TY - JOUR
T1 - Bond-based 2D TOMOCOMD-CARDD approach for drug discovery
T2 - Aiding decision-making in 'in silico' selection of new lead tyrosinase inhibitors
AU - Marrero-Ponce, Yovani
AU - Khan, Mahmud Tareq Hassan
AU - Casañola-Martín, Gerardo M.
AU - Ather, Arjumand
AU - Sultankhodzhaev, Mukhlis N.
AU - GarcíDomenech, Ramón
AU - Torrens, Francisco
AU - Rotondo, Richard
N1 - Funding Information:
Acknowledgments One of the authors (M-P. Y) thanks the program ‘Estades Temporals per a Investigadors Convidats’ for a fellowship to work at Valencia University (2006–2007). M-P. Y thanks are also given to the Generalitat Valenciana, (Spain) for partial financial support as well as support from Spanish MEC (Project Reference: SAF2006-04698). MTHK is the recipient of a grant from MCBN-UNESCO (grant no. 1056), and fellowships from CIB (Italy) and Associasione Veneta per la Lotta alla Talassemia (AVTL, Italy). F. T. acknowledges financial support from the Spanish MEC DGI (Project No.CTQ2004-07768-C02-01/BQU) and Generalitat Valenciana (DGEUI INF01-051 and INFRA03-047, and OCYT GRUPOS03-173.
PY - 2007/4
Y1 - 2007/4
N2 - In this paper, we present a new set of bond-level TOMOCOMD-CARDD molecular descriptors (MDs), the bond-based bilinear indices, based on a bilinear map similar to those defined in linear algebra. These novel MDs are used here in Quantitative Structure-Activity Relationship (QSAR) studies of tyrosinase inhibitors, for finding functions that discriminate between the tyrosinase inhibitor compounds and inactive ones. In total 14 models were obtained and the best two discriminant functions (Eqs. 32 and 33) shown globally good classification of 91.00% and 90.17%, respectively, in the training set. The test set had accuracies of 93.33% and 88.89% for the models 32 and 33, correspondingly. A simulated virtual screening was also carried out to prove the quality of the determined models. In a final step, the fitted models were used in the biosilico identification of new synthesized tetraketones, where a good agreement could be observed between the theoretical and experimental results. Four compounds of the novel bioactive chemicals discovered as tyrosinase inhibitors: TK10 (IC50 = 2.09 μM), TK11(IC50 = 2.61 μM), TK21 (IC50 = 2.06 μM), TK23 (IC50 = 3.19 μM), showed more potent activity than L-mimose (IC50 = 3.68 μM). Besides, for this study a heterogeneous database of tyrosinase inhibitors was collected, and could be a useful tool for the scientist in the domain of tyrosinase enzyme researches. The current report could help to shed some clues in the identification of new chemicals that inhibits enzyme tyrosinase, for entering in the pipeline of drug discovery development.
AB - In this paper, we present a new set of bond-level TOMOCOMD-CARDD molecular descriptors (MDs), the bond-based bilinear indices, based on a bilinear map similar to those defined in linear algebra. These novel MDs are used here in Quantitative Structure-Activity Relationship (QSAR) studies of tyrosinase inhibitors, for finding functions that discriminate between the tyrosinase inhibitor compounds and inactive ones. In total 14 models were obtained and the best two discriminant functions (Eqs. 32 and 33) shown globally good classification of 91.00% and 90.17%, respectively, in the training set. The test set had accuracies of 93.33% and 88.89% for the models 32 and 33, correspondingly. A simulated virtual screening was also carried out to prove the quality of the determined models. In a final step, the fitted models were used in the biosilico identification of new synthesized tetraketones, where a good agreement could be observed between the theoretical and experimental results. Four compounds of the novel bioactive chemicals discovered as tyrosinase inhibitors: TK10 (IC50 = 2.09 μM), TK11(IC50 = 2.61 μM), TK21 (IC50 = 2.06 μM), TK23 (IC50 = 3.19 μM), showed more potent activity than L-mimose (IC50 = 3.68 μM). Besides, for this study a heterogeneous database of tyrosinase inhibitors was collected, and could be a useful tool for the scientist in the domain of tyrosinase enzyme researches. The current report could help to shed some clues in the identification of new chemicals that inhibits enzyme tyrosinase, for entering in the pipeline of drug discovery development.
KW - Biosilico identification
KW - Experimental results
KW - LDA-based QSAR model
KW - Non-stochasticand stochastic bond-based bilinear indices
KW - TOMOCOMD-CARDD software
KW - TetraKetones
KW - Tyrosinaseinhibitor
KW - Virtual screening
UR - http://www.scopus.com/inward/record.url?scp=34047114759&partnerID=8YFLogxK
U2 - 10.1007/s10822-006-9094-7
DO - 10.1007/s10822-006-9094-7
M3 - Artículo
C2 - 17333484
AN - SCOPUS:34047114759
SN - 0920-654X
VL - 21
SP - 167
EP - 188
JO - Journal of Computer-Aided Molecular Design
JF - Journal of Computer-Aided Molecular Design
IS - 4
ER -