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Application of multidimensional data analysis to chromatography
This work presents analysis of chromatographic signal used to identify substances in samples. First part consists of chromatography overview and description of three classification methods (neural network with backpropagation, probabilistic neural network with Parzen window and support vector machin...
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Published in: | Image processing & communications (Versita) 2013-12, Vol.18 (2-3), p.101 |
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container_title | Image processing & communications (Versita) |
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creator | Satlawa, Tadeusz Grabska-Chrzastowska, Joanna Korohoda, Przemyslaw |
description | This work presents analysis of chromatographic signal used to identify substances in samples. First part consists of chromatography overview and description of three classification methods (neural network with backpropagation, probabilistic neural network with Parzen window and support vector machines). Designed algorithm consists of several stages: signal filtering, peak detection and its approximation with sum of two Gaussian functions. The parameters of that two curves are the features vectors describing the peak of the substance. The last step is classification, for which two types of supervised machine learning were compared, based on the whole signal and on features vectors. Both types were tested for different classificators and their parameters. Verification was based on 55 chromatography signals. The best results for both methods of learning were achieved for probabilistic neural networks. The correct classification rate was 82% for the whole signal and 93% for feature vectors. |
doi_str_mv | 10.2478/v10248-012-0084-1 |
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title | Application of multidimensional data analysis to chromatography |
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