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Machine Learning Approaches for the Prioritization of Genomic Variants Impacting Pre-mRNA Splicing
by
Baralle, Diana
, Ellingford, Jamie M
, Rowlands, Charlie F
in
Binding sites
/ Computational Biology - methods
/ Datasets
/ Gene expression
/ Genetic Predisposition to Disease
/ Genetic Variation
/ Genomes
/ Genomics
/ Genomics - methods
/ Humans
/ Learning algorithms
/ Machine Learning
/ Models, Biological
/ Molecular Sequence Annotation
/ mRNA
/ Mutation
/ Next-generation sequencing
/ Patients
/ Predictions
/ Review
/ RNA Precursors - genetics
/ RNA Splicing
/ Splicing
2019
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Machine Learning Approaches for the Prioritization of Genomic Variants Impacting Pre-mRNA Splicing
by
Baralle, Diana
, Ellingford, Jamie M
, Rowlands, Charlie F
in
Binding sites
/ Computational Biology - methods
/ Datasets
/ Gene expression
/ Genetic Predisposition to Disease
/ Genetic Variation
/ Genomes
/ Genomics
/ Genomics - methods
/ Humans
/ Learning algorithms
/ Machine Learning
/ Models, Biological
/ Molecular Sequence Annotation
/ mRNA
/ Mutation
/ Next-generation sequencing
/ Patients
/ Predictions
/ Review
/ RNA Precursors - genetics
/ RNA Splicing
/ Splicing
2019
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Machine Learning Approaches for the Prioritization of Genomic Variants Impacting Pre-mRNA Splicing
by
Baralle, Diana
, Ellingford, Jamie M
, Rowlands, Charlie F
in
Binding sites
/ Computational Biology - methods
/ Datasets
/ Gene expression
/ Genetic Predisposition to Disease
/ Genetic Variation
/ Genomes
/ Genomics
/ Genomics - methods
/ Humans
/ Learning algorithms
/ Machine Learning
/ Models, Biological
/ Molecular Sequence Annotation
/ mRNA
/ Mutation
/ Next-generation sequencing
/ Patients
/ Predictions
/ Review
/ RNA Precursors - genetics
/ RNA Splicing
/ Splicing
2019
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Machine Learning Approaches for the Prioritization of Genomic Variants Impacting Pre-mRNA Splicing
Journal Article
Machine Learning Approaches for the Prioritization of Genomic Variants Impacting Pre-mRNA Splicing
2019
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Overview
Defects in pre-mRNA splicing are frequently a cause of Mendelian disease. Despite the advent of next-generation sequencing, allowing a deeper insight into a patient’s variant landscape, the ability to characterize variants causing splicing defects has not progressed with the same speed. To address this, recent years have seen a sharp spike in the number of splice prediction tools leveraging machine learning approaches, leaving clinical geneticists with a plethora of choices for in silico analysis. In this review, some basic principles of machine learning are introduced in the context of genomics and splicing analysis. A critical comparative approach is then used to describe seven recent machine learning-based splice prediction tools, revealing highly diverse approaches and common caveats. We find that, although great progress has been made in producing specific and sensitive tools, there is still much scope for personalized approaches to prediction of variant impact on splicing. Such approaches may increase diagnostic yields and underpin improvements to patient care.
Publisher
MDPI AG,MDPI
Subject
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