TY - JOUR
T1 - Development of migration models for acids in capillary electrophoresis using heuristic and radial basis function neural network methods
AU - Xue, Chunxia
AU - Yao, Xiaojun
AU - Liu, Huanxiang
AU - Liu, Mancang
AU - Hu, Zhide
AU - Fan, Botao
PY - 2005/6
Y1 - 2005/6
N2 - A quantitative structure-mobility relationship (QSMR) was developed for the absolute mobilities of a diverse set of 277 organic and inorganic acids in capillary electrophoresis based on the descriptors calculated from the structure alone. The heuristic method (HM) and the radial basis function neural networks (RBFNN) were utilized to construct the linear and nonlinear prediction models, respectively. The prediction results were in agreement with the experimental values. The HM model gave a root-mean-square (RMS) error of 3.66 electrophoretic mobility units for the training set, 4.67 for the test set, and 3.88 for the whole data set, while the RBFNN gave an RMS error of 2.49, 3.19, and 2.65, respectively. The heuristic linear model could give some insights into the factors that are likely to govern the mobilities of the compounds, however, the prediction results of the RBFNN model seem to be better than that of the HM.
AB - A quantitative structure-mobility relationship (QSMR) was developed for the absolute mobilities of a diverse set of 277 organic and inorganic acids in capillary electrophoresis based on the descriptors calculated from the structure alone. The heuristic method (HM) and the radial basis function neural networks (RBFNN) were utilized to construct the linear and nonlinear prediction models, respectively. The prediction results were in agreement with the experimental values. The HM model gave a root-mean-square (RMS) error of 3.66 electrophoretic mobility units for the training set, 4.67 for the test set, and 3.88 for the whole data set, while the RBFNN gave an RMS error of 2.49, 3.19, and 2.65, respectively. The heuristic linear model could give some insights into the factors that are likely to govern the mobilities of the compounds, however, the prediction results of the RBFNN model seem to be better than that of the HM.
KW - Acids
KW - Electrophoretic mobility
KW - Heuristic method
KW - Quantitative structure-mobility relationship
KW - Radial basis function neural network
UR - http://www.scopus.com/inward/record.url?scp=20744438940&partnerID=8YFLogxK
U2 - 10.1002/elps.200410175
DO - 10.1002/elps.200410175
M3 - Article
C2 - 15852353
AN - SCOPUS:20744438940
SN - 0173-0835
VL - 26
SP - 2154
EP - 2164
JO - Electrophoresis
JF - Electrophoresis
IS - 11
ER -