Quantitative structure-activity relationships (QSARs) represent a very well consolidated computational approach to correlate structural or property descriptors of chemical compounds with their chemical or biological activities. We have recently reported that autocorrelation Molecular Electrostatic Potential (autoMEP) vectors in combination to Partial Least-Square (PLS) analysis or to Response Surface Analysis (RSA) can represent an interesting alternative 3D-QSAR strategy. In the present paper, we would like to present how the applicability of in tandem linear and nonlinear 3D-QSAR methods (autoMEP/PLS&RSA) can help to predict binding affinity data of a new set of N-methyl-D-aspartate (Gly/NMDA) receptor antagonists.

Tandem 3D-QSARs Approach as a Valuable Tool To Predict Binding Affinity Data: Design of New Gly/NMDA Receptor Antagonists as a Key Study / M. BACILIERI; F.VARANO; F.DEFLORIAN; M.MARINI; D.CATARZI; V.COLOTTA; G.FILACCHIONI; A.GALLI; C.COSTAGLI; C.KASEDA; S.MORO. - In: JOURNAL OF CHEMICAL INFORMATION AND MODELING. - ISSN 1549-9596. - STAMPA. - 47:(2007), pp. 1913-1922.

Tandem 3D-QSARs Approach as a Valuable Tool To Predict Binding Affinity Data: Design of New Gly/NMDA Receptor Antagonists as a Key Study.

VARANO, FLAVIA;CATARZI, DANIELA;COLOTTA, VITTORIA;FILACCHIONI, GUIDO;GALLI, ALESSANDRO;
2007

Abstract

Quantitative structure-activity relationships (QSARs) represent a very well consolidated computational approach to correlate structural or property descriptors of chemical compounds with their chemical or biological activities. We have recently reported that autocorrelation Molecular Electrostatic Potential (autoMEP) vectors in combination to Partial Least-Square (PLS) analysis or to Response Surface Analysis (RSA) can represent an interesting alternative 3D-QSAR strategy. In the present paper, we would like to present how the applicability of in tandem linear and nonlinear 3D-QSAR methods (autoMEP/PLS&RSA) can help to predict binding affinity data of a new set of N-methyl-D-aspartate (Gly/NMDA) receptor antagonists.
2007
47
1913
1922
M. BACILIERI; F.VARANO; F.DEFLORIAN; M.MARINI; D.CATARZI; V.COLOTTA; G.FILACCHIONI; A.GALLI; C.COSTAGLI; C.KASEDA; S.MORO
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/315043
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