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A Systematic Benchmark of Machine Learning Methods for Protein-RNA Interaction Prediction

View ORCID ProfileMarc Horlacher, Giulia Cantini, Julian Hesse, Patrick Schinke, Nicolas Goedert, Shubhankar Londhe, Lambert Moyon, Annalisa Marsico
doi: https://doi.org/10.1101/2023.02.14.528560
Marc Horlacher
1Computational Health Center, Helmholtz Center Munich, Germany
2School of Computation, Information and Technology, Technical University Munich (TUM), Germany
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  • ORCID record for Marc Horlacher
  • For correspondence: marc.horlacher@helmholtz-muenchen.de
Giulia Cantini
1Computational Health Center, Helmholtz Center Munich, Germany
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Julian Hesse
1Computational Health Center, Helmholtz Center Munich, Germany
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Patrick Schinke
1Computational Health Center, Helmholtz Center Munich, Germany
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Nicolas Goedert
1Computational Health Center, Helmholtz Center Munich, Germany
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Shubhankar Londhe
1Computational Health Center, Helmholtz Center Munich, Germany
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Lambert Moyon
1Computational Health Center, Helmholtz Center Munich, Germany
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Annalisa Marsico
1Computational Health Center, Helmholtz Center Munich, Germany
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Abstract

RNA-binding proteins (RBPs) are central actors of RNA post-transcriptional regulation. Experiments to profile binding sites of RBPs in vivo are limited to transcripts expressed in the experimental cell type, creating the need for computational methods to infer missing binding information. While numerous machine-learning based methods have been developed for this task, their use of heterogeneous training and evaluation datasets across different sets of RBPs and CLIP-seq protocols makes a direct comparison of their performance difficult. Here, we compile a set of 37 machine learning (primarily deep learning) methods for in vivo RBP-RNA interaction prediction and systematically benchmark a subset of 11 representative methods across hundreds of CLIP-seq datasets and RBPs. Using homogenized sample pre-processing and two negative-class sample generation strategies, we evaluate methods in terms of predictive performance and assess the impact of neural network architectures and input modalities on model performance. We believe that this study will not only enable researchers to choose the optimal prediction method for their tasks at hand, but also aid method developers in developing novel, high-performing methods by introducing a standardized framework for their evaluation.

Competing Interest Statement

The authors have declared no competing interest.

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. All rights reserved. No reuse allowed without permission.
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Posted February 15, 2023.
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A Systematic Benchmark of Machine Learning Methods for Protein-RNA Interaction Prediction
Marc Horlacher, Giulia Cantini, Julian Hesse, Patrick Schinke, Nicolas Goedert, Shubhankar Londhe, Lambert Moyon, Annalisa Marsico
bioRxiv 2023.02.14.528560; doi: https://doi.org/10.1101/2023.02.14.528560
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A Systematic Benchmark of Machine Learning Methods for Protein-RNA Interaction Prediction
Marc Horlacher, Giulia Cantini, Julian Hesse, Patrick Schinke, Nicolas Goedert, Shubhankar Londhe, Lambert Moyon, Annalisa Marsico
bioRxiv 2023.02.14.528560; doi: https://doi.org/10.1101/2023.02.14.528560

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