Cargando…

A deep learning framework to predict binding preference of RNA constituents on protein surface

Protein-RNA interaction plays important roles in post-transcriptional regulation. However, the task of predicting these interactions given a protein structure is difficult. Here we show that, by leveraging a deep learning model NucleicNet, attributes such as binding preference of RNA backbone consti...

Descripción completa

Detalles Bibliográficos
Autores principales: Lam, Jordy Homing, Li, Yu, Zhu, Lizhe, Umarov, Ramzan, Jiang, Hanlun, Héliou, Amélie, Sheong, Fu Kit, Liu, Tianyun, Long, Yongkang, Li, Yunfei, Fang, Liang, Altman, Russ B., Chen, Wei, Huang, Xuhui, Gao, Xin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6821705/
https://www.ncbi.nlm.nih.gov/pubmed/31666519
http://dx.doi.org/10.1038/s41467-019-12920-0
_version_ 1783464180530020352
author Lam, Jordy Homing
Li, Yu
Zhu, Lizhe
Umarov, Ramzan
Jiang, Hanlun
Héliou, Amélie
Sheong, Fu Kit
Liu, Tianyun
Long, Yongkang
Li, Yunfei
Fang, Liang
Altman, Russ B.
Chen, Wei
Huang, Xuhui
Gao, Xin
author_facet Lam, Jordy Homing
Li, Yu
Zhu, Lizhe
Umarov, Ramzan
Jiang, Hanlun
Héliou, Amélie
Sheong, Fu Kit
Liu, Tianyun
Long, Yongkang
Li, Yunfei
Fang, Liang
Altman, Russ B.
Chen, Wei
Huang, Xuhui
Gao, Xin
author_sort Lam, Jordy Homing
collection PubMed
description Protein-RNA interaction plays important roles in post-transcriptional regulation. However, the task of predicting these interactions given a protein structure is difficult. Here we show that, by leveraging a deep learning model NucleicNet, attributes such as binding preference of RNA backbone constituents and different bases can be predicted from local physicochemical characteristics of protein structure surface. On a diverse set of challenging RNA-binding proteins, including Fem-3-binding-factor 2, Argonaute 2 and Ribonuclease III, NucleicNet can accurately recover interaction modes discovered by structural biology experiments. Furthermore, we show that, without seeing any in vitro or in vivo assay data, NucleicNet can still achieve consistency with experiments, including RNAcompete, Immunoprecipitation Assay, and siRNA Knockdown Benchmark. NucleicNet can thus serve to provide quantitative fitness of RNA sequences for given binding pockets or to predict potential binding pockets and binding RNAs for previously unknown RNA binding proteins.
format Online
Article
Text
id pubmed-6821705
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher Nature Publishing Group UK
record_format MEDLINE/PubMed
spelling pubmed-68217052019-11-01 A deep learning framework to predict binding preference of RNA constituents on protein surface Lam, Jordy Homing Li, Yu Zhu, Lizhe Umarov, Ramzan Jiang, Hanlun Héliou, Amélie Sheong, Fu Kit Liu, Tianyun Long, Yongkang Li, Yunfei Fang, Liang Altman, Russ B. Chen, Wei Huang, Xuhui Gao, Xin Nat Commun Article Protein-RNA interaction plays important roles in post-transcriptional regulation. However, the task of predicting these interactions given a protein structure is difficult. Here we show that, by leveraging a deep learning model NucleicNet, attributes such as binding preference of RNA backbone constituents and different bases can be predicted from local physicochemical characteristics of protein structure surface. On a diverse set of challenging RNA-binding proteins, including Fem-3-binding-factor 2, Argonaute 2 and Ribonuclease III, NucleicNet can accurately recover interaction modes discovered by structural biology experiments. Furthermore, we show that, without seeing any in vitro or in vivo assay data, NucleicNet can still achieve consistency with experiments, including RNAcompete, Immunoprecipitation Assay, and siRNA Knockdown Benchmark. NucleicNet can thus serve to provide quantitative fitness of RNA sequences for given binding pockets or to predict potential binding pockets and binding RNAs for previously unknown RNA binding proteins. Nature Publishing Group UK 2019-10-30 /pmc/articles/PMC6821705/ /pubmed/31666519 http://dx.doi.org/10.1038/s41467-019-12920-0 Text en © The Author(s) 2019 Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The images or other third party material in this article are included in the article’s Creative Commons license, unless indicated otherwise in a credit line to the material. If material is not included in the article’s Creative Commons license and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this license, visit http://creativecommons.org/licenses/by/4.0/.
spellingShingle Article
Lam, Jordy Homing
Li, Yu
Zhu, Lizhe
Umarov, Ramzan
Jiang, Hanlun
Héliou, Amélie
Sheong, Fu Kit
Liu, Tianyun
Long, Yongkang
Li, Yunfei
Fang, Liang
Altman, Russ B.
Chen, Wei
Huang, Xuhui
Gao, Xin
A deep learning framework to predict binding preference of RNA constituents on protein surface
title A deep learning framework to predict binding preference of RNA constituents on protein surface
title_full A deep learning framework to predict binding preference of RNA constituents on protein surface
title_fullStr A deep learning framework to predict binding preference of RNA constituents on protein surface
title_full_unstemmed A deep learning framework to predict binding preference of RNA constituents on protein surface
title_short A deep learning framework to predict binding preference of RNA constituents on protein surface
title_sort deep learning framework to predict binding preference of rna constituents on protein surface
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6821705/
https://www.ncbi.nlm.nih.gov/pubmed/31666519
http://dx.doi.org/10.1038/s41467-019-12920-0
work_keys_str_mv AT lamjordyhoming adeeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT liyu adeeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT zhulizhe adeeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT umarovramzan adeeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT jianghanlun adeeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT heliouamelie adeeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT sheongfukit adeeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT liutianyun adeeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT longyongkang adeeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT liyunfei adeeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT fangliang adeeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT altmanrussb adeeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT chenwei adeeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT huangxuhui adeeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT gaoxin adeeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT lamjordyhoming deeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT liyu deeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT zhulizhe deeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT umarovramzan deeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT jianghanlun deeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT heliouamelie deeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT sheongfukit deeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT liutianyun deeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT longyongkang deeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT liyunfei deeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT fangliang deeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT altmanrussb deeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT chenwei deeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT huangxuhui deeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface
AT gaoxin deeplearningframeworktopredictbindingpreferenceofrnaconstituentsonproteinsurface