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dc.contributor.authorKlem, Heidi
dc.contributor.authorHocky, Glen M.
dc.contributor.authorMccullagh, Martin
dc.date.accessioned2022-10-18T21:41:08Z
dc.date.available2022-10-18T21:41:08Z
dc.date.issued2021-12-21
dc.identifier.citationKlem, H., Hocky, G.M., McCullagh, M. (2021). Size-and-Shape Space Gaussian Mixture Models for Structural Clustering of Molecular Dynamics Trajectories. https://doi.org/10.48550/arxiv.2112.11424
dc.identifier.urihttps://hdl.handle.net/11244/336545
dc.description.abstractDetermining the optimal number and identity of structural clusters from an ensemble of molecular configurations continues to be a challenge. Recent structural clustering methods have focused on the use of internal coordinates due to the innate rotational and translational invariance of these features. The vast number of possible internal coordinates necessitates a feature space supervision step to make clustering tractable, but yields a protocol that can be system type specific. Particle positions offer an appealing alternative to internal coordinates, but suffer from a lack of rotational and translational invariance, as well as a perceived insensitivity to regions of structural dissimilarity. Here, we present a method, denoted shape-GMM, that overcomes the shortcomings of particle positions using a weighted maximum likelihood (ML) alignment procedure. This alignment strategy is then built into an expectation maximization Gaussian mixture model (GMM) procedure to capture metastable states in the free energy landscape. The resulting algorithm distinguishes between a variety of different structures, including those indistinguishable by RMSD and pair-wise distances, as demonstrated on several model systems. Shape- GMM results on an extensive simulation of the the fast-folding HP35 Nle/Nle mutant protein support a 4-state folding/unfolding mechanism which is consistent with previous experimental results and provides kinetic detail comparable to previous state of the art clustering approaches, as measured by the VAMP-2 score. Currently, training of shape-GMMs is recommended for systems (or subsystems) that can be represented by . 200 particles and . 100K configurations to estimate high-dimensional covariance matrices and balance computational expense. Once a shape-GMM is trained, it can be used to predict the cluster identities of millions of configurations.
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dc.relation.urihttp://arxiv.org/abs/2112.11424v2
dc.rightsThis material has been previously published. In the Oklahoma State University Library's institutional repository this version is made available through the open access principles and the terms of agreement/consent between the author(s) and the publisher. The permission policy on the use, reproduction or distribution of the material falls under fair use for educational, scholarship, and research purposes. Contact Digital Resources and Discovery Services at lib-dls@okstate.edu or 405-744-9161 for further information.
dc.titleSize-and-shape space Gaussian mixture models for structural clustering of molecular dynamics trajectories
dc.date.updated2022-09-20T17:36:04Z
dc.identifier.doi10.48550/arxiv.2112.11424
dc.description.departmentChemistry
dc.type.genrePreprint
dc.type.materialText
dc.subject.keywordsphysics.chem-ph
dc.identifier.authorORCID: 0000-0002-8603-4388 (McCullagh, Martin)
dc.identifier.authorScopusID: 24829766700 (McCullagh, Martin)


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