ac404191a_si_002.xlsx (960.23 kB)
Integrating Metabolomics Profiling Measurements Across Multiple Biobanks
dataset
posted on 2014-05-06, 00:00 authored by A. D. Dane, M. M. W. B. Hendriks, T. H. Reijmers, A. C. Harms, J. Troost, R. J. Vreeken, D. I. Boomsma, C. M. van Duijn, E. P. Slagboom, T. HankemeierTo
optimize the quality of large scale mass-spectrometry based
metabolomics data obtained from semiquantitative profiling measurements,
it is important to use a strategy in which dedicated measurement designs
are combined with a strict statistical quality control regime. This
assures consistently high-quality results across measurements from
individual studies, but semiquantitative data have been so far only
comparable for samples measured within the same study.
To enable comparability and integration of semiquantitative profiling
data from different large scale studies over the time course of years,
the measurement and quality control strategy has to be extended. We
introduce a strategy to allow the integration of semiquantitative
profiling data from different studies. We demonstrate that lipidomics
data generated in samples from three different large biobanks acquired
in the time course of 3 years can be effectively combined when using
an appropriate measurement design and transfer model. This strategy
paves the way toward an integrative usage of semiquantitative metabolomics
data sets of multiple studies to validate biological findings in another
study and/or to increase the statistical power for discovery of biomarkers
or pathways by combining studies.