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Improved QSAR modeling of anti-HIV-1 acivities by means of the optimized correlation weights of local graph invariants

Damián Marino1CIMA, Departamento de Química, Facultad de Ciencias Exactas, Universidad Nacional de La Plata, Calles 47 y 115, La Plata, 1900, Buenos Aires, ArgentinaEduardo A. Castro2INIFTA, Departamento de Química, Facultad de Ciencias Exactas, Universidad Nacional de La Plata, Suc.4, C.C. 16, La Plata, 1900, ArgentinaAndrey A. Toropov3Scientifical Research Institute “Algorithm-Engineering”, F. Khodjaev Street 25, 700125, Tashkent, Uzbekistan
Open Chemistryjournal2006en
ABI

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Abstract We report the results derived from the use of molecular descriptors calculated with the correlation weights (CWs) of local graph invariants for modeling of anti-HIV-1 potencies of two groups of reverse transcriptase inhibitors. The presence of different chemical elements in the molecular structure of the inhibitors and the Morgan extended connectivity values of zeroth-, first-, and second order have been examined as local graph invariants in the labeled hydrogen-filled graphs. We have computed via Monte Carlo optimization procedure the values of CWs which produce the largest possible correlation coefficient between the numerical data on the anti-HIV-1 potencies and those values of the descriptors on the training set. The model of the anti-HIV-1 activity obtained with compounds of training set by means of optimization of correlation weights of chemical elements present together with Morgan extended connectivity of first order makes up a sensible model for a satisfactory prediction of the endpoints of the compounds belonging to the test set.

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