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Tytuł pozycji:

Analysis of multi-source metabolomic data using joint and individual variation explained (JIVE).

Tytuł:
Analysis of multi-source metabolomic data using joint and individual variation explained (JIVE).
Autorzy:
Kuligowski J; Neonatal Research Centre, Health Research Institute La Fe, Valencia, Spain.
Pérez-Guaita D
Sánchez-Illana Á
León-González Z
de la Guardia M
Vento M
Lock EF
Quintás G
Źródło:
The Analyst [Analyst] 2015 Jul 07; Vol. 140 (13), pp. 4521-9.
Typ publikacji:
Journal Article; Research Support, Non-U.S. Gov't
Język:
English
Imprint Name(s):
Publication: Cambridge : Royal Society of Chemistry
Original Publication: London : Chemical Society
MeSH Terms:
Metabolomics/*methods
Statistics as Topic/*methods
Blood Chemical Analysis ; Humans ; Software ; Urinalysis
Entry Date(s):
Date Created: 20150520 Date Completed: 20160211 Latest Revision: 20150615
Update Code:
20240104
DOI:
10.1039/c5an00706b
PMID:
25988771
Czasopismo naukowe
Metabolic profiling is increasingly being used for understanding biological processes but there is no single analytical technique that provides a complete quantitative or qualitative profiling of the metabolome. Data fusion (i.e. joint analysis of data from multiple sources) has the potential to circumvent this issue facilitating knowledge discovery and reliable biomarker identification. Another field of application of data fusion is the simultaneous analysis of metabolomic changes through several biofluids or tissues. However, metabolomics typically deals with large datasets, with hundreds to thousands of variables and the identification of shared and individual factors or structures across multiple sources is challenging due to the high variable to sample ratios and differences in intensity and noise range. In this work we apply a recent method, Joint and Individual Variation Explained (JIVE), for the integrated unsupervised analysis of metabolomic profiles from multiple data sources. This method separates the shared patterns among data sources (i.e. the joint structure) from the individual structure of each data source that is unrelated to the joint structure. Two examples are described to show the applicability of JIVE for the simultaneous analysis of multi-source data using: (i) plasma samples subjected to different analytical techniques, sample treatment and measurement conditions; and (ii) plasma and urine samples subjected to liquid chromatography-mass spectrometry measured using two ionization conditions.

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