| Literature DB >> 29500695 |
Abstract
In this paper, diversity and conservation in the 'landscape' of random variation of protein tertiary structures are explored for quantitative feature-vector models of major types of functionally important 3D structural motifs. For this, I have deployed a recently developed nonparametric regression (NPR)-based multidimensional copula method of simulation. Apart from improved accuracy of multidimensional random sample generation, the simulation provides additional insight into diversity in the protein structural landscape in terms of random variation in the feature-vector. It shows the relative importance of several features, with biological implications, in conservation of motifs. Mapping of this landscape in distance-preserving 2D eigenspace also shows consistency in demarcation of different motif classes and preservation of their characteristic patterns in this 2D space.Keywords: Copulas; Multi-dimensional feature vector; Multidimensional scaling; Nonparametric regression; Protein tertiary structural motifs; Random number generation
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Year: 2018 PMID: 29500695 DOI: 10.1007/s00894-018-3614-y
Source DB: PubMed Journal: J Mol Model ISSN: 0948-5023 Impact factor: 1.810