Antitumor Agents. 213. Modeling of Epipodophyllotoxin Derivatives Using Variable SelectionkNearest Neighbor QSAR Method
- 24 April 2002
- journal article
- research article
- Published by American Chemical Society (ACS) in Journal of Medicinal Chemistry
- Vol. 45 (11) , 2294-2309
- https://doi.org/10.1021/jm0105427
Abstract
We have applied a variable selection k nearest neighbor quantitative structure−activity relationship (kNN QSAR) method to develop predictive QSAR models for 157 epipodophyllotoxins synthesized previously in our ongoing effort to develop potential anticancer agents. QSAR models were generated using multiple topological descriptors of chemical structures, including molecular connectivity indices (MCI) and molecular operating environment descriptors. The 157 compounds were separated into several training and test sets. The robustness of QSAR models was characterized by the values of the internal leave one out cross-validated R2 (q2) for the training set and external predictive R2 for the test set. The significance of the training set models was confirmed by statistically higher values of q2 for the original data set as compared to q2 values for the same data set with randomly shuffled activities. kNN QSAR models were compared with those obtained with the comparative molecular field analysis method; the kNN QSAR approach afforded models with higher values of both q2 and predictive R2. One of the best models obtained from kNN analysis using MCI as descriptors provided q2 and predictive R2 values of 0.60 and 0.62, respectively. QSAR models developed in these studies shall aid in future design of novel potent epipodophyllotoxin derivatives.Keywords
This publication has 22 references indexed in Scilit:
- Antitumor agents. Part 212: Bucidarasins A–C, three new cytotoxic clerodane diterpenes from Bucida bucerasBioorganic & Medicinal Chemistry Letters, 2002
- Characterization of human lung cancer cells resistant to 4′-O-demethyl-4β-(2′′-nitro-4′′-fluoroanilino)-4-desoxypodophyllotoxin, a unique compound in the epipodophyllotoxin antitumor classAnti-Cancer Drugs, 2000
- Novel Variable Selection Quantitative Structure−Property Relationship Approach Based on thek-Nearest-Neighbor PrincipleJournal of Chemical Information and Computer Sciences, 1999
- Lead Discovery Using Stochastic Cluster Analysis (SCA): A New Method for Clustering Structurally Similar CompoundsJournal of Chemical Information and Computer Sciences, 1998
- Automated Descriptor Selection for Quantitative Structure-Activity Relationships Using Generalized Simulated AnnealingJournal of Chemical Information and Computer Sciences, 1995
- Antitumor agents. 124. New 4.beta.-substituted aniline derivatives of 6,7-O,O-demethylene-4'-O-demethylpodophyllotoxin and related compounds as potent inhibitors of human DNA topoisomerase IIJournal of Medicinal Chemistry, 1992
- Cholecystokinin (CCK) antagonists: (R)-tryptophan-based hybrid antagonists of high affinity and selectivity for CCK-A receptorsJournal of Medicinal Chemistry, 1991
- Generalized simulated annealing for calibration sample selection from an existing set and orthogonalization of undesigned experimentsJournal of Chemometrics, 1991
- Generalized Simulated Annealing for Function OptimizationTechnometrics, 1986
- Optimization by Simulated AnnealingScience, 1983