Read e-book online In Silico Technologies in Drug Target Identification and PDF

By Darryl Leon, Scott Markel

ISBN-10: 1574444786

ISBN-13: 9781574444780

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Extra resources for In Silico Technologies in Drug Target Identification and Validation (Drug Discovery)

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1999. Analysis of domain motions in large proteins. Proteins 34:369–82. 56. Hinsen, K. 1998. Analysis of domain motions by approximate normal mode calculations. Proteins 33:417–29. 57. Laskowski, R. , J. D. Watson, and J. M. Thornton. 2005. ProFunc: A server for predicting protein function from 3D structure. Nucleic Acids Res 33:W89–93. 58. Laskowski, R. , J. D. Watson, and J. M. Thornton. 2005. Protein function prediction using local 3D templates. J Mol Biol 351:614–26. 59. , and D. Brutlag. 2001.

9) are worth noting [77]: • • • GeneSplicer [78] detects splice sites in the genomic DNA of Plasmodium falciparum (malaria), Arabidopsis thaliana, human, Drosophila, and rice. NetGene2 [79,80] is a neural network predictor of splice sites in human, C. elegans and A. thaliana DNA. topic=index&group=programs &subgroup=gfind SplicePredictor [82–84] implements Bayesian models. SPL [51–53] is a search for potential splice sites. SPLM [51–53] is a search for human potential splice sites using weight matrices.

Maudling, A. L. Mitchell, G. Moulton, et al. 2003. PRINTS and its automatic supplement, prePRINTS. Nucleic Acids Res 31:400–2. 11. Bateman, L. Coin, R. Durbin, R. D. Finn, V. Hollich, S. Griffiths-Jones, A. Khanna, et al. 2004. The Pfam protein families database. Nucleic Acids Res, Database Issue 32:D138–41. 12. , R. R. Copley, S. Schmidt, F. D. Ciccarelli, T. Doerks, J. Schultz, C. P. Ponting, and P. Bork. 2004. 0: Towards genomic data integration. Nucleic Acids Res 32:D142–4. 13. , L. Goodstadt, N.

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In Silico Technologies in Drug Target Identification and Validation (Drug Discovery) by Darryl Leon, Scott Markel

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