DeepLocRNA: an interpretable deep learning model for predicting RNA subcellular localization with domain-specific transfer-learning

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Dokumenter

  • Fulltext

    Forlagets udgivne version, 1,78 MB, PDF-dokument

Motivation
Accurate prediction of RNA subcellular localization plays an important role in understanding cellular processes and functions. Although post-transcriptional processes are governed by trans-acting RNA binding proteins (RBPs) through interaction with cis-regulatory RNA motifs, current methods do not incorporate RBP-binding information.

Results
In this article, we propose DeepLocRNA, an interpretable deep-learning model that leverages a pre-trained multi-task RBP-binding prediction model to predict the subcellular localization of RNA molecules via fine-tuning. We constructed DeepLocRNA using a comprehensive dataset with variant RNA types and evaluated it on the held-out dataset. Our model achieved state-of-the-art performance in predicting RNA subcellular localization in mRNA and miRNA. It has also demonstrated great generalization capabilities, performing well on both human and mouse RNA. Additionally, a motif analysis was performed to enhance the interpretability of the model, highlighting signal factors that contributed to the predictions. The proposed model provides general and powerful prediction abilities for different RNA types and species, offering valuable insights into the localization patterns of RNA molecules and contributing to our understanding of cellular processes at the molecular level. A user-friendly web server is available at: https://biolib.com/KU/DeepLocRNA/.
OriginalsprogEngelsk
Artikelnummerbtae065
TidsskriftBioinformatics
Vol/bind40
Udgave nummer2
Antal sider10
ISSN1367-4803
DOI
StatusUdgivet - 2024

Bibliografisk note

Funding Information:
This work was supported by the China Scholarship Council (CSC) [to J.W.] with a 4-year PhD grant, Novo Nordisk Fonden [NNF20OC0062606 to O.W.] and the Danish National Research Foundation [the Pioneer Centre for AI, grant number P1].

Publisher Copyright:
© The Author(s) 2024. Published by Oxford University Press.

ID: 384492487