CoVAMPnet: Comparative Markov State Analysis for Studying Effects of Drug Candidates on Disordered Biomolecules

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Authors

MARQUES Sérgio Manuel KOUBA Petr LEGRAND Anthony Thomas P SEDLAR Jiri DISSON Lucas PLANAS IGLESIAS Joan SANUSI Zainab Kemi KUNKA Antonín DAMBORSKÝ Jiří PAJDLA Tomas PROKOP Zbyněk MAZURENKO Stanislav SIVIC Josef BEDNÁŘ David

Year of publication 2024
Type Article in Periodical
Magazine / Source JACS AU
MU Faculty or unit

Faculty of Science

Citation
Web https://pubs.acs.org/doi/10.1021/jacsau.4c00182
Doi http://dx.doi.org/10.1021/jacsau.4c00182
Keywords soft Markov state models; intrinsically disordered proteins; adaptive molecular dynamics; Alzheimer's disease; A beta 42 peptide; drug candidates; tramiprosate; 3-sulfopropanoic acid
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Description Computational study of the effect of drug candidates on intrinsically disordered biomolecules is challenging due to their vast and complex conformational space. Here, we developed a comparative Markov state analysis (CoVAMPnet) framework to quantify changes in the conformational distribution and dynamics of a disordered biomolecule in the presence and absence of small organic drug candidate molecules. First, molecular dynamics trajectories are generated using enhanced sampling, in the presence and absence of small molecule drug candidates, and ensembles of soft Markov state models (MSMs) are learned for each system using unsupervised machine learning. Second, these ensembles of learned MSMs are aligned across different systems based on a solution to an optimal transport problem. Third, the directional importance of inter-residue distances for the assignment to different conformational states is assessed by a discriminative analysis of aggregated neural network gradients. This final step provides interpretability and biophysical context to the learned MSMs. We applied this novel computational framework to assess the effects of ongoing phase 3 therapeutics tramiprosate (TMP) and its metabolite 3-sulfopropanoic acid (SPA) on the disordered A beta 42 peptide involved in Alzheimer's disease. Based on adaptive sampling molecular dynamics and CoVAMPnet analysis, we observed that both TMP and SPA preserved more structured conformations of A beta 42 by interacting nonspecifically with charged residues. SPA impacted A beta 42 more than TMP, protecting alpha-helices and suppressing the formation of aggregation-prone beta-strands. Experimental biophysical analyses showed only mild effects of TMP/SPA on A beta 42 and activity enhancement by the endogenous metabolization of TMP into SPA. Our data suggest that TMP/SPA may also target biomolecules other than A beta peptides. The CoVAMPnet method is broadly applicable to study the effects of drug candidates on the conformational behavior of intrinsically disordered biomolecules.
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