EVlncRNA-Dpred: improved prediction of experimentally validated lncRNAs by deep learning

Author:

Zhou Bailing1ORCID,Ding Maolin2,Feng Jing1,Ji Baohua1,Huang Pingping1,Zhang Junye1,Yu Xue1,Cao Zanxia1,Yang Yuedong2,Zhou Yaoqi3,Wang Jihua1

Affiliation:

1. Shandong Provincial Key Laboratory of Biophysics, Institute of Biophysics, Dezhou University , Dezhou 253023 , China

2. School of Computer Science and Engineering, Sun Yat-sen University , Guangzhou 510000 , China

3. Institute for Systems and Physical Biology, Shenzhen Bay Laboratory , Shenzhen 518055 , China

Abstract

Abstract Long non-coding RNAs (lncRNAs) played essential roles in nearly every biological process and disease. Many algorithms were developed to distinguish lncRNAs from mRNAs in transcriptomic data and facilitated discoveries of more than 600 000 of lncRNAs. However, only a tiny fraction (<1%) of lncRNA transcripts (~4000) were further validated by low-throughput experiments (EVlncRNAs). Given the cost and labor-intensive nature of experimental validations, it is necessary to develop computational tools to prioritize those potentially functional lncRNAs because many lncRNAs from high-throughput sequencing (HTlncRNAs) could be resulted from transcriptional noises. Here, we employed deep learning algorithms to separate EVlncRNAs from HTlncRNAs and mRNAs. For overcoming the challenge of small datasets, we employed a three-layer deep-learning neural network (DNN) with a K-mer feature as the input and a small convolutional neural network (CNN) with one-hot encoding as the input. Three separate models were trained for human (h), mouse (m) and plant (p), respectively. The final concatenated models (EVlncRNA-Dpred (h), EVlncRNA-Dpred (m) and EVlncRNA-Dpred (p)) provided substantial improvement over a previous model based on support-vector-machines (EVlncRNA-pred). For example, EVlncRNA-Dpred (h) achieved 0.896 for the area under receiver-operating characteristic curve, compared with 0.582 given by sequence-based EVlncRNA-pred model. The models developed here should be useful for screening lncRNA transcripts for experimental validations. EVlncRNA-Dpred is available as a web server at https://www.sdklab-biophysics-dzu.net/EVlncRNA-Dpred/index.html, and the data and source code can be freely available along with the web server.

Funder

National Natural Science Foundation of China

Youth Talent Introduction and Education Program of Shandong Educational Committee

Natural Science Foundation of Shandong Province

Talent Introduction Project of Dezhou University

Enterprise Project

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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