生物
RNA剪接
管道(软件)
计算生物学
选择性拼接
内含子
遗传学
机器学习
信使核糖核酸
基因
人工智能
生物信息学
计算机科学
核糖核酸
程序设计语言
作者
Raphaël Leman,Béatrice Parfait,Dominique Vidaud,Emmanuelle Girodon,Laurence Pacot,Gérald Le Gac,Chandran Ka,Claude Férec,Yann Fichou,Céline Quesnelle,Camille Aucouturier,Etienne Müller,Dominique Vaur,Laurent Castéra,Flavie Boulouard,Agathe Ricou,Hélène Tubeuf,Omar Soukarieh,Pascaline Gaildrat,Florence Riant
出处
期刊:Human Mutation
[Wiley]
日期:2022-10-23
卷期号:43 (12): 2308-2323
被引量:63
摘要
Modeling splicing is essential for tackling the challenge of variant interpretation as each nucleotide variation can be pathogenic by affecting pre-mRNA splicing via disruption/creation of splicing motifs such as 5′/3′ splice sites, branch sites, or splicing regulatory elements. Unfortunately, most in silico tools focus on a specific type of splicing motif, which is why we developed the Splicing Prediction Pipeline (SPiP) to perform, in one single bioinformatic analysis based on a machine learning approach, a comprehensive assessment of the variant effect on different splicing motifs. We gathered a curated set of 4616 variants scattered all along the sequence of 227 genes, with their corresponding splicing studies. The Bayesian analysis provided us with the number of control variants, that is, variants without impact on splicing, to mimic the deluge of variants from high-throughput sequencing data. Results show that SPiP can deal with the diversity of splicing alterations, with 83.13% sensitivity and 99% specificity to detect spliceogenic variants. Overall performance as measured by area under the receiving operator curve was 0.986, better than SpliceAI and SQUIRLS (0.965 and 0.766) for the same data set. SPiP lends itself to a unique suite for comprehensive prediction of spliceogenicity in the genomic medicine era. SPiP is available at: https://sourceforge.net/projects/splicing-prediction-pipeline/.
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