Literature DB >> 19283696

The autocorrelation matrix probing biochemical relationships after metabolic fingerprinting with CE.

Santiago Angulo1, Isabel García-Pérez, Cristina Legido-Quigley, Coral Barbas.   

Abstract

Fingerprinting together with statistical analysis is often employed to compare samples in metabonomic studies of a disease. Correlation algorithms can aid by extracting information based on the variation patterns of key metabolites. This information can be linked to metabolite identification or to specific up/down-regulated biochemical pathways. Matlab-based software employing the Pearson's correlation algorithm was applied to urine electropherograms from 20 mice infected with the schistosoma parasite. The fingerprints were the sum of electropherograms analysed with normal and reverse polarity, in two different modes MEKC and CZE and with two different capillaries (uncoated and polyacrylamide coated) to provide a broad picture of the samples. Hippurate, a metabolite that was depleted in the infected group and is present in both polarities, was chosen as a test variable; it correlated with itself to a p value of <0.000. Phenylacetylglycine, a metabolite shown as over expressed in the disease, was positively correlated to three metabolites in its same pathway with a correlation coefficient of 0.7 and p<0.000 to phenylalanine, 0.7 and p<0.000 to 2-hydroxyphenylacetic and 0.55 and p<0.003 to phenylacetate. The study shows that the autocorrelation matrix is able to provide extra information from data files acquired by CE analyses. It underlined an up-regulated metabolic path by association in the schistosoma infection model.

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Year:  2009        PMID: 19283696     DOI: 10.1002/elps.200800554

Source DB:  PubMed          Journal:  Electrophoresis        ISSN: 0173-0835            Impact factor:   3.535


  2 in total

Review 1.  Eating at the table of another: metabolomics of host-parasite interactions.

Authors:  Björn F C Kafsack; Manuel Llinás
Journal:  Cell Host Microbe       Date:  2010-02-18       Impact factor: 21.023

2.  Associating brain imaging phenotypes and genetic in Alzheimer's disease via JSCCA approach with autocorrelation constraints.

Authors:  Kai Wei; Wei Kong; Shuaiqun Wang
Journal:  Med Biol Eng Comput       Date:  2021-10-29       Impact factor: 2.602

  2 in total

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