Prediction of inhibitor binding free energies by quantum neural networks. Nucleoside analogues binding to trypanosomal nucleoside hydrolase

被引:13
作者
Braunheim, BB
Miles, RW
Schramm, VL
Schwartz, SD
机构
[1] Albert Einstein Coll Med, Dept Biochem, Bronx, NY 10461 USA
[2] Albert Einstein Coll Med, Dept Physiol & Biophys, Bronx, NY 10461 USA
关键词
D O I
10.1021/bi990830t
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
A computational method has been developed to predict inhibitor binding energy for untested inhibitor molecules. A neural network is trained from the electrostatic potential surfaces of known inhibitors and their binding energies. The algorithm is then able to predict, with high accuracy, the binding energy of unknown inhibitors. IU-nucleoside hydrolase from Crithidia fasciculata and the inhibitor molecules described previously [Miles, R. W. Tyler, P. C, Evans, G. Furneaux R, H., Parkin, D. W., and Schramm, V. L. (1999) Biochemistry 38, xxxx-xxxx] are used as the test system. Discrete points on the molecular electrostatic potential surface of inhibitor molecules are input to neural networks to identify the quantum mechanical features that contribute to binding. Feed-forward neural networks with back-propagation of error are trained to recognize the quantum mechanical electrostatic potential and geometry at the entire van der Waals surface of a group of training molecules and to predict the strength of interactions between the enzyme and novel inhibitors. The binding energies of unknown inhibitors were predicted, followed by experimental determination of K-i values. Predictions of Ki values using this theory are compared to other methods and are more robust in estimating inhibitory strength. The average deviation in estimating K-i values for 18 unknown inhibitor molecules, with 21 training molecules, is a factor of 5 x K-i over a range of 660 000 in K-i values for all molecules. The a posteriori accuracy of the predictions suggests the method will be effective as a guide for experimental inhibitor design.
引用
收藏
页码:16076 / 16083
页数:8
相关论文
共 23 条
[11]   ELECTRONIC NATURE OF THE TRANSITION-STATE FOR NUCLEOSIDE HYDROLASE - A BLUEPRINT FOR INHIBITOR DESIGN [J].
HORENSTEIN, BA ;
SCHRAMM, VL .
BIOCHEMISTRY, 1993, 32 (28) :7089-7097
[12]   Determinants of ligand binding to cAMP-dependent protein kinase [J].
Hünenberger, PH ;
Helms, V ;
Narayana, N ;
Taylor, SS ;
McCammon, JA .
BIOCHEMISTRY, 1999, 38 (08) :2358-2366
[13]   Three-dimensional quantitative similarity-activity relationships (3D QSiAR) from SEAL similarity matrices [J].
Kubinyi, H ;
Hamprecht, FA ;
Mietzner, T .
JOURNAL OF MEDICINAL CHEMISTRY, 1998, 41 (14) :2553-2564
[14]  
MILES RW, 1999, BIOCHEMISTRY-US, V38, pR40
[15]   Isozyme-specific transition state inhibitors for the trypanosomal nucleoside hydrolases [J].
Parkin, DW ;
Limberg, G ;
Tyler, PC ;
Furneaux, RH ;
Chen, XY ;
Schramm, VL .
BIOCHEMISTRY, 1997, 36 (12) :3528-3534
[16]   BINDING MODES FOR SUBSTRATE AND A PROPOSED TRANSITION-STATE ANALOG OF PROTOZOAN NUCLEOSIDE HYDROLASE [J].
PARKIN, DW ;
SCHRAMM, VL .
BIOCHEMISTRY, 1995, 34 (42) :13961-13966
[17]  
PARKIN DW, 1991, J BIOL CHEM, V266, P20658
[18]  
Politzer P., 2013, Chemical Applications of Atomic-Molecular Electrostatic Potentials: Reactivity, Structure, Scattering-Energetics of Organic, Inorganic-Biological Systems
[19]  
Rumelhart D. E., 1986, PARALLEL DISTRIBUTED, V1
[20]   USE OF THE ELECTROSTATIC POTENTIAL AT THE MOLECULAR-SURFACE TO INTERPRET AND PREDICT NUCLEOPHILIC PROCESSES [J].
SJOBERG, P ;
POLITZER, P .
JOURNAL OF PHYSICAL CHEMISTRY, 1990, 94 (10) :3959-3961