2019
DOI: 10.1093/bioinformatics/btz367
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DIFFUSE: predicting isoform functions from sequences and expression profiles via deep learning

Abstract: Motivation Alternative splicing generates multiple isoforms from a single gene, greatly increasing the functional diversity of a genome. Although gene functions have been well studied, little is known about the specific functions of isoforms, making accurate prediction of isoform functions highly desirable. However, the existing approaches to predicting isoform functions are far from satisfactory due to at least two reasons: (i) unlike genes, isoform-level functional annotations are scarce. (… Show more

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Cited by 35 publications
(68 citation statements)
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“…For instance, alternative splicing of mouse transcription factors changed domain composition of the mRNA isoforms, leading to tissue-specific isoforms with distinct functions [ 52 ]. Deep learning-based prediction of IsoForm FUnctions from Sequences and Expression (DIFFUSE) [ 32 ] uses both mRNA isoform sequence specific features and information from expression profiles to predict mRNA isoform functions.…”
Section: Mrna Isoform Level Machine Learning Methodsmentioning
confidence: 99%
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“…For instance, alternative splicing of mouse transcription factors changed domain composition of the mRNA isoforms, leading to tissue-specific isoforms with distinct functions [ 52 ]. Deep learning-based prediction of IsoForm FUnctions from Sequences and Expression (DIFFUSE) [ 32 ] uses both mRNA isoform sequence specific features and information from expression profiles to predict mRNA isoform functions.…”
Section: Mrna Isoform Level Machine Learning Methodsmentioning
confidence: 99%
“…Previously, machine learning methods have been used to address a multitude of problems, some of which include, drug target discovery, gene function prediction, protein–protein interaction (PPI) prediction, protein structure and functional site prediction, and subcellular localization protein prediction [ 21 , 22 , 23 , 24 , 25 , 26 , 27 ]. More recently, several machine learning and recommendation system methods have also been developed to predict the biological functions of mRNA isoforms [ 28 , 29 , 30 , 31 , 32 , 33 , 34 , 35 , 36 , 37 , 38 ]. These methods have been successful in predicting gene functions at the level of mRNA isoforms and provide an added advantage over experimental approaches in terms of time and resources.…”
Section: Introductionmentioning
confidence: 99%
“…The above equation can simultaneously distribute GDAs to individual isoforms and induce a classifier to predict IDAs. However, it ignores the important genomics data, which carry important information to boost the performance of isoform function prediction and to identify the genetic determinants of disease [3,37]. Similarly, the incorporation of genomic data can also improve the performance of predicting IDAs.…”
Section: Isoform-disease Associations Predictionmentioning
confidence: 99%
“…The co-expression pattern of isoforms also carry important information about the functions of isoforms [3,40], whose usage also boosts the prediction of IDAs. In addition, the expression of isoforms has tissue specificity [7,38].…”
Section: Vnmentioning
confidence: 99%
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