TY - JOUR
T1 - Network-based approach for analyzing intra- and interfluid metabolite associations in human blood, urine, and saliva
AU - Do, Kieu Trinh
AU - Kastenmüller, Gabi
AU - Mook-Kanamori, Dennis O.
AU - Yousri, Noha A.
AU - Theis, Fabian J.
AU - Suhre, Karsten
AU - Krumsiek, Jan
N1 - Publisher Copyright:
© 2015 American Chemical Society.
PY - 2015/2/6
Y1 - 2015/2/6
N2 - Most studies investigating human metabolomics measurements are limited to a single biofluid, most often blood or urine. An organism's biochemical pool, however, comprises complex transboundary relationships, which can only be understood by investigating metabolic interactions and physiological processes spanning multiple parts of the human body. Therefore, we here propose a data-driven network-based approach to generate an integrated picture of metabolomics associations over multiple fluids. We performed an analysis of 2251 metabolites measured in plasma, urine, and saliva, from 374 participants of the Qatar Metabolomics Study on Diabetes (QMDiab). Gaussian graphical models (GGMs) were used to estimate metabolite-metabolite interactions on different subsets of the data set. First, we compared similarities and differences of the metabolome and the association networks between the three fluids. Second, we investigated the cross-talk between the fluids by analyzing correlations occurring between them. Third, we propose a framework for the analysis of medically relevant phenotypes by integrating type 2 diabetes, sex, age, and body mass index into our networks. In conclusion, we present a generic, data-driven network-based approach for structuring and visualizing metabolite correlations within and between multiple body fluids, enabling unbiased interpretation of metabolomics multifluid data.
AB - Most studies investigating human metabolomics measurements are limited to a single biofluid, most often blood or urine. An organism's biochemical pool, however, comprises complex transboundary relationships, which can only be understood by investigating metabolic interactions and physiological processes spanning multiple parts of the human body. Therefore, we here propose a data-driven network-based approach to generate an integrated picture of metabolomics associations over multiple fluids. We performed an analysis of 2251 metabolites measured in plasma, urine, and saliva, from 374 participants of the Qatar Metabolomics Study on Diabetes (QMDiab). Gaussian graphical models (GGMs) were used to estimate metabolite-metabolite interactions on different subsets of the data set. First, we compared similarities and differences of the metabolome and the association networks between the three fluids. Second, we investigated the cross-talk between the fluids by analyzing correlations occurring between them. Third, we propose a framework for the analysis of medically relevant phenotypes by integrating type 2 diabetes, sex, age, and body mass index into our networks. In conclusion, we present a generic, data-driven network-based approach for structuring and visualizing metabolite correlations within and between multiple body fluids, enabling unbiased interpretation of metabolomics multifluid data.
KW - Gaussian graphical models
KW - metabolomics
KW - multifluid
KW - multiple body fluids
KW - network inference
KW - partial correlation
KW - type 2 diabetes
UR - https://www.scopus.com/pages/publications/84922675982
U2 - 10.1021/pr501130a
DO - 10.1021/pr501130a
M3 - Article
C2 - 25434815
AN - SCOPUS:84922675982
SN - 1535-3893
VL - 14
SP - 1183
EP - 1194
JO - Journal of Proteome Research
JF - Journal of Proteome Research
IS - 2
ER -