IRGL-RRI: interpretable graph representation learning for plant RNA–RNA interaction discovery
Qingquan Liao, Xuchong Liu, Wei Zhao, Yu Tong, Fangzheng Xu, Xinxin Liu, Yifan Chen

TL;DR
This paper introduces a new interpretable deep learning model for accurately predicting RNA-RNA interactions in plants, which can help in understanding gene functions.
Contribution
The study proposes an interpretable graph representation model combining Kolmogorov-Arnold Networks and multi-scale fusion for improved RRI prediction.
Findings
The model accurately identifies potential RNA-RNA interactions in plants.
It outperforms existing methods in capturing complex dynamic interaction mechanisms.
Case studies confirm its effectiveness for gene function annotation.
Abstract
Plant RNAs are crucial for plant gene expression and protein synthesis. They modulate the spatial structure of themselves and associated molecules, thereby influencing transcription, translation and gene expression regulation. Molecular biology experiments enhance our understanding of plant RNA-RNA interactions (RRIs), yet their complex structure and dynamic properties render these experiments expensive and time-consuming. Recent advances in deep learning have transformed plant RNA research and improved RRI prediction efficiency. However, these methods still struggle with poor prediction accuracy. To address this, this study proposes an interpretable graph representation model for accurate plant RRI prediction. The model enriches sample information by extracting features of different bases from plant RNA data and reconstructs these features using an algorithmic hierarchy approach to…
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Taxonomy
TopicsRNA and protein synthesis mechanisms · RNA Research and Splicing · Genomics and Chromatin Dynamics
