CADD-Splice—improving genome-wide variant effect prediction using deep learning-derived splice scores
Abstract Background Splicing of genomic exons into mRNAs is a critical prerequisite for the accurate synthesis of human proteins. Genetic variants impacting splicing underlie a substantial proportion of genetic disease, but are challenging to identify beyond those occurring at donor and acceptor din...
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doaj-a6810bffd44a4aa7889ebdb3fdbb2b6f2021-02-23T09:11:12ZengBMCGenome Medicine1756-994X2021-02-0113111210.1186/s13073-021-00835-9CADD-Splice—improving genome-wide variant effect prediction using deep learning-derived splice scoresPhilipp Rentzsch0Max Schubach1Jay Shendure2Martin Kircher3Charité - Universitätsmedizin BerlinCharité - Universitätsmedizin BerlinBrotman Baty Institute for Precision Medicine, University of WashingtonCharité - Universitätsmedizin BerlinAbstract Background Splicing of genomic exons into mRNAs is a critical prerequisite for the accurate synthesis of human proteins. Genetic variants impacting splicing underlie a substantial proportion of genetic disease, but are challenging to identify beyond those occurring at donor and acceptor dinucleotides. To address this, various methods aim to predict variant effects on splicing. Recently, deep neural networks (DNNs) have been shown to achieve better results in predicting splice variants than other strategies. Methods It has been unclear how best to integrate such process-specific scores into genome-wide variant effect predictors. Here, we use a recently published experimental data set to compare several machine learning methods that score variant effects on splicing. We integrate the best of those approaches into general variant effect prediction models and observe the effect on classification of known pathogenic variants. Results We integrate two specialized splicing scores into CADD (Combined Annotation Dependent Depletion; cadd.gs.washington.edu ), a widely used tool for genome-wide variant effect prediction that we previously developed to weight and integrate diverse collections of genomic annotations. With this new model, CADD-Splice, we show that inclusion of splicing DNN effect scores substantially improves predictions across multiple variant categories, without compromising overall performance. Conclusions While splice effect scores show superior performance on splice variants, specialized predictors cannot compete with other variant scores in general variant interpretation, as the latter account for nonsense and missense effects that do not alter splicing. Although only shown here for splice scores, we believe that the applied approach will generalize to other specific molecular processes, providing a path for the further improvement of genome-wide variant effect prediction.https://doi.org/10.1186/s13073-021-00835-9 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Philipp Rentzsch Max Schubach Jay Shendure Martin Kircher |
spellingShingle |
Philipp Rentzsch Max Schubach Jay Shendure Martin Kircher CADD-Splice—improving genome-wide variant effect prediction using deep learning-derived splice scores Genome Medicine |
author_facet |
Philipp Rentzsch Max Schubach Jay Shendure Martin Kircher |
author_sort |
Philipp Rentzsch |
title |
CADD-Splice—improving genome-wide variant effect prediction using deep learning-derived splice scores |
title_short |
CADD-Splice—improving genome-wide variant effect prediction using deep learning-derived splice scores |
title_full |
CADD-Splice—improving genome-wide variant effect prediction using deep learning-derived splice scores |
title_fullStr |
CADD-Splice—improving genome-wide variant effect prediction using deep learning-derived splice scores |
title_full_unstemmed |
CADD-Splice—improving genome-wide variant effect prediction using deep learning-derived splice scores |
title_sort |
cadd-splice—improving genome-wide variant effect prediction using deep learning-derived splice scores |
publisher |
BMC |
series |
Genome Medicine |
issn |
1756-994X |
publishDate |
2021-02-01 |
description |
Abstract Background Splicing of genomic exons into mRNAs is a critical prerequisite for the accurate synthesis of human proteins. Genetic variants impacting splicing underlie a substantial proportion of genetic disease, but are challenging to identify beyond those occurring at donor and acceptor dinucleotides. To address this, various methods aim to predict variant effects on splicing. Recently, deep neural networks (DNNs) have been shown to achieve better results in predicting splice variants than other strategies. Methods It has been unclear how best to integrate such process-specific scores into genome-wide variant effect predictors. Here, we use a recently published experimental data set to compare several machine learning methods that score variant effects on splicing. We integrate the best of those approaches into general variant effect prediction models and observe the effect on classification of known pathogenic variants. Results We integrate two specialized splicing scores into CADD (Combined Annotation Dependent Depletion; cadd.gs.washington.edu ), a widely used tool for genome-wide variant effect prediction that we previously developed to weight and integrate diverse collections of genomic annotations. With this new model, CADD-Splice, we show that inclusion of splicing DNN effect scores substantially improves predictions across multiple variant categories, without compromising overall performance. Conclusions While splice effect scores show superior performance on splice variants, specialized predictors cannot compete with other variant scores in general variant interpretation, as the latter account for nonsense and missense effects that do not alter splicing. Although only shown here for splice scores, we believe that the applied approach will generalize to other specific molecular processes, providing a path for the further improvement of genome-wide variant effect prediction. |
url |
https://doi.org/10.1186/s13073-021-00835-9 |
work_keys_str_mv |
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