Litcius/Paper detail

Principal Component Analysis and Related Methods for Investigating the Dynamics of Biological Macromolecules

Akio Kitao

2022J — Multidisciplinary Scientific Journal90 citationsDOIOpen Access PDF

Abstract

Principal component analysis (PCA) is used to reduce the dimensionalities of high-dimensional datasets in a variety of research areas. For example, biological macromolecules, such as proteins, exhibit many degrees of freedom, allowing them to adopt intricate structures and exhibit complex functions by undergoing large conformational changes. Therefore, molecular simulations of and experiments on proteins generate a large number of structure variations in high-dimensional space. PCA and many PCA-related methods have been developed to extract key features from such structural data, and these approaches have been widely applied for over 30 years to elucidate macromolecular dynamics. This review mainly focuses on the methodological aspects of PCA and related methods and their applications for investigating protein dynamics.

Topics & Concepts

Principal component analysisMacromoleculeDynamics (music)Biological systemComponent (thermodynamics)Molecular dynamicsPrincipal (computer security)Computer scienceComputational biologyMacromolecular SubstancesData miningChemistryBiochemical engineeringArtificial intelligenceBiologyComputational chemistryPhysicsEngineeringBiochemistryAcousticsThermodynamicsOperating systemProtein Structure and DynamicsSpectroscopy and Chemometric AnalysesMachine Learning in Bioinformatics