4.6 Article

Probability-based protein secondary structure identification using combined NMR chemical-shift data

期刊

PROTEIN SCIENCE
卷 11, 期 4, 页码 852-861

出版社

WILEY
DOI: 10.1110/ps.3180102

关键词

chemical shift; NMR; protein secondary structure; secondary structure identification

资金

  1. NIGMS NIH HHS [GM33385] Funding Source: Medline

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For a long time, NMR chemical shifts have been used to identify protein secondary structures. Currently, this is accomplished through comparing the observed H-1(alpha), C-13(alpha),C-13(beta), or C-13' chemical shifts with the random coil values, Here. we present a new protocol. which is based on the joint probability of each of the three secondary structural types (beta-strand, alpha-helix, and random coil) derived from chemical-shift data, to identify the secondary structure. In combination with empirical smooth filters/functions, this protocol shows significant improvements in the accuracy and the confidence of identification. Updated chemical-shift statistics are reported, on the basis of which the reliability of using chemical shift to identify protein secondary structure is evaluated for each nucleus. The reliability varies greatly among the 20 amino acids, but, on average. is in the order of: C-13(alpha)> C-13'> H-1(alpha)> C-13(beta)> N-15> H-1(N) to distinguish an a-helix from a random coil, and H-1(alpha)> C-13(beta)>H-1(N) similar to(13)C(alpha)similar to(13)C'similar to(15)N for a beta-strand from a random coil. Amide N-15 and H-1(N) chemical shifts. which are generally excluded from the application, in fact. were found to be helpful in distinguishing a beta-strand from a random coil. In addition. the chemical-shift statistical data are compared with those reported previously, and the results are discussed. A JAVA User Interface program has been developed to make the entire procedure fully automated and is available via http://ccsr3150-p3.stanford.edu.

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