Abstract
AbstractThe structural investigation of intrinsically disordered proteins (IDPs) requires ensemble models describing the diversity of the conformational states of the molecule. Due to their probabilistic nature, there is a need for new paradigms that understand and treat IDPs from a purely statistical point of view, considering their conformational ensembles as well-defined probability distributions. In this work, we define a conformational ensemble as an ordered set of probability distributions and provide a suitable metric to detect differences between two given ensembles at the residue level, both locally and globally. The underlying geometry of the conformational space is properly integrated, being one ensemble characterized by a set of probability distributions supported on the three-dimensional Euclidean space (for global-scale comparisons) and on the two-dimensional flat torus (for local-scale comparisons). The inherent uncertainty of the data is also taken into account to provide finer estimations of the differences between ensembles. Additionally, an overall distance between ensembles is defined from the differences at the residue level. We illustrate the interest of the approach with several examples of applications for the comparison of conformational ensembles: (i) produced from molecular dynamics (MD) simulations using different force fields, and (ii) before and after refinement with experimental data. We also show the usefulness of the method to assess the convergence of MD simulations. The numerical tool has been implemented in Python through easy-to-use Jupyter Notebooks available athttps://gitlab.laas.fr/moma/WASCO.
Publisher
Cold Spring Harbor Laboratory
Reference34 articles.
1. Comparison of super-secondary structures in proteins
2. Significance of Root-Mean-Square Deviation in Comparing Three-dimensional Structures of Globular Proteins
3. Efficient RMSD measures for the comparison of two molecular ensembles;Proteins,2003
4. Similarity measures for protein ensembles;PLoS One 4,2009
5. Cazals, F. , Dreyfus, T. , Mazauric, D. , Roth, C.-A. , and Robert, C. H. Conformational ensembles and sampled energy landscapes: Analysis and comparison. J Comput Chem 36, 16, 1213–1231.