Predicting the impact of coding and noncoding variants on splicing is challenging, particularly in non-canonical splice sites, leading to missed diagnoses in patients. Existing splice prediction tools are complementary but knowing which to use for each splicing context remains difficult. Here, we describe Introme, which uses machine learning to integrate predictions from several splice detection tools, additional splicing rules, and gene architecture features to comprehensively evaluate the likelihood of a variant impacting splicing. Through extensive benchmarking across 21,000 splice-altering variants, Introme outperformed all tools (auPRC: 0.98) for the detection of clinically significant splice variants. Introme is available at https://g...
We construct and analyse a computational model that predicts the outcome of alternative splicing by ...
Item does not contain fulltextHereditary disorders are frequently caused by genetic variants that af...
The development of computational methods to assess pathogenicity of pre-messenger RNA splicing varia...
Introme is an in silico splice predictor that evaluates a variant’s likelihood of altering splicing ...
To facilitate precision medicine and whole genome annotation, we developed a machine learning techni...
As with any complex biological pathway, the splicing process has both advantages and obstacles with ...
Defects in pre-mRNA splicing are frequently a cause of Mendelian disease. Despite the advent of next...
Alternative splicing of mRNA is tightly regulated in different tissues and developmental stages and ...
Alternative splicing of mRNA is tightly regulated in different tissues and developmental stages and ...
The contribution of deep intronic splice-altering variants to hereditary breast and ovarian cancer (...
Background The diagnostic rate in Mendelian disorders continues to hover around 50% after genomic t...
Abstract Background Variants that disrupt mRNA splicing account for a sizable fraction of the pathog...
Interpretation of variants present in complete genomes or exomes reveals numerous sequence changes, ...
Interpretation of variants present in complete genomes or exomes reveals numerous sequence changes, ...
We construct and analyse a computational model that predicts the outcome of alternative splicing by ...
We construct and analyse a computational model that predicts the outcome of alternative splicing by ...
Item does not contain fulltextHereditary disorders are frequently caused by genetic variants that af...
The development of computational methods to assess pathogenicity of pre-messenger RNA splicing varia...
Introme is an in silico splice predictor that evaluates a variant’s likelihood of altering splicing ...
To facilitate precision medicine and whole genome annotation, we developed a machine learning techni...
As with any complex biological pathway, the splicing process has both advantages and obstacles with ...
Defects in pre-mRNA splicing are frequently a cause of Mendelian disease. Despite the advent of next...
Alternative splicing of mRNA is tightly regulated in different tissues and developmental stages and ...
Alternative splicing of mRNA is tightly regulated in different tissues and developmental stages and ...
The contribution of deep intronic splice-altering variants to hereditary breast and ovarian cancer (...
Background The diagnostic rate in Mendelian disorders continues to hover around 50% after genomic t...
Abstract Background Variants that disrupt mRNA splicing account for a sizable fraction of the pathog...
Interpretation of variants present in complete genomes or exomes reveals numerous sequence changes, ...
Interpretation of variants present in complete genomes or exomes reveals numerous sequence changes, ...
We construct and analyse a computational model that predicts the outcome of alternative splicing by ...
We construct and analyse a computational model that predicts the outcome of alternative splicing by ...
Item does not contain fulltextHereditary disorders are frequently caused by genetic variants that af...
The development of computational methods to assess pathogenicity of pre-messenger RNA splicing varia...