RAPID AND QUANTITATIVE-ANALYSIS OF THE PYROLYSIS MASS-SPECTRA OF COMPLEX BINARY AND TERTIARY MIXTURES USING MULTIVARIATE CALIBRATION AND ARTIFICIAL NEURAL NETWORKS
R. Goodacre et al., RAPID AND QUANTITATIVE-ANALYSIS OF THE PYROLYSIS MASS-SPECTRA OF COMPLEX BINARY AND TERTIARY MIXTURES USING MULTIVARIATE CALIBRATION AND ARTIFICIAL NEURAL NETWORKS, Analytical chemistry, 66(7), 1994, pp. 1070-1085
Binary mixtures of the protein lysozyme with glycogen, of DNA or RNA i
n glycogen, and the tertiary mixture of cells of the bacteria Bacillus
subtilis, Escherichia coli, and Staphylococcus aureus were subjected
to pyrolysis mass spectrometry. To analyze the pyrolysis mass spectra
so as to obtain quantitative information representative of the complex
components of the mixtures, partial least-squares regression (PLS), p
rincipal components regression (PCR), and fully interconnected feedfor
ward artificial neural networks (ANNs) were studied. In the latter cas
e, the weights were modified using the standard back-propagation algor
ithm, and the nodes used a sigmoidal squashing function. It was found
that each of the methods could be used to provide calibration models w
hich gave excellent predictions for the concentrations of determinands
in samples on which they had not been trained. Neural networks were f
ound to provide the most accurate predictions. We also report that sca
ling the individual nodes on the input layer of ANNs significantly dec
reased the time taken for the ANNs to learn. Removing masses of low in
tensity, which perhaps mainly contributed noise to the pyrolysis mass
spectra, had little effect on the accuracy of the ANN predictions thou
gh could dramatically speed up the learning process (by more than 100-
fold) and slightly improved the accuracy of PLS calibrations.