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  • 1
    Electronic Resource
    Electronic Resource
    New York : Wiley-Blackwell
    Biopolymers 30 (1990), S. 45-56 
    ISSN: 0006-3525
    Keywords: Chemistry ; Polymer and Materials Science
    Source: Wiley InterScience Backfile Collection 1832-2000
    Topics: Chemistry and Pharmacology
    Notes: The distance geometry algorithm as embodied in the program DGEOM was examined as a method for searching cyclic peptide conformations. Conformations were randomly generated using covalent distance and chirality constraints, but torsion angle rather than distance sampling was used for 1, 4 relationships. Structures so generated were energy minimized by a fixed number of iterations using the molecular mechanics program AMBER 3.0; electrostatic terms were excluded in the minimization. The effectiveness of this procedure in sampling conformational space for cyclic peptides was measured by the ability to recover, from a set of 500 structures, conformations similar to those experimentally observed for six cyclic peptides containing from 8 to 20 rotatable backbone bonds. Structures similar to experimental structures were recovered in a 16-bond case, but not for a 20-bond example. The method was also applied, with constraints on the peptide bond angles ω, to an additional example containing 21 ring bonds.
    Additional Material: 5 Ill.
    Type of Medium: Electronic Resource
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  • 2
    ISSN: 0006-3525
    Keywords: Chemistry ; Polymer and Materials Science
    Source: Wiley InterScience Backfile Collection 1832-2000
    Topics: Chemistry and Pharmacology
    Notes: We examine the correlation between the sequence and tertiary structure for 212 domains from globular proteins and polypeptides. The sequence of each domain is described as a set of 25 features: the mole percent of 20 amino acids, the number of residues in the domain, and the abundance of four simple patterns in the hydrophobicity profile of the sequence. Each domain, then, is described as a location in 25-dimensional sequence-feature space. We use pattern-recognition methods to find the two axes through the 25-dimensional sequence-feature space that best discriminate, respectively, predominantly α-helix domains from predominantly β-strand domains (the “secondary structure vector,” SV) and parallel α/β domains from other domains (the “parallel vector,” PV). When we divide the domains into two categories based on whether the cysteine content is above (CYS-RICH) or below (NORMAL) 4.5%, we find the secondary structure vector for the subset of CYS-RICH domains points in a significantly different direction than the equivalent vector for the NORMAL domains. Thus, CYS-RICH and NORMAL, domains are best treated separately. The secondary structure vector and the parallel vector for NORMAL domains describes statistically meaningful information, but the secondary structure vector for CYS-RICH domains may not be as reliable. We show how the secondary structure content of a NORMAL domain can be predicted by projecting the domain in the feature space onto the secondary structure vector. We subdivide the domains into five structural classes based on whether there is a parallel or mixed β-sheet in the domain and whether there are more helix or strand residues: NORMAL ALPHA, NORMAL BETA, NORMAL PARALLEL, CYS-RICH ALPHA, and CYS-RICH BETA. When we project the NORMAL domains onto the plane containing the origin of the feature space and SV and PV, we see that ALPHA, BETA, and PARALLEL, domains cluster in the plane, with the BETA cluster partially overlapping the PARALLEL cluster. The separations between the clusters are such that, by looking at the location of any given NORMAL domain in the plane, we can correctly predict its structural class with 83% accuracy. CYS-RICH ALPHA and BETA domains cluster when projected onto the CYS-RICH SV vector, and the classes can be preducted with 83% accuracy, but this accuracy for CYS-RICH domains may not be statistically meaningful.
    Additional Material: 2 Ill.
    Type of Medium: Electronic Resource
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