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Predicting dynamic cellular protein–RNA interactions by deep learning using in vivo RNA structures
by
Xiong, Tuanlin
, Tang, Lei
, Xu, Kui
, Sun, Lei
, Yang, Yucheng T.
, Zhang, Qiangfeng Cliff
, Huang, Wenze
, Li, Pan
in
45/43
/ 45/91
/ 631/1647/48
/ 631/337
/ 631/80/304
/ Binding Sites
/ Biomedical and Life Sciences
/ Cell Biology
/ Cellular structure
/ Deep Learning
/ Depth profiling
/ Gene expression
/ Humans
/ Life Sciences
/ Nucleotide sequence
/ Nucleotides
/ Protein Binding
/ Proteins
/ Ribonucleic acid
/ RNA
/ RNA - metabolism
/ RNA-binding protein
/ RNA-Binding Proteins - genetics
/ RNA-Binding Proteins - metabolism
/ Transcriptome
/ Transcriptomes
2021
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Predicting dynamic cellular protein–RNA interactions by deep learning using in vivo RNA structures
by
Xiong, Tuanlin
, Tang, Lei
, Xu, Kui
, Sun, Lei
, Yang, Yucheng T.
, Zhang, Qiangfeng Cliff
, Huang, Wenze
, Li, Pan
in
45/43
/ 45/91
/ 631/1647/48
/ 631/337
/ 631/80/304
/ Binding Sites
/ Biomedical and Life Sciences
/ Cell Biology
/ Cellular structure
/ Deep Learning
/ Depth profiling
/ Gene expression
/ Humans
/ Life Sciences
/ Nucleotide sequence
/ Nucleotides
/ Protein Binding
/ Proteins
/ Ribonucleic acid
/ RNA
/ RNA - metabolism
/ RNA-binding protein
/ RNA-Binding Proteins - genetics
/ RNA-Binding Proteins - metabolism
/ Transcriptome
/ Transcriptomes
2021
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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?
Predicting dynamic cellular protein–RNA interactions by deep learning using in vivo RNA structures
by
Xiong, Tuanlin
, Tang, Lei
, Xu, Kui
, Sun, Lei
, Yang, Yucheng T.
, Zhang, Qiangfeng Cliff
, Huang, Wenze
, Li, Pan
in
45/43
/ 45/91
/ 631/1647/48
/ 631/337
/ 631/80/304
/ Binding Sites
/ Biomedical and Life Sciences
/ Cell Biology
/ Cellular structure
/ Deep Learning
/ Depth profiling
/ Gene expression
/ Humans
/ Life Sciences
/ Nucleotide sequence
/ Nucleotides
/ Protein Binding
/ Proteins
/ Ribonucleic acid
/ RNA
/ RNA - metabolism
/ RNA-binding protein
/ RNA-Binding Proteins - genetics
/ RNA-Binding Proteins - metabolism
/ Transcriptome
/ Transcriptomes
2021
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Predicting dynamic cellular protein–RNA interactions by deep learning using in vivo RNA structures
Journal Article
Predicting dynamic cellular protein–RNA interactions by deep learning using in vivo RNA structures
2021
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Overview
Interactions with RNA-binding proteins (RBPs) are integral to RNA function and cellular regulation, and dynamically reflect specific cellular conditions. However, presently available tools for predicting RBP–RNA interactions employ RNA sequence and/or predicted RNA structures, and therefore do not capture their condition-dependent nature. Here, after profiling transcriptome-wide in vivo RNA secondary structures in seven cell types, we developed PrismNet, a deep learning tool that integrates experimental in vivo RNA structure data and RBP binding data for matched cells to accurately predict dynamic RBP binding in various cellular conditions. PrismNet results for 168 RBPs support its utility for both understanding CLIP-seq results and largely extending such interaction data to accurately analyze additional cell types. Further, PrismNet employs an “attention” strategy to computationally identify exact RBP-binding nucleotides, and we discovered enrichment among dynamic RBP-binding sites for structure-changing variants (riboSNitches), which can link genetic diseases with dysregulated RBP bindings. Our rich profiling data and deep learning-based prediction tool provide access to a previously inaccessible layer of cell-type-specific RBP–RNA interactions, with clear utility for understanding and treating human diseases.
Publisher
Springer Singapore,Nature Publishing Group
Subject
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