Literature DB >> 12668435

Structural modeling extends QSAR analysis of antibody-lysozyme interactions to 3D-QSAR.

Eva K Freyhult1, Karl Andersson, Mats G Gustafsson.   

Abstract

This work shows that quantitative multivariate modeling is an emerging possibility for unraveling protein-protein interactions using a combination of designed mutations with sequence and structure information. Using this approach, it is possible to stereochemically determine which residue properties contribute most to the interaction. This is illustrated by results from modeling of the interaction of the wild-type and 17 single and double mutants of a camel antibody specific for lysozyme. Linear multivariate models describing association and dissociation rates as well as affinity were developed. Sequence information in the form of amino acid property scales was combined with 3D structure information (obtained using molecular mechanics calculations) in the form of coordinates of the alpha-carbons and the center of the side chains. The results show that in addition to the amino acid properties of the mutated residues 101 and 105, the dissociation rate is controlled by the side-chain coordinate of residue 105, whereas the association is determined by the coordinates of residues 99, 100, 105 (side chain), 111, and 112. The great difference between the models for association and dissociation rates illustrates that the event of molecular recognition and the property of binding stability rely on different physical processes.

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Year:  2003        PMID: 12668435      PMCID: PMC1302793          DOI: 10.1016/S0006-3495(03)75032-2

Source DB:  PubMed          Journal:  Biophys J        ISSN: 0006-3495            Impact factor:   4.033


  23 in total

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4.  New chemical descriptors relevant for the design of biologically active peptides. A multivariate characterization of 87 amino acids.

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5.  Prediction of drug binding affinities by comparative binding energy analysis.

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6.  Crystal structure of a camel single-domain VH antibody fragment in complex with lysozyme.

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9.  PLS modeling of chimeric MS04/MSH-peptide and MC1/MC3-receptor interactions reveals a novel method for the analysis of ligand-receptor interactions.

Authors:  P Prusis; R Muceniece; P Andersson; C Post; T Lundstedt; J E Wikberg
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10.  Camel single-domain antibody inhibits enzyme by mimicking carbohydrate substrate.

Authors:  T R Transue; E De Genst; M A Ghahroudi; L Wyns; S Muyldermans
Journal:  Proteins       Date:  1998-09-01
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2.  Unbiased descriptor and parameter selection confirms the potential of proteochemometric modelling.

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Review 3.  In Silico Approaches to Identify Polyphenol Compounds as α-Glucosidase and α-Amylase Inhibitors against Type-II Diabetes.

Authors:  Jirawat Riyaphan; Dinh-Chuong Pham; Max K Leong; Ching-Feng Weng
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