A parallel model of independent component analysis constrained by a 5-parameter reference curve and its solution by multi-target particle swarm optimization

Title
A parallel model of independent component analysis constrained by a 5-parameter reference curve and its solution by multi-target particle swarm optimization
Publication Date
2014
Author(s)
Cui, Lizhi
Ling, Zhihao
Poon, Josiah
Poon, Simon
Chen, Hao
Gao, Junbin
Kwan, Paul H
Fan, Kei
Type of document
Journal Article
Language
en
Entity Type
Publication
Publisher
RSC Publications
Place of publication
United Kingdom
DOI
10.1039/c3ay42196a
UNE publication id
une:15310
Abstract
The separation technologies of 3D chromatograms have been researched for a long time to obtain spectra and chromatogram peaks for individual compounds. However, before applying most of the current methods, the number of compounds must be known in advance. Independent Component Analysis (ICA) is applied to separate 3D chromatograms without knowing the compounds' number in advance, but the existence of the noise component in the results makes it complex for computation. In this paper, a parallel model of Independent Component Analysis constrained by a 5-parameter Reference Curve (pICA5pRC) is proposed based on the ICA model. Introducing a priori knowledge from chromatogram peaks, the pICA5pRC model transformed the 3D chromatogram separation problem to a 5 parameters optimization issue. An algorithm named multi-target particle swarm optimization (mPSO) has been developed to solve the pICA5pRC model. Through simulations, the performance and explanation of our method were described. Through experiments, the practicability of our method is validated. The results show that: (1) our method could separate 3D chromatograms efficiently even with severe overlap without knowing the compounds' number in advance; (2) our method extracted chromatogram peaks from the dataset directly without noise components; (3) our method could be applied to the practical HPLC-DAD dataset.
Link
Citation
Analytical Methods, 6(8), p. 2679-2686
ISSN
1759-9679
1759-9660
Start page
2679
End page
2686

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