| Literature DB >> 25237718 |
Abstract
It is well known that, in some situations, principal component analysis (PCA) carried out on molecular dynamics data results in the appearance of cosine-shaped low index projections. Because this is reminiscent of the results obtained by performing PCA on a multidimensional Brownian dynamics, it has been suggested that short-time protein dynamics is essentially nothing more than a noisy signal. Here we use Random Matrix Theory to analyze a series of short-time molecular dynamics experiments which are specifically designed to be simulations with high cosine content. We use as a model system the protein apoCox17, a mitochondrial copper chaperone. Spectral analysis on correlation matrices allows to easily differentiate random correlations, simply deriving from the finite length of the process, from non-random signals reflecting the intrinsic system properties. Our results clearly show that protein dynamics is not really Brownian also in presence of the cosine-shaped low index projections on principal axes.Keywords: ApoCox17; Brownian dynamics; Convergence; Molecular dynamics; Principal component analysis; Random Matrix Theory
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Year: 2014 PMID: 25237718 DOI: 10.1016/j.bpc.2014.08.007
Source DB: PubMed Journal: Biophys Chem ISSN: 0301-4622 Impact factor: 2.352