QUANTITATIVE STRUCTURE-SUBLIMATION ENTHALPY RELATIONSHIP STUDIED BY NEURAL NETWORKS, THEORETICAL CRYSTAL PACKING CALCULATIONS AND MULTILINEAR REGRESSION-ANALYSIS

被引:32
作者
CHARLTON, M
DOCHERTY, R
HUTCHINGS, MG
机构
[1] Zeneca Specialities Research Centre, Hexagon House, Blackley, Manchester, M9 8ZS
来源
JOURNAL OF THE CHEMICAL SOCIETY-PERKIN TRANSACTIONS 2 | 1995年 / 11期
关键词
D O I
10.1039/p29950002023
中图分类号
O62 [有机化学];
学科分类号
070303 ; 081704 ;
摘要
Three different techniques have been used to analyse the relationship between the structure of 62 organic compounds and their sublimation enthalpies. Using a neural network based on molecular structure descriptors (molecular formula, hydrogen bonding and pi-characteristics), sublimation enthalpies can be modelled, The best of the neural network models yielded an average error of 2.5 kcal mol(-1) in a series of 'leave-one-out experiments'. The same sublimation enthalpy data have been studied using theoretical techniques based upon crystal packing calculations, and also with a simple three parameter multilinear regression model. The latter two methods produced results that were superior to the neural network in this particular study (mean errors of 1.4 and 1.8 kcal mol(-1), respectively), although in the case of MLRA, this is the result of the model fitting exercise, and not a predictive run. It was surprising to find such a simple linear relationship between characteristics describing the molecular formula and the sublimation enthalpy. Nevertheless, the results here have highlighted the potential of neural networks and MLRA as useful tools for the approximate prediction of physical properties, as demonstrated for a series of compounds not included in the training set.
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页码:2023 / 2030
页数:8
相关论文
共 40 条
[1]  
[Anonymous], [No title captured]
[2]  
[Anonymous], 1970, THERMOCHEMISTRY ORGA
[3]  
[Anonymous], 1989, SAS STAT USERS GUIDE, V2
[4]  
AOYAMA T, 1989, CHEM PHARM BULL, V37, P2558
[5]  
AOYAMA T, 1991, CHEM PHARM BULL, V39, P372
[6]  
AOYAMA T, 1991, CHEM PHARM BULL, V39, P358
[7]   NEURAL NETWORKS APPLIED TO PHARMACEUTICAL PROBLEMS .3. NEURAL NETWORKS APPLIED TO QUANTITATIVE STRUCTURE ACTIVITY RELATIONSHIP ANALYSIS [J].
AOYAMA, T ;
SUZUKI, Y ;
ICHIKAWA, H .
JOURNAL OF MEDICINAL CHEMISTRY, 1990, 33 (09) :2583-2590
[8]   NEURAL NETWORK STUDIES .1. ESTIMATION OF THE AQUEOUS SOLUBILITY OF ORGANIC-COMPOUNDS [J].
BODOR, N ;
HARGET, A ;
HUANG, MJ .
JOURNAL OF THE AMERICAN CHEMICAL SOCIETY, 1991, 113 (25) :9480-9483
[9]   ESTIMATING HEATS OF SUBLIMATION OF HYDROCARBONS - A SEMIEMPIRICAL APPROACH [J].
CHICKOS, JS ;
ANNUNZIATA, R ;
LADON, LH ;
HYMAN, AS ;
LIEBMAN, JF .
JOURNAL OF ORGANIC CHEMISTRY, 1986, 51 (22) :4311-4314
[10]   THE DEVELOPMENT AND USE OF QUANTUM-MECHANICAL MOLECULAR-MODELS .76. AM1 - A NEW GENERAL-PURPOSE QUANTUM-MECHANICAL MOLECULAR-MODEL [J].
DEWAR, MJS ;
ZOEBISCH, EG ;
HEALY, EF ;
STEWART, JJP .
JOURNAL OF THE AMERICAN CHEMICAL SOCIETY, 1985, 107 (13) :3902-3909