Transfer Learning Allows Accurate RBP Target Site Prediction with Limited Sample Sizes

Author:

Vaculík Ondřej12,Chalupová Eliška2,Grešová Katarína12ORCID,Majtner Tomáš13ORCID,Alexiou Panagiotis145

Affiliation:

1. Central European Institute of Technology (CEITEC), Masaryk University, 625 00 Brno, Czech Republic

2. Faculty of Science, National Centre for Biomolecular Research, Masaryk University, 625 00 Brno, Czech Republic

3. Department of Molecular Sociology, Max Planck Institute of Biophysics, 60439 Frankfurt am Main, Germany

4. Department of Applied Biomedical Science, Faculty of Health Sciences, University of Malta, MSD 2080 Msida, Malta

5. Centre for Molecular Medicine & Biobanking, University of Malta, MSD 2080 Msida, Malta

Abstract

RNA-binding proteins are vital regulators in numerous biological processes. Their disfunction can result in diverse diseases, such as cancer or neurodegenerative disorders, making the prediction of their binding sites of high importance. Deep learning (DL) has brought about a revolution in various biological domains, including the field of protein–RNA interactions. Nonetheless, several challenges persist, such as the limited availability of experimentally validated binding sites to train well-performing DL models for the majority of proteins. Here, we present a novel training approach based on transfer learning (TL) to address the issue of limited data. Employing a sophisticated and interpretable architecture, we compare the performance of our method trained using two distinct approaches: training from scratch (SCR) and utilizing TL. Additionally, we benchmark our results against the current state-of-the-art methods. Furthermore, we tackle the challenges associated with selecting appropriate input features and determining optimal interval sizes. Our results show that TL enhances model performance, particularly in datasets with minimal training data, where satisfactory results can be achieved with just a few hundred RNA binding sites. Moreover, we demonstrate that integrating both sequence and evolutionary conservation information leads to superior performance. Additionally, we showcase how incorporating an attention layer into the model facilitates the interpretation of predictions within a biologically relevant context.

Funder

HORIZON-WIDERA-2022

Operační program Výzkum, vývoj a vzdělávání

Publisher

MDPI AG

Subject

General Agricultural and Biological Sciences,General Immunology and Microbiology,General Biochemistry, Genetics and Molecular Biology

Reference64 articles.

1. A Census of Human RNA-Binding Proteins;Gerstberger;Nat. Rev. Genet.,2014

2. RNA-Binding Proteins in Human Genetic Disease;Gebauer;Nat. Rev. Genet.,2021

3. Emerging Roles for RNA-Binding Proteins as Effectors and Regulators of Cardiovascular Disease;Rabelink;Eur. Heart J.,2017

4. How RNA-Binding Proteins Interact with RNA: Molecules and Mechanisms;Corley;Mol. Cell,2020

5. Characterization of RNA-Binding Proteins in the Cell Nucleus and Cytoplasm;Yan;Anal. Chim. Acta,2021

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