Strategic selection of chemicals for testing. Part I. Functionalities and performance of basic selection methods

被引:4
作者
Aladjov, H.
Todorov, M. [1 ]
Schmieder, P. [2 ]
Serafimova, R. [1 ]
Mekenyan, O. [1 ]
Veith, G. [3 ]
机构
[1] Bourgas As Zlatarov Univ, Lab Math Chem, Burgas 8010, Bulgaria
[2] US EPA, ORD, NHEERL, Midcontinent Ecol Div, Duluth, MN 55804 USA
[3] Int QSAR Fdn Reduce Anim Testing, Two Harbors, MN 55616 USA
关键词
strategic selection; validation of QSARs; training set expansion; ESTROGEN-RECEPTOR-BINDING; QSAR;
D O I
10.1080/10629360902723996
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
To develop quantitative structure-activity relationships (QSAR) models capable of predicting adverse effects for large chemical inventories and diverse structures, an interactive approach is presented that includes testing of strategically selected chemicals to expand the scope of a preliminary model to cover a target inventory. The goal of chemical selection in this context is to make the testing more effective in terms of adding maximal new structural information to the predictive model with minimal testing. The aim of this paper is to describe a set of algorithmic solutions and modelling techniques that can be used to efficiently select chemicals for testing to achieve a variety of goals. One purpose of chemical selection is to refine the model thus extending our knowledge about the modelled subject. Alternatively, the selection of chemicals for testing could be targeted at achieving a more adequate structural representation of a specific universe of untested chemicals to extend the model applicability domain on each subsequent step of model development. The chemical selection tools are collectively provided in a software package referred to as ChemPick. The system also allows the visualisation of chemical inventories and training sets in multidimensional (two and three dimensions) descriptor space. The software environment allows one or more datasets to be simultaneously loaded in a three-dimensional (or N-dimensional) chart where each point represents a combination of values for the descriptors for a given conformation of a chemical. The application of the chemical selection tools to select chemicals to expand a preliminary model of human oestrogen receptor (hER) ligand binding to more adequately cover a diverse chemical inventory is presented to demonstrate the application of these tools.
引用
收藏
页码:159 / 183
页数:25
相关论文
共 17 条
[1]  
[Anonymous], 1988, ALGORITHMS CLUSTERIN
[2]   The estradiol pharmacophore: Ligand structure-estrogen receptor binding affinity relationships and a model for the receptor binding site [J].
Anstead, GM ;
Carlson, KE ;
Katzenellenbogen, JA .
STEROIDS, 1997, 62 (03) :268-303
[3]  
Bevington P. R., 1969, DATA REDUCTION ERROR
[4]   A stepwise approach for defining the applicability domain of SAR and QSAR models [J].
Dimitrov, S ;
Dimitrova, G ;
Pavlov, T ;
Dimitrova, N ;
Patlewicz, G ;
Niemela, J ;
Mekenyan, O .
JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2005, 45 (04) :839-849
[5]   Multidimensional access methods [J].
Gaede, V ;
Gunther, O .
ACM COMPUTING SURVEYS, 1998, 30 (02) :170-231
[6]  
Gelman A., 2006, DATA ANAL USING REGR, DOI DOI 10.1017/CBO9780511790942
[7]   Nature of the ligand-binding pocket of estrogen receptor α and β:: The search for subtype-selective ligands and implications for the prediction of estrogenic activity [J].
Katzenellenbogen, JA ;
Muthyala, R ;
Katzenellenbogen, BS .
PURE AND APPLIED CHEMISTRY, 2003, 75 (11-12) :2397-2403
[8]  
Marquardt D., 1963, SIAM J APPL MATH, V11, P431, DOI [DOI 10.1137/0111030, 10.1137/0111030]
[9]   Representation of chemical information in OASIS centralized 3D database for existing chemicals [J].
Nikolov, Nikolai ;
Grancharov, Vanio ;
Stoyanova, Galya ;
Pavlov, Todor ;
Mekenyan, Ovanes .
JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2006, 46 (06) :2537-2551
[10]  
RAYMOND T, 1994, 20 INT C VER LARG DA