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pyRBDome: a comprehensive computational platform for enhancing RNA-binding proteome data.

Liang-Cui ChuNiki ChristopoulouHugh McCaughanSophie WinterbourneDavide CazzolaShichao WangUlad LitvinSalomé BrunonPatrick Jb HarkerIain McNaeSander Granneman
Published in: Life science alliance (2024)
High-throughput proteomics approaches have revolutionised the identification of RNA-binding proteins (RBPome) and RNA-binding sequences (RBDome) across organisms. Yet, the extent of noise, including false positives, associated with these methodologies, is difficult to quantify as experimental approaches for validating the results are generally low throughput. To address this, we introduce pyRBDome, a pipeline for enhancing RNA-binding proteome data in silico. It aligns the experimental results with RNA-binding site (RBS) predictions from distinct machine-learning tools and integrates high-resolution structural data when available. Its statistical evaluation of RBDome data enables quick identification of likely genuine RNA-binders in experimental datasets. Furthermore, by leveraging the pyRBDome results, we have enhanced the sensitivity and specificity of RBS detection through training new ensemble machine-learning models. pyRBDome analysis of a human RBDome dataset, compared with known structural data, revealed that although UV-cross-linked amino acids were more likely to contain predicted RBSs, they infrequently bind RNA in high-resolution structures. This discrepancy underscores the limitations of structural data as benchmarks, positioning pyRBDome as a valuable alternative for increasing confidence in RBDome datasets.
Keyphrases
  • machine learning
  • big data
  • high resolution
  • electronic health record
  • high throughput
  • mass spectrometry
  • artificial intelligence
  • single cell
  • amino acid
  • air pollution
  • transcription factor