Geometric deep learning for the prediction of magnesium-binding sites in RNA structures

Int J Biol Macromol. 2024 Mar;262(Pt 2):130150. doi: 10.1016/j.ijbiomac.2024.130150. Epub 2024 Feb 15.

Abstract

Magnesium ions (Mg2+) are essential for the folding, functional expression, and structural stability of RNA molecules. However, predicting Mg2+-binding sites in RNA molecules based solely on RNA structures is still challenging. The molecular surface, characterized by a continuous shape with geometric and chemical properties, is important for RNA modelling and carries essential information for understanding the interactions between RNAs and Mg2+ ions. Here, we propose an approach named RNA-magnesium ion surface interaction fingerprinting (RMSIF), a geometric deep learning-based conceptual framework to predict magnesium ion binding sites in RNA structures. To evaluate the performance of RMSIF, we systematically enumerated decoy Mg2+ ions across a full-space grid within the range of 2 to 10 Å from the RNA molecule and made predictions accordingly. Visualization techniques were used to validate the prediction results and calculate success rates. Comparative assessments against state-of-the-art methods like MetalionRNA, MgNet, and Metal3DRNA revealed that RMSIF achieved superior success rates and accuracy in predicting Mg2+-binding sites. Additionally, in terms of the spatial distribution of Mg2+ ions within the RNA structures, a majority were situated in the deep grooves, while a minority occupied the shallow grooves. Collectively, the conceptual framework developed in this study holds promise for advancing insights into drug design, RNA co-transcriptional folding, and structure prediction.

Keywords: Geometric deep learning; Magnesium binding site; Molecular fingerprints; RNA.

MeSH terms

  • Binding Sites
  • Deep Learning*
  • Ions / chemistry
  • Magnesium / chemistry
  • RNA* / chemistry

Substances

  • RNA
  • Magnesium
  • Ions