Insilicotech Co. Ltd., A-1101, Kolontripolis, 210, Geumgok-Dong, Bundang-Gu, Seongnam-Shi 463-943, Korea.
J Chem Inf Model. 2009 Nov;49(11):2528-36. doi: 10.1021/ci800434e.
This study describes the application of a density-based algorithm to clustering small peptide conformations after a molecular dynamics simulation. We propose a clustering method for small peptide conformations that enables adjacent clusters to be separated more clearly on the basis of neighbor density. Neighbor density means the number of neighboring conformations, so if a conformation has too few neighboring conformations, then it is considered as noise or an outlier and is excluded from the list of cluster members. With this approach, we can easily identify clusters in which the members are densely crowded in the conformational space, and we can safely avoid misclustering individual clusters linked by noise or outliers. Consideration of neighbor density significantly improves the efficiency of clustering of small peptide conformations sampled from molecular dynamics simulations and can be used for predicting peptide structures.
本研究描述了一种基于密度的算法在对分子动力学模拟后得到的小肽构象进行聚类中的应用。我们提出了一种小肽构象的聚类方法,该方法能够根据邻域密度更清晰地分离相邻的簇。邻域密度是指相邻构象的数量,因此如果一个构象的邻域构象太少,则认为它是噪声或异常值,并从聚类成员列表中排除。通过这种方法,我们可以轻松识别构象空间中成员密集拥挤的簇,并且可以安全地避免将由噪声或异常值连接的个体簇错误聚类。考虑邻域密度可以显著提高从分子动力学模拟中采样的小肽构象聚类的效率,并可用于预测肽结构。