Modeling of acetylcholinesterase inhibition by tacrine analogues using Bayesian-regularized Genetic Neural Networks and ensemble averaging
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Julio Caballero | Michael Fernández | M Carmo Carreiras | José L Marco | M. Fernández | Julio Caballero | M. Carreiras | J. Marco
[1] F. J. Luque,et al. New tacrine-huperzine A hybrids (huprines): highly potent tight-binding acetylcholinesterase inhibitors of interest for the treatment of Alzheimer's disease. , 2000, Journal of medicinal chemistry.
[2] K. Jug. A bond order approach to ring current and aromaticity , 1983 .
[3] Julio Caballero,et al. 2D Autocorrelation modeling of the activity of trihalobenzocycloheptapyridine analogues as farnesyl protein transferase inhibitors , 2005 .
[4] A. Cavalli,et al. SAR of 9-amino-1,2,3,4-tetrahydroacridine-based acetylcholinesterase inhibitors: synthesis, enzyme inhibitory activity, QSAR, and structure-based CoMFA of tacrine analogues. , 2000, Journal of medicinal chemistry.
[5] Johann Gasteiger,et al. Deriving the 3D structure of organic molecules from their infrared spectra , 1999 .
[6] David T. Stanton,et al. On the Physical Interpretation of QSAR Models , 2003, J. Chem. Inf. Comput. Sci..
[7] David J. C. MacKay,et al. A Practical Bayesian Framework for Backpropagation Networks , 1992, Neural Computation.
[8] M. V. Volkenstein,et al. The configurational statistics of polymeric chains , 1958 .
[9] Martin T. Hagan,et al. Gauss-Newton approximation to Bayesian learning , 1997, Proceedings of International Conference on Neural Networks (ICNN'97).
[10] S. Brimijoin,et al. Highly Potent, Selective, and Low Cost Bis-tetrahydroaminacrine Inhibitors of Acetylcholinesterase , 1996, The Journal of Biological Chemistry.
[11] Milan Randic,et al. Molecular Shape Profiles , 1995, J. Chem. Inf. Comput. Sci..
[12] Julio Caballero,et al. Modeling of Cyclin-Dependent Kinase Inhibition by 1H-Pyrazolo[3, 4-d]Pyrimidine Derivatives Using Artificial Neural Network Ensembles , 2005, J. Chem. Inf. Model..
[13] P. Camps,et al. Synthesis and evaluation of tacrine-huperzine A hybrids as acetylcholinesterase inhibitors of potential interest for the treatment of Alzheimer's disease. , 1998, Bioorganic & medicinal chemistry.
[14] Johann Gasteiger,et al. The Coding of the Three-Dimensional Structure of Molecules by Molecular Transforms and Its Application to Structure-Spectra Correlations and Studies of Biological Activity , 1996, J. Chem. Inf. Comput. Sci..
[15] F. J. Luque,et al. Synthesis, biological evaluation and molecular modelling of diversely functionalized heterocyclic derivatives as inhibitors of acetylcholinesterase/butyrylcholinesterase and modulators of Ca2+ channels and nicotinic receptors. , 2004, Bioorganic & medicinal chemistry.
[16] Marina Lasagni,et al. New molecular descriptors for 2D and 3D structures. Theory , 1994 .
[17] M Karplus,et al. Evolutionary optimization in quantitative structure-activity relationship: an application of genetic neural networks. , 1996, Journal of medicinal chemistry.
[18] Rajarshi Guha,et al. Development of Linear, Ensemble, and Nonlinear Models for the Prediction and Interpretation of the Biological Activity of a Set of PDGFR Inhibitors , 2004, J. Chem. Inf. Model..
[19] F. J. Luque,et al. Synthesis, in vitro pharmacology, and molecular modeling of syn-huprines as acetylcholinesterase inhibitors. , 2001, Journal of medicinal chemistry.
[20] F. J. Luque,et al. Modulation of binding strength in several classes of active site inhibitors of acetylcholinesterase studied by comparative binding energy analysis. , 2004, Journal of medicinal chemistry.
[21] Lars Kai Hansen,et al. Neural Network Ensembles , 1990, IEEE Trans. Pattern Anal. Mach. Intell..
[22] F. J. Luque,et al. Synthesis, in vitro pharmacology, and molecular modeling of very potent tacrine-huperzine A hybrids as acetylcholinesterase inhibitors of potential interest for the treatment of Alzheimer's disease. , 1999, Journal of medicinal chemistry.
[23] Mann Fc. Tacrine therapy for the dementia of Alzheimer's disease. , 1994 .
[24] F. Burden,et al. Robust QSAR models using Bayesian regularized neural networks. , 1999, Journal of medicinal chemistry.
[25] Igor V. Tetko,et al. Electronic‐Topological Investigation of theStructure – Acetylcholinesterase Inhibitor Activity Relationship in the Series of N‐Benzylpiperidine Derivatives , 2001 .
[26] N. Vivas,et al. Synthesis and Acetylcholinesterase/Butyrylcholinesterase Inhibition Activity of 4‐Amino‐2, 3‐diaryl‐5, 6, 7, 8‐tetrahydrofuro(and thieno)[2, 3‐b]‐quinolines, and 4‐Amino‐5, 6, 7, 8, 9‐pentahydro‐2, 3‐diphenylcyclohepta[e]furo(and thieno)‐[2, 3‐b]pyridines , 2002, Archiv der Pharmazie.
[27] T. M. Krygowski,et al. Definition of aromaticity basing on the harmonic oscillator model , 1972 .
[28] Roberto Todeschini,et al. Structure/Response Correlations and Similarity/Diversity Analysis by GETAWAY Descriptors, 1. Theory of the Novel 3D Molecular Descriptors , 2002, J. Chem. Inf. Comput. Sci..
[29] Julio Caballero,et al. Linear and nonlinear modeling of antifungal activity of some heterocyclic ring derivatives using multiple linear regression and Bayesian-regularized neural networks , 2006, Journal of molecular modeling.
[30] P. Taylor,et al. Role of the peripheral anionic site on acetylcholinesterase: inhibition by substrates and coumarin derivatives. , 1991, Molecular pharmacology.
[31] J. Zupan,et al. Neural networks: A new method for solving chemical problems or just a passing phase? , 1991 .
[32] Julio Caballero,et al. Modeling of activity of cyclic urea HIV-1 protease inhibitors using regularized-artificial neural networks. , 2006, Bioorganic & medicinal chemistry.
[33] A. Cavalli,et al. Acetylcholinesterase inhibitors for potential use in Alzheimer's disease: molecular modeling, synthesis and kinetic evaluation of 11H-indeno-[1,2-b]-quinolin-10-ylamine derivatives. , 2000, Bioorganic & medicinal chemistry.
[34] Teuvo Kohonen,et al. Self-organized formation of topologically correct feature maps , 2004, Biological Cybernetics.
[35] David West,et al. A comparison of SOM neural network and hierarchical clustering methods , 1996 .
[36] David J. C. MacKay,et al. Bayesian Interpolation , 1992, Neural Computation.
[37] Frank R Burden,et al. Broad-based quantitative structure-activity relationship modeling of potency and selectivity of farnesyltransferase inhibitors using a Bayesian regularized neural network. , 2004, Journal of medicinal chemistry.
[38] Walter Cedeño,et al. On the Use of Neural Network Ensembles in QSAR and QSPR , 2002, J. Chem. Inf. Comput. Sci..
[39] Maykel Pérez González,et al. Modeling of farnesyltransferase inhibition by some thiol and non-thiol peptidomimetic inhibitors using genetic neural networks and RDF approaches. , 2006, Bioorganic & medicinal chemistry.
[40] J. Baños,et al. Synthesis and acetylcholinesterase/butyrylcholinesterase inhibition activity of new tacrine-like analogues. , 2001, Bioorganic & medicinal chemistry.
[41] Rajarshi Guha,et al. Interpreting Computational Neural Network Quantitative Structure-Activity Relationship Models: A Detailed Interpretation of the Weights and Biases , 2005, J. Chem. Inf. Model..
[42] Susan Eitelman,et al. Matlab Version 6.5 Release 13. The MathWorks, Inc., 3 Apple Hill Dr., Natick, MA 01760-2098; 508/647-7000, Fax 508/647-7001, www.mathworks.com , 2003 .
[43] S. Unger. Molecular Connectivity in Structure–activity Analysis , 1987 .
[44] A. Cavalli,et al. A comparative QSAR analysis of acetylcholinesterase inhibitors currently studied for the treatment of Alzheimer's disease. , 1997, Chemico-biological interactions.
[45] A. Goldman,et al. Atomic structure of acetylcholinesterase from Torpedo californica: a prototypic acetylcholine-binding protein , 1991, Science.