediction protocol named Splicing Prediction in Consensus Elements (SPiCE). SPiCE combines in silico predictions from SpliceSiteFinder-like and MaxEntScan and uses logistic regression to define optimal decision thresholds. It revealed an unprecedented sensitivity and specificity of 99.5 and 95.2%, respectively, and the impact on splicing was correctly predicted for 98.8% of variants. We therefore propose SPiCE as the new tool for predicting variant spliceogenicity. It could be easily implemented in any diagnostic laboratory as a routine decision making tool to help geneticists to face the deluge of variants in the next-generation sequencing era. SPiCE is accessible at (https://sourceforge.net/projects/spicev2-1/).
UR - https://www.scopus.com/pages/publications/85053156343
U2 - 10.1093/nar/gky372
DO - 10.1093/nar/gky372
M3 - Journal article
C2 - 29750258
SN - 0305-1048
VL - 46
SP - 7913
EP - 7923
JO - Nucleic Acids Research
JF - Nucleic Acids Research
IS - 15
ER -