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New insights into the meaning and usefulness of principal component analysis of concatenated trajectories. | LitMetric

New insights into the meaning and usefulness of principal component analysis of concatenated trajectories.

J Comput Chem

Departamento de Ciencia y Tecnología, Universidad Nacional de Quilmes, Sáenz Peña 352, Bernal, B1876BXD, Argentina.

Published: March 2015

AI Article Synopsis

  • A study highlights the use of combined principal component analysis (combined-PCA) to compare different protein conformations by analyzing their molecular dynamics trajectories.
  • It introduces new analytical expressions for understanding eigenvectors and eigenvalues from concatenated correlation matrices, which have been lacking since the method's introduction in 1995.
  • The authors provide evidence that the correlation matrix of concatenated trajectories can be expressed as the average of individual matrices plus extra correlation terms, suggesting that combined-PCA offers insights already attainable through simpler methods.

Article Abstract

A comparison between different conformations of a given protein, relating both structure and dynamics, can be performed in terms of combined principal component analysis (combined-PCA). To that end, a trajectory is obtained by concatenating molecular dynamics trajectories of the individual conformations under comparison. Then, the principal components are calculated by diagonalizing the correlation matrix of the concatenated trajectory. Since the introduction of this approach in 1995 it has had a large number of applications. However, the interpretation of the eigenvectors and eigenvalues so obtained is based on intuitive foundations, because analytical expressions relating the concatenated correlation matrix with those of the individual trajectories under consideration have not been provided yet. In this article, we present such expressions for the cases of two, three, and an arbitrary number of concatenated trajectories. The formulas are simple and show what is to be expected and what is not to be expected from a combined-PCA. Their correctness and usefulness is demonstrated by discussing some representative examples. The results can be summarized in a simple sentence: the correlation matrix of a concatenated trajectory is given by the average of the individual correlation matrices plus the correlation matrix of the individual averages. From this it follows that the combined-PCA of trajectories belonging to different free energy basins provides information that could also be obtained by alternative and more straightforward means.

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Source
http://dx.doi.org/10.1002/jcc.23811DOI Listing

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