Riemannian geometry for efficient analysis of protein dynamics data
Willem Diepeveen, Carlos Esteve-Yag\"ue, Jan Lellmann, Ozan \"Oktem,, Carola-Bibiane Sch\"onlieb

TL;DR
This paper introduces a novel Riemannian geometric framework for analyzing protein dynamics data, enabling efficient computation of geodesics and capturing non-linear conformational energy landscapes.
Contribution
It develops a local approximation method for geodesics on Riemannian manifolds and constructs a smooth manifold structure tailored for protein conformations based on energy landscapes.
Findings
Performs well on molecular dynamics simulated data
Geodesics approximate protein trajectories during ordered transitions
Provides realistic summary statistics and dimension retrieval
Abstract
An increasingly common viewpoint is that protein dynamics data sets reside in a non-linear subspace of low conformational energy. Ideal data analysis tools for such data sets should therefore account for such non-linear geometry. The Riemannian geometry setting can be suitable for a variety of reasons. First, it comes with a rich structure to account for a wide range of geometries that can be modelled after an energy landscape. Second, many standard data analysis tools initially developed for data in Euclidean space can also be generalised to data on a Riemannian manifold. In the context of protein dynamics, a conceptual challenge comes from the lack of a suitable smooth manifold and the lack of guidelines for constructing a smooth Riemannian structure based on an energy landscape. In addition, computational feasibility in computing geodesics and related mappings poses a major…
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Taxonomy
TopicsMorphological variations and asymmetry
