| Literature DB >> 3197832 |
H Bohr1, J Bohr, S Brunak, R M Cotterill, B Lautrup, L Nørskov, O H Olsen, S B Petersen.
Abstract
Neural networks provide a basis for semiempirical studies of pattern matching between the primary and secondary structures of proteins. Networks of the perceptron class have been trained to classify the amino-acid residues into two categories for each of three types of secondary feature: alpha-helix or not, beta-sheet or not, and random coil or not. The explicit prediction for the helices in rhodopsin is compared with both electron microscopy results and those of the Chou-Fasman method. A new measure of homology between proteins is provided by the network approach, which thereby leads to quantification of the differences between the primary structures of proteins.Entities:
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Year: 1988 PMID: 3197832 DOI: 10.1016/0014-5793(88)81066-4
Source DB: PubMed Journal: FEBS Lett ISSN: 0014-5793 Impact factor: 4.124