2018
DOI: 10.1063/1674-0068/31/cjcp1806147
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Clustering algorithms to analyze molecular dynamics simulation trajectories for complex chemical and biological systems

Abstract: Molecular dynamics (MD) simulation has become a powerful tool to investigate the structurefunction relationship of proteins and other biological macromolecules at atomic resolution and biologically relevant timescales. MD simulations often produce massive datasets containing millions of snapshots describing proteins in motion. Therefore, clustering algorithms have been in high demand to be developed and applied to classify these MD snapshots and gain biological insights. There mainly exist two categories of cl… Show more

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Cited by 43 publications
(33 citation statements)
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“…Analysis algorithms were used to produce the potential of mean force distribution, 55 secondary structure percentage, 56 and clustered structures. 57 Secondary structure percentage was analyzed via DSSP 56 using MDTraj. 58 Clustering of the unfolded structures was done using the KMedoids and KCenters algorithms as implemented in MSMBuilder 59 and MDTraj.…”
Section: Simulation Methodologymentioning
confidence: 99%
See 1 more Smart Citation
“…Analysis algorithms were used to produce the potential of mean force distribution, 55 secondary structure percentage, 56 and clustered structures. 57 Secondary structure percentage was analyzed via DSSP 56 using MDTraj. 58 Clustering of the unfolded structures was done using the KMedoids and KCenters algorithms as implemented in MSMBuilder 59 and MDTraj.…”
Section: Simulation Methodologymentioning
confidence: 99%
“…Two different clustering algorithms were used because the KCenters clustering algorithm commonly picks up outliers in the structures and was thus used to identify the range of structures that were sampled in the unfolded state. 57 Meanwhile, the KMedoids algorithm was used to find the most common unfolded state structures and thus the structures that were most likely to be found in local minima.…”
Section: I91 Refolds Robustly Under Most Force Fieldsmentioning
confidence: 99%
“…Analysis algorithms were used to produce the potential of mean force distribution, 55 secondary structure percentage, 56 and clustered structures. 57 Secondary structure percentage was analyzed via DSSP 56 using MDTraj. 58 Clustering of the unfolded structures was done using the KMedoids and KCenters algorithms as implemented in MSMBuilder 59 and MDTraj.…”
Section: Simulation Methodologymentioning
confidence: 99%
“…PCA identifies large-scale motions that are assumed critical to function; consequently, functional motions will be misidentified as noise if the dynamics have a smaller amplitudinal variance than what is contained in the top PCA modes 23 . Clustering algorithms are often combined with DR and feature extraction techniques such as PCA in order to identify key conformations that facilitate molecular function 24 , 25 .…”
Section: Introductionmentioning
confidence: 99%