Multivariate curve resolution of wavelet and Fourier compressed spectra

被引:23
作者
Harrington, PD [1 ]
Rauch, PJ
Cai, CS
机构
[1] Ohio Univ, Dept Chem, Ctr Intelligent Chem Instrumentat, Athens, OH 45701 USA
[2] Schaffner Mfg Co Inc, Pittsburgh, PA 15202 USA
[3] Aventis Pharmaceut, Kansas City, MO 64137 USA
关键词
D O I
10.1021/ac000956s
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
The multivariate curve resolution method SIMPLe to use Interactive Self-Modeling Mixture Analysis (SIMPLISMA) was applied to Fourier and wavelet compressed ion-mobility spectra, The spectra obtained from the SIMPLlSMA model were transformed back to their original representation, that is, uncompressed format. SIMPLISMA was able to model the same pure variables for the partial wavelet transform, although for the Fourier and complete wavelet transforms, satisfactory pure variables and models were not obtained. Data were acquired from two samples and two different ion mobility spectrometry (IMS) sensors. The first sample was thermally desorbed sodium gamma -hydroxybutyrate (GHB), and the second sample was a liquid mixture of dicyclohexylamine (DCHA) and diethylmethylphosphonate (DEMP), The spectra were compressed to 6.3% of their original size. SIMPLISMA was applied to the compressed data in the Fourier and wavelet domains. An alternative method of normalizing SIMPLISMA spectra was devised that removes variation in scale between SIMPLISMA results obtained from uncompressed and compressed data. SIMPLISMA was able to accurately extract the spectral features and concentration profiles directly from daublet compressed IMS data at a compression ratio of 93.7% with root-mean-square errors of reconstruction <3%, The daublet wavelet filters were selected, because they worked well when compared to coiflet and symmlet, The effects of the daublet filter width and compression ratio were evaluated with respect to reconstruction errors of the data sets and SIMPLISMA spectra. For these experiments, the daublet 14 filter performed well for the two data sets.
引用
收藏
页码:3247 / 3256
页数:10
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