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Bayesian independent component analysis recovers pathway signatures from blood metabolomics data.
J. Proteome Res. 11, 4120-4131 (2012)
Interpreting the complex interplay of metabolites in heterogeneous biosamples still poses a challenging task. In this study, we propose independent component analysis (ICA) as a multivariate analysis tool for the interpretation of large-scale metabolomics data. In particular, we employ a Bayesian ICA method based on a mean-field approach, which allows us to statistically infer the number of independent components to be reconstructed. The advantage of ICA over correlation-based methods like principal component analysis (PCA) is the utilization of higher order statistical dependencies, which not only yield additional information but also allow a more meaningful representation of the data with fewer components. We performed the described ICA approach on a large-scale metabolomics data set of human serum samples, comprising a total of 1764 study probands with 218 measured metabolites. Inspecting the source matrix of statistically independent metabolite profiles using a weighted enrichment algorithm, we observe strong enrichment of specific metabolic pathways in all components. This includes signatures from amino acid metabolism, energy-related processes, carbohydrate metabolism, and lipid metabolism. Our results imply that the human blood metabolome is composed of a distinct set of overlaying, statistically independent signals. ICA furthermore produces a mixing matrix, describing the strength of each independent component for each of the study probands. Correlating these values with plasma high-density lipoprotein (HDL) levels, we establish a novel association between HDL plasma levels and the branched-chain amino acid pathway. We conclude that the Bayesian ICA methodology has the power and flexibility to replace many of the nowadays common PCA and clustering-based analyses common in the research field.
Impact Factor
Scopus SNIP
Web of Science
Times Cited
Times Cited
Scopus
Cited By
Cited By
Altmetric
5.113
1.252
21
22
Anmerkungen
Besondere Publikation
Auf Hompepage verbergern
Publikationstyp
Artikel: Journalartikel
Dokumenttyp
Wissenschaftlicher Artikel
Schlagwörter
metabolomics; independent component analysis; Bayesian; systems biology; bioinformatics; blood serum; population cohorts; Expression Profiles; Fmri Data; Disease; Classification; Progression; Obesity
Sprache
englisch
Veröffentlichungsjahr
2012
HGF-Berichtsjahr
2012
ISSN (print) / ISBN
1535-3893
e-ISSN
1535-3907
Zeitschrift
Journal of Proteome Research
Quellenangaben
Band: 11,
Heft: 8,
Seiten: 4120-4131
Verlag
American Chemical Society (ACS)
Begutachtungsstatus
Peer reviewed
Institut(e)
Institute of Bioinformatics and Systems Biology (IBIS)
Molekulare Endokrinologie und Metabolismus (MEM)
Research Unit Molecular Epidemiology (AME)
Institute of Experimental Genetics (IEG)
Molekulare Endokrinologie und Metabolismus (MEM)
Research Unit Molecular Epidemiology (AME)
Institute of Experimental Genetics (IEG)
POF Topic(s)
30505 - New Technologies for Biomedical Discoveries
30201 - Metabolic Health
30501 - Systemic Analysis of Genetic and Environmental Factors that Impact Health
90000 - German Center for Diabetes Research
30201 - Metabolic Health
30501 - Systemic Analysis of Genetic and Environmental Factors that Impact Health
90000 - German Center for Diabetes Research
Forschungsfeld(er)
Enabling and Novel Technologies
Genetics and Epidemiology
Genetics and Epidemiology
PSP-Element(e)
G-503700-004
G-505600-001
G-504200-003
G-501900-061
G-505600-001
G-504200-003
G-501900-061
PubMed ID
22713116
WOS ID
WOS:000307037600018
Scopus ID
84864595849
Erfassungsdatum
2012-08-20