| Literature DB >> 27868222 |
Song Liu1, Lizhe Zhu1,2, Fu Kit Sheong1, Wei Wang1,2, Xuhui Huang1,2.
Abstract
We present an efficient density-based adaptive-resolution clustering method APLoD for analyzing large-scale molecular dynamics (MD) trajectories. APLoD performs the k-nearest-neighbors search to estimate the density of MD conformations in a local fashion, which can group MD conformations in the same high-density region into a cluster. APLoD greatly improves the popular density peaks algorithm by reducing the running time and the memory usage by 2-3 orders of magnitude for systems ranging from alanine dipeptide to a 370-residue Maltose-binding protein. In addition, we demonstrate that APLoD can produce clusters with various sizes that are adaptive to the underlying density (i.e., larger clusters at low-density regions, while smaller clusters at high-density regions), which is a clear advantage over other popular clustering algorithms including k-centers and k-medoids. We anticipate that APLoD can be widely applied to split ultra-large MD datasets containing millions of conformations for subsequent construction of Markov State Models.Entities:
Keywords: Markov State Models; clustering algorithm; density peaks; kNN search; molecular dynamics
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Year: 2016 PMID: 27868222 DOI: 10.1002/jcc.24664
Source DB: PubMed Journal: J Comput Chem ISSN: 0192-8651 Impact factor: 3.376