Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

PreSubLncR: Predicting Subcellular Localization of Long Non-Coding RNA Based on Multi-Scale Attention Convolutional Network and Bidirectional Long Short-Term Memory Network

View through CrossRef
The subcellular localization of long non-coding RNA (lncRNA) provides important insights and opportunities for an in-depth understanding of cell biology, revealing disease mechanisms, drug development, and innovation in the biomedical field. Although several computational methods have been proposed to identify the subcellular localization of lncRNA, it is difficult to accurately predict the subcellular localization of lncRNA effectively with these methods. In this study, a new deep-learning predictor called PreSubLncR has been proposed for accurately predicting the subcellular localization of lncRNA. This predictor firstly used the word embedding model word2vec to encode the RNA sequences, and then combined multi-scale one-dimensional convolutional neural networks with attention and bidirectional long short-term memory networks to capture the different characteristics of various RNA sequences. This study used multiple RNA subcellular localization datasets for experimental validation, and the results showed that our method has higher accuracy and robustness compared with other state-of-the-art methods. It is expected to provide more in-depth insights into cell function research.
Title: PreSubLncR: Predicting Subcellular Localization of Long Non-Coding RNA Based on Multi-Scale Attention Convolutional Network and Bidirectional Long Short-Term Memory Network
Description:
The subcellular localization of long non-coding RNA (lncRNA) provides important insights and opportunities for an in-depth understanding of cell biology, revealing disease mechanisms, drug development, and innovation in the biomedical field.
Although several computational methods have been proposed to identify the subcellular localization of lncRNA, it is difficult to accurately predict the subcellular localization of lncRNA effectively with these methods.
In this study, a new deep-learning predictor called PreSubLncR has been proposed for accurately predicting the subcellular localization of lncRNA.
This predictor firstly used the word embedding model word2vec to encode the RNA sequences, and then combined multi-scale one-dimensional convolutional neural networks with attention and bidirectional long short-term memory networks to capture the different characteristics of various RNA sequences.
This study used multiple RNA subcellular localization datasets for experimental validation, and the results showed that our method has higher accuracy and robustness compared with other state-of-the-art methods.
It is expected to provide more in-depth insights into cell function research.

Related Results

Detecting RNA–RNA interactome
Detecting RNA–RNA interactome
AbstractThe last decade has seen a robust increase in various types of novel RNA molecules and their complexity in gene regulation. RNA molecules play a critical role in cellular e...
Frequency of Common Chromosomal Abnormalities in Patients with Idiopathic Acquired Aplastic Anemia
Frequency of Common Chromosomal Abnormalities in Patients with Idiopathic Acquired Aplastic Anemia
Objective: To determine the frequency of common chromosomal aberrations in local population idiopathic determine the frequency of common chromosomal aberrations in local population...
Unified mRNA Subcellular Localization Predictor based on machine learning techniques
Unified mRNA Subcellular Localization Predictor based on machine learning techniques
Abstract Background The mRNA subcellular localization bears substantial impact in the regulation of gene expression, cellular migration, and adaptat...
Indoor Localization System Based on RSSI-APIT Algorithm
Indoor Localization System Based on RSSI-APIT Algorithm
An indoor localization system based on the RSSI-APIT algorithm is designed in this study. Integrated RSSI (received signal strength indication) and non-ranging APIT (approximate pe...
RMalign: an RNA structural alignment tool based on a size independent scoring function
RMalign: an RNA structural alignment tool based on a size independent scoring function
ABSTRACT RNA-protein 3D complex structure prediction is still challenging. Recently, a template-based approach PRIME is proposed in our team to build RNA-protein co...
Prediction of Protein Subcellular Localization Based on Fusion of Multi-view Features
Prediction of Protein Subcellular Localization Based on Fusion of Multi-view Features
The prediction of protein subcellular localization is critical for inferring protein functions, gene regulations and protein-protein interactions. With the advances of high-through...
B-247 BLADE-R: streamlined RNA extraction for clinical diagnostics and high-throughput applications
B-247 BLADE-R: streamlined RNA extraction for clinical diagnostics and high-throughput applications
Abstract Background Efficient nucleic acid extraction and purification are crucial for cellular and molecular biology research, ...
Design of Turbo Trellis Coding Modulation Scheme of Rate 4/9 for Rician Fading Channel
Design of Turbo Trellis Coding Modulation Scheme of Rate 4/9 for Rician Fading Channel
When the fading channels are encountered during data communication, errors are likely to occur at the receiving end due to multipath propagation. Researchers have been consistently...

Back to Top