New Descriptors of Amino Acids and Its Applications to Peptide Quantitative Structure-activity Relationship  被引量:2

New Descriptors of Amino Acids and Its Applications to Peptide Quantitative Structure-activity Relationship

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作  者:舒茂 霍丹群 梅虎 梁桂兆 张梅 李志良 

机构地区:[1]College of Bioengineering,Chongqing University [2]College of Chemistry and Chemical Engineering,Chongqing University [3]Department of Quality Control,Chongqing Daxin Pharmaceutical Co. Ltd

出  处:《Chinese Journal of Structural Chemistry》2008年第11期1375-1383,共9页结构化学(英文)

基  金:Supported by the National High Technology Research and Development Program of China (863 Program, No. 2006AA02Z312)

摘  要:A new set of descriptors, HSEHPCSV (component score vector of hydrophobic, steric, and electronic properties together with hydrogen bonding contributions), were derived from principal component analyses of 95 physicochemical variables of 20 natural amino acids separately according to different kinds of properties described, namely, hydrophobic, steric, and electronic properties as well as hydrogen bonding contributions. HSEHPCSV scales were then employed to express structures of angiotensin-converting enzyme inhibitors, bitter tasting thresholds and bactericidal 18 peptide, and to construct QSAR models based on partial least square (PLS). The results obtained are as follows: the multiple correlation coefficient (R2cum) of 0.846, 0.917 and 0.993, leave-one-out cross validated Q2cm of 0.835, 0.865 and 0.899, and root-mean-square error for estimated error (RMSEE) of 0.396, 0.187and 0.22, respectively. Satisfactory results showed that, as new amino acid scales, data of HSEHPCSV may be a useful structural expression methodology'for the studies on peptide QSAR (quantitative structure-activity relationship) due to many advantages such as plentiful structural information, definite physical and chemical meaning and easy interpretation.A new set of descriptors, HSEHPCSV (component score vector of hydrophobic, steric, and electronic properties together with hydrogen bonding contributions), were derived from principal component analyses of 95 physicochemical variables of 20 natural amino acids separately according to different kinds of properties described, namely, hydrophobic, steric, and electronic properties as well as hydrogen bonding contributions. HSEHPCSV scales were then employed to express structures of angiotensin-converting enzyme inhibitors, bitter tasting thresholds and bactericidal 18 peptide, and to construct QSAR models based on partial least square (PLS). The results obtained are as follows: the multiple correlation coefficient (R2cum) of 0.846, 0.917 and 0.993, leave-one-out cross validated Q2cm of 0.835, 0.865 and 0.899, and root-mean-square error for estimated error (RMSEE) of 0.396, 0.187and 0.22, respectively. Satisfactory results showed that, as new amino acid scales, data of HSEHPCSV may be a useful structural expression methodology'for the studies on peptide QSAR (quantitative structure-activity relationship) due to many advantages such as plentiful structural information, definite physical and chemical meaning and easy interpretation.

关 键 词:PEPTIDE quantitative structure-activity relationship principal component analysis genetic algorithm partial least square 

分 类 号:O629.71[理学—有机化学]

 

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