» Articles » PMID: 38528797

BioDeepfuse: a Hybrid Deep Learning Approach with Integrated Feature Extraction Techniques for Enhanced Non-coding RNA Classification

Overview
Journal RNA Biol
Specialty Molecular Biology
Date 2024 Mar 26
PMID 38528797
Authors
Affiliations
Soon will be listed here.
Abstract

The accurate classification of non-coding RNA (ncRNA) sequences is pivotal for advanced non-coding genome annotation and analysis, a fundamental aspect of genomics that facilitates understanding of ncRNA functions and regulatory mechanisms in various biological processes. While traditional machine learning approaches have been employed for distinguishing ncRNA, these often necessitate extensive feature engineering. Recently, deep learning algorithms have provided advancements in ncRNA classification. This study presents BioDeepFuse, a hybrid deep learning framework integrating convolutional neural networks (CNN) or bidirectional long short-term memory (BiLSTM) networks with handcrafted features for enhanced accuracy. This framework employs a combination of mer one-hot, mer dictionary, and feature extraction techniques for input representation. Extracted features, when embedded into the deep network, enable optimal utilization of spatial and sequential nuances of ncRNA sequences. Using benchmark datasets and real-world RNA samples from bacterial organisms, we evaluated the performance of BioDeepFuse. Results exhibited high accuracy in ncRNA classification, underscoring the robustness of our tool in addressing complex ncRNA sequence data challenges. The effective melding of CNN or BiLSTM with external features heralds promising directions for future research, particularly in refining ncRNA classifiers and deepening insights into ncRNAs in cellular processes and disease manifestations. In addition to its original application in the context of bacterial organisms, the methodologies and techniques integrated into our framework can potentially render BioDeepFuse effective in various and broader domains.

Citing Articles

MMnc: multi-modal interpretable representation for non-coding RNA classification and class annotation.

Creux C, Zehraoui F, Radvanyi F, Tahi F Bioinformatics. 2025; 41(3).

PMID: 39891346 PMC: 11890286. DOI: 10.1093/bioinformatics/btaf051.


PseUpred-ELPSO Is an Ensemble Learning Predictor with Particle Swarm Optimizer for Improving the Prediction of RNA Pseudouridine Sites.

Wang X, Li P, Wang R, Gao X Biology (Basel). 2024; 13(4).

PMID: 38666860 PMC: 11048358. DOI: 10.3390/biology13040248.

References
1.
Qu S, Zhong Y, Shang R, Zhang X, Song W, Kjems J . The emerging landscape of circular RNA in life processes. RNA Biol. 2016; 14(8):992-999. PMC: 5680710. DOI: 10.1080/15476286.2016.1220473. View

2.
Xu D, Yuan W, Fan C, Liu B, Lu M, Zhang J . Opportunities and Challenges of Predictive Approaches for the Non-coding RNA in Plants. Front Plant Sci. 2022; 13:890663. PMC: 9048598. DOI: 10.3389/fpls.2022.890663. View

3.
Fiannaca A, La Rosa M, La Paglia L, Rizzo R, Urso A . nRC: non-coding RNA Classifier based on structural features. BioData Min. 2017; 10:27. PMC: 5540506. DOI: 10.1186/s13040-017-0148-2. View

4.
Deng L, Wu H, Liu X, Liu H . DeepD2V: A Novel Deep Learning-Based Framework for Predicting Transcription Factor Binding Sites from Combined DNA Sequence. Int J Mol Sci. 2021; 22(11). PMC: 8197256. DOI: 10.3390/ijms22115521. View

5.
Wang H, Chekanova J . An Overview of Methodologies in Studying lncRNAs in the High-Throughput Era: When Acronyms ATTACK!. Methods Mol Biol. 2019; 1933:1-30. PMC: 6684206. DOI: 10.1007/978-1-4939-9045-0_1. View