| Literature DB >> 31070280 |
Jun Cheng1,2, Muhammed Hasan Çelik1, Thi Yen Duong Nguyen1, Žiga Avsec1,2, Julien Gagneur1,2.
Abstract
Pathogenic genetic variants often primarily affect splicing. However, it remains difficult to quantitatively predict whether and how genetic variants affect splicing. In 2018, the fifth edition of the Critical Assessment of Genome Interpretation proposed two splicing prediction challenges based on experimental perturbation assays: Vex-seq, assessing exon skipping, and MaPSy, assessing splicing efficiency. We developed a modular modeling framework, MMSplice, the performance of which was among the best on both challenges. Here we provide insights into the modeling assumptions of MMSplice and its individual modules. We furthermore illustrate how MMSplice can be applied in practice for individual genome interpretation, using the MMSplice VEP plugin and the Kipoi variant interpretation plugin, which are directly applicable to VCF files.Entities:
Keywords: artificial neural network; splicing; variant effect; variant interpretation
Mesh:
Year: 2019 PMID: 31070280 PMCID: PMC7241300 DOI: 10.1002/humu.23788
Source DB: PubMed Journal: Hum Mutat ISSN: 1059-7794 Impact factor: 4.878