A Comprehensive Review on RNA Subcellular Localization Prediction
Journal:
arXiv
Published Date:
Apr 24, 2025
Abstract
The subcellular localization of RNAs, including long non-coding RNAs
(lncRNAs), messenger RNAs (mRNAs), microRNAs (miRNAs) and other smaller RNAs,
plays a critical role in determining their biological functions. For instance,
lncRNAs are predominantly associated with chromatin and act as regulators of
gene transcription and chromatin structure, while mRNAs are distributed across
the nucleus and cytoplasm, facilitating the transport of genetic information
for protein synthesis. Understanding RNA localization sheds light on processes
like gene expression regulation with spatial and temporal precision. However,
traditional wet lab methods for determining RNA localization, such as in situ
hybridization, are often time-consuming, resource-demanding, and costly. To
overcome these challenges, computational methods leveraging artificial
intelligence (AI) and machine learning (ML) have emerged as powerful
alternatives, enabling large-scale prediction of RNA subcellular localization.
This paper provides a comprehensive review of the latest advancements in
AI-based approaches for RNA subcellular localization prediction, covering
various RNA types and focusing on sequence-based, image-based, and hybrid
methodologies that combine both data types. We highlight the potential of these
methods to accelerate RNA research, uncover molecular pathways, and guide
targeted disease treatments. Furthermore, we critically discuss the challenges
in AI/ML approaches for RNA subcellular localization, such as data scarcity and
lack of benchmarks, and opportunities to address them. This review aims to
serve as a valuable resource for researchers seeking to develop innovative
solutions in the field of RNA subcellular localization and beyond.