English

Structure Space of Model Proteins --A Principle Component Analysis

Biological Physics 2009-11-07 v3 Soft Condensed Matter Biomolecules

Abstract

We study the space of all compact structures on a two-dimensional square lattice of size N=6×6N=6\times6. Each structure is mapped onto a vector in NN-dimensions according to a hydrophobic model. Previous work has shown that the designabilities of structures are closely related to the distribution of the structure vectors in the NN-dimensional space, with highly designable structures predominantly found in low density regions. We use principal component analysis to probe and characterize the distribution of structure vectors, and find a non-uniform density with a single peak. Interestingly, the principal axes of this peak are almost aligned with Fourier eigenvectors, and the corresponding Fourier eigenvalues go to zero continuously at the wave-number for alternating patterns (q=πq=\pi). These observations provide a stepping stone for an analytic description of the distribution of structural points, and open the possibility of estimating designabilities of realistic structures by simply Fourier transforming the hydrophobicities of the corresponding sequences.

Keywords

Cite

@article{arxiv.physics/0207039,
  title  = {Structure Space of Model Proteins --A Principle Component Analysis},
  author = {Mehdi Yahyanejad and Mehran Kardar and Chao Tang},
  journal= {arXiv preprint arXiv:physics/0207039},
  year   = {2009}
}

Comments

14 pages, 12 figures, Conclusion has been modified