Literature DB >> 25790785

Computationally predicting protein-RNA interactions using only positive and unlabeled examples.

Zhanzhan Cheng1, Shuigeng Zhou, Jihong Guan.   

Abstract

Protein-RNA interactions (PRIs) are considerably important in a wide variety of cellular processes, ranging from transcriptional and post-transcriptional regulations of gene expression to the active defense of host against virus. With the development of high throughput technology, large amounts of PRI information is available for computationally predicting unknown PRIs. In recent years, a number of computational methods for predicting PRIs have been developed in the literature, which usually artificially construct negative samples based on verified nonredundant datasets of PRIs to train classifiers. However, such negative samples are not real negative samples, some even may be unknown positive samples. Consequently, the classifiers trained with such training datasets cannot achieve satisfactory prediction performance. In this paper, we propose a novel method PRIPU that employs biased-support vector machine (SVM) for predicting Protein-RNA Interactions using only Positive and Unlabeled examples. To the best of our knowledge, this is the first work that predicts PRIs using only positive and unlabeled samples. We first collect known PRIs as our benchmark datasets and extract sequence-based features to represent each PRI. To reduce the dimension of feature vectors for lowering computational cost, we select a subset of features by a filter-based feature selection method. Then, biased-SVM is employed to train prediction models with different PRI datasets. To evaluate the new method, we also propose a new performance measure called explicit positive recall (EPR), which is specifically suitable for the task of learning positive and unlabeled data. Experimental results over three datasets show that our method not only outperforms four existing methods, but also is able to predict unknown PRIs. Source code, datasets and related documents of PRIPU are available at: http://admis.fudan.edu.cn/projects/pripu.htm .

Keywords:  Protein-RNA interactions; biased-SVM; prediction

Mesh:

Substances:

Year:  2015        PMID: 25790785     DOI: 10.1142/S021972001541005X

Source DB:  PubMed          Journal:  J Bioinform Comput Biol        ISSN: 0219-7200            Impact factor:   1.122


  8 in total

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2.  Selecting high-quality negative samples for effectively predicting protein-RNA interactions.

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Review 3.  The Ever-Evolving Concept of the Gene: The Use of RNA/Protein Experimental Techniques to Understand Genome Functions.

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Review 5.  Computational Prediction of RNA-Binding Proteins and Binding Sites.

Authors:  Jingna Si; Jing Cui; Jin Cheng; Rongling Wu
Journal:  Int J Mol Sci       Date:  2015-11-03       Impact factor: 5.923

6.  IPMiner: hidden ncRNA-protein interaction sequential pattern mining with stacked autoencoder for accurate computational prediction.

Authors:  Xiaoyong Pan; Yong-Xian Fan; Junchi Yan; Hong-Bin Shen
Journal:  BMC Genomics       Date:  2016-08-09       Impact factor: 3.969

7.  Fusing multiple protein-protein similarity networks to effectively predict lncRNA-protein interactions.

Authors:  Xiaoxiong Zheng; Yang Wang; Kai Tian; Jiaogen Zhou; Jihong Guan; Libo Luo; Shuigeng Zhou
Journal:  BMC Bioinformatics       Date:  2017-10-16       Impact factor: 3.169

8.  Chaperones, Membrane Trafficking and Signal Transduction Proteins Regulate Zaire Ebola Virus trVLPs and Interact With trVLP Elements.

Authors:  Dong-Shan Yu; Tian-Hao Weng; Chen-Yu Hu; Zhi-Gang Wu; Yan-Hua Li; Lin-Fang Cheng; Nan-Ping Wu; Lan-Juan Li; Hang-Ping Yao
Journal:  Front Microbiol       Date:  2018-11-12       Impact factor: 5.640

  8 in total

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