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Protein Ensemble Modeling and Analysis with MMMx

Overview
Journal Protein Sci
Specialty Biochemistry
Date 2024 Feb 15
PMID 38358120
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Abstract

Proteins, especially of eukaryotes, often have disordered domains and may contain multiple folded domains whose relative spatial arrangement is distributed. The MMMx ensemble modeling and analysis toolbox (https://github.com/gjeschke/MMMx) can support the design of experiments to characterize the distributed structure of such proteins, starting from AlphaFold2 predictions or folded domain structures. Weak order can be analyzed with reference to a random coil model or to peptide chains that match the residue-specific Ramachandran angle distribution of the loop regions and are otherwise unrestrained. The deviation of the mean square end-to-end distance of chain sections from their average over sections of the same sequence length reveals localized compaction or expansion of the chain. The shape sampled by disordered chains is visualized by superposition in the principal axes frame of their inertia tensor. Ensembles of different sizes and with weighted conformers can be compared based on a similarity parameter that abstracts from the ensemble width.

Citing Articles

Protein ensemble modeling and analysis with MMMx.

Jeschke G Protein Sci. 2024; 33(3):e4906.

PMID: 38358120 PMC: 10868441. DOI: 10.1002/pro.4906.

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