QSARs for 6-Azasteroids as Inhibitors of Human Type 1 5α-Reductase: Prediction of Binding Affinity and Selectivity Relative to 3-BHSD
- 1 August 2001
- journal article
- research article
- Published by American Chemical Society (ACS) in Journal of Chemical Information and Computer Sciences
- Vol. 41 (5) , 1255-1265
- https://doi.org/10.1021/ci010036q
Abstract
Quantitative structure−activity relationships (QSARs) are developed to describe the ability of 6-azasteroids to inhibit human type 1 5α-reductase. Models are generated using a set of 93 compounds with known binding affinities (Ki) to 5α-reductase and 3β-hydroxy-Δ5-steroid dehydrogenase/3-keto-Δ5-steroid isomerase (3-BHSD). QSARs are generated to predict Ki values for inhibitors of 5α-reductase and to predict selectivity (Si) of compound binding to 3-BHSD relative to 5α-reductase. Log(Ki) values range from −0.70 log units to 4.69 log units, and log(Si) values range from −3.00 log units to 3.84 log units. Topological, geometric, electronic, and polar surface descriptors are used to encode molecular structure. Information-rich subsets of descriptors are identified using evolutionary optimization procedures. Predictive models are generated using linear regression, computational neural networks (CNNs), principal components regression, and partial least squares. Compounds in an external prediction set are used for model validation. A 10−3−1 CNN is developed for prediction of binding affinity to 5α-reductase that produces root-mean-square error (RMSE) of 0.293 log units (R2 = 0.97) for compounds in the external prediction set. Additionally, an 8−3−1 CNN is generated for prediction of inhibitor selectivity that produces RMSE = 0.513 log units (R2 = 0.89) for the external prediction set. Models are further validated through Monte Carlo experiments in which models are generated after dependent variable values have been scrambled.Keywords
This publication has 28 references indexed in Scilit:
- Prediction of Human Intestinal Absorption of Drug Compounds from Molecular StructureJournal of Chemical Information and Computer Sciences, 1998
- GA Strategy for Variable Selection in QSAR Studies: GA-Based Region Selection for CoMFA ModelingJournal of Chemical Information and Computer Sciences, 1998
- 4-Methyl-3-oxo-4-aza-5α-androst-1-ene-17β-N-aryl-carboxamides: an approach to combined androgen blockade [5α-reductase inhibition with androgen receptor binding in vitro]The Journal of Steroid Biochemistry and Molecular Biology, 1997
- Correlation of Drug Absorption with Molecular Surface PropertiesJournal of Pharmaceutical Sciences, 1996
- Automated Descriptor Selection for Quantitative Structure-Activity Relationships Using Generalized Simulated AnnealingJournal of Chemical Information and Computer Sciences, 1995
- Prediction of Reduced Ion Mobility Constants from Structural Information Using Multiple Linear Regression Analysis and Computational Neural NetworksAnalytical Chemistry, 1994
- Atomic charge calculations for quantitative structure—property relationshipsJournal of Computational Chemistry, 1992
- Generalized simulated annealing for calibration sample selection from an existing set and orthogonalization of undesigned experimentsJournal of Chemometrics, 1991
- A simple method for the representation, quantification, and comparison of the volumes and shapes of chemical compoundsJournal of Chemical Information and Computer Sciences, 1986
- Distinguishing Atom Differences in a Molecular Graph Shape IndexQuantitative Structure-Activity Relationships, 1986