Unraveling the Mechanism of Drug Binding to SARS-CoV-2 RNA Pseudoknot with Thermodynamics-Driven Machine Learning
Mariia Ivonina, Jakub Rydzewski

TL;DR
This study employs a thermodynamics-driven machine learning approach to elucidate how different ligands and RNA topologies influence the conformational dynamics of SARS-CoV-2 RNA pseudoknot, informing antiviral drug design.
Contribution
It introduces spectral map, a novel machine learning method, to identify collective variables from molecular dynamics data, revealing topology- and ligand-dependent destabilization mechanisms.
Findings
Ligand destabilizes specific stems depending on RNA topology.
Zwitterionic merafloxacin induces slow dynamics in unthreaded pseudoknot.
Protonation state critically affects ligand-RNA interaction mechanisms.
Abstract
The SARS-CoV-2 RNA pseudoknot is a promising target for antiviral intervention, as it regulates the efficiency of 1 programmed ribosomal frameshifting (1 PRF), a mechanism that is essential for viral protein synthesis. The pseudoknot represents a viral RNA sequence composed of helical stems that adopts two long-lived topologies, threaded and unthreaded. Ligand-induced distortion of this fold is thought to underlie the susceptibility of 1 PRF to small-molecule inhibitors. Resolving these distortions from unbiased molecular dynamics (MD) requires collective variables (CVs) that isolate the slowest dynamic modes of the RNA--ligand system from the high-frequency fluctuations. Here, we use spectral map (SM), a thermodynamics-driven machine-learning method, to learn such CVs directly from MD trajectories of the SARS-CoV-2 RNA pseudoknot in complex with the 1 PRF inhibitor…
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