Deep Learning and Applications in Computational Biology

来源 :第七届全国生物信息学与系统生物学学术大会 | 被引量 : 0次 | 上传用户:proudboy_linux_wzh
下载到本地 , 更方便阅读
声明 : 本文档内容版权归属内容提供方 , 如果您对本文有版权争议 , 可与客服联系进行内容授权或下架
论文部分内容阅读
  RNA-binding proteins (RBPs) play important roles in the post-transcriptional control of RNAs.Identifying RBP binding sites and characterizing RBP binding preferences are key steps toward understanding the basic mechanisms of the post-transcriptional gene regulation.Though numerous computational methods have been developed for modeling RBP binding preferences,discovering a complete structural representation of the RBP targets by integrating their available structural features in all three dimensions is still a challenging task.In this paper,we develop a general and flexible deep learning framework for modeling structural binding preferences and predicting binding sites of RBPs,which takes (predicted) RNA tertiary structural information into account for the first time.Our framework constructs a unified representation that characterizes the structural specificities of RBP targets in all three dimensions,which can be further used to predict novel candidate binding sites and discover potential binding motifs.Through testing on the real CLIP-seq datasets,we have demonstrated that our deep learning framework can automatically extract effective hidden structural features from the encoded raw sequence and structural profiles,and predict accurate RBP binding sites.In addition,we have conducted thefirst study to show that integrating the additional RNA tertiary structural features can improve the model performance in predicting RBP binding sites,especially for the polypyrimidine tract-binding protein (PTB),which also provides a new evidence to support the view that RBPs may own specific tertiary structural binding preferences.In particular,the tests on the internal ribosome entry site (IRES) segments yield satisfiable results with experimental support from the literature and further demonstrate the necessity of incorporating RNA tertiary structural information into the prediction model.The source code of our approach can be found in https://github.com/thucombio/deepnet-rbp.
其他文献
  The overall topology and interracial interactions play key roles in understanding structural and functional principles of protein complexes.Elastic network
  I will introduce and present two bioinformatics software packages,RNAfinder and RNAstructure and their biological (i.e.,plant) and medical (i.e.,cancer) app
  Despite the explosion in the numbers of cancer genomic studies,metastasis is still the major cause of cancer mortality.In breast cancer,approximately one-fi
  The common transition metal ions include Fe2+,Fe3+,Mg2+,Mn2+,Zn2+,Cu2+and so on.They play the role of stability,helping maintain protein structure and regul
  Knowledge about protein interaction sites provides detailed information of protein-protein interactions (PPIs).To date,nearly twenty thousands of PPIs from
  Drug safety is one of the key issues in the future realization of precision medicine.However,the molecular basis of the adverse drug reactions (ADRs) has no
  Associating genotype to phenotype at the molecular level is always a challenge.In "the Informational (Genetic) Word" all relationships are described in DNA
  With the advances of high throughput sequencing technology and precision medicine,precision healthcare will become next frontier both for scientific researc
  Computational design of peptide ligands that can potently and specifically recognize and bind to disease-related protein targets has attracted great interes
  In this century,the rapid development of genomics biotechnologies,large data storage technologies,mobile network technology and portable medical devices mak