There is an increasing use of spectroscopic techniques, such as high-resolution NMR spectroscopy, to examine variations in cell metabolism and/or structure in response to numerous physical, chemical, and biological agents. In these types of studies, in order to obtain relative quantitative information, a comparison between signal intensities of control samples and treated or exposed ones is often conducted. A possible strategy is to estimate, by an opportune algorithm, a normalisation constant which takes into consideration all cell metabolites in the sample. In this paper, a new normalisation algorithm based on Principal Component Analysis (PCA) is presented. PRICONA (PRIncipal COmponent Normalisation Algorithm) is advantageous in normalis...
Motivation: Metabolomics datasets are generally large and complex. Using principal component analysi...
In order to maintain life, living organisms product and transform small molecules called metabolites...
The classi¿cation of high dimensional data, such as images, gene-expression data and spectral data, ...
There is an increasing use of spectroscopic techniques, such as high-resolution NMR spectroscopy, to...
There is increasing use of spectroscopic techniques, such as high-resolution NMR spectroscopy, to ex...
There is increasing use of spectroscopic techniques, such as high-resolution NMR spectroscopy, to ex...
There is increasing use of spectroscopic techniques, such as high-resolution NMR spectroscopy, to ex...
Motivation: Metabolomics datasets are generally large and complex. Using Principal Component Analysi...
Proton nuclear magnetic resonance ( 1H-NMR) spectroscopy is one of the major analytical platforms us...
In this work Principal Component Analysis (PCA) was applied, in order to denoise Near-InfraRed Spect...
The interpretation of metabolic information is crucial to understanding the functioning of a biologi...
<p>Pattern recognition of samples scored by PCA (A), PLS-DA (B and C), and PLS regression (D and E)....
Principal component analysis: the basic building block of chemometrics The chemometrics is a discipl...
In order to maintain life, living organism’s product and transform small molecules called metabolite...
Motivation: Metabolomics datasets are generally large and complex. Using principal component analysi...
In order to maintain life, living organisms product and transform small molecules called metabolites...
The classi¿cation of high dimensional data, such as images, gene-expression data and spectral data, ...
There is an increasing use of spectroscopic techniques, such as high-resolution NMR spectroscopy, to...
There is increasing use of spectroscopic techniques, such as high-resolution NMR spectroscopy, to ex...
There is increasing use of spectroscopic techniques, such as high-resolution NMR spectroscopy, to ex...
There is increasing use of spectroscopic techniques, such as high-resolution NMR spectroscopy, to ex...
Motivation: Metabolomics datasets are generally large and complex. Using Principal Component Analysi...
Proton nuclear magnetic resonance ( 1H-NMR) spectroscopy is one of the major analytical platforms us...
In this work Principal Component Analysis (PCA) was applied, in order to denoise Near-InfraRed Spect...
The interpretation of metabolic information is crucial to understanding the functioning of a biologi...
<p>Pattern recognition of samples scored by PCA (A), PLS-DA (B and C), and PLS regression (D and E)....
Principal component analysis: the basic building block of chemometrics The chemometrics is a discipl...
In order to maintain life, living organism’s product and transform small molecules called metabolite...
Motivation: Metabolomics datasets are generally large and complex. Using principal component analysi...
In order to maintain life, living organisms product and transform small molecules called metabolites...
The classi¿cation of high dimensional data, such as images, gene-expression data and spectral data, ...