Liquid Chromatography–Mass
Spectrometry Calibration
Transfer and Metabolomics Data Fusion
- Publication date
- Publisher
Abstract
Metabolic profiling is routinely performed on multiple
analytical
platforms to increase the coverage of detected metabolites, and it
is often necessary to distribute biological and clinical samples from
a study between instruments of the same type to share the workload
between different laboratories. The ability to combine metabolomics
data arising from different sources is therefore of great interest,
particularly for large-scale or long-term studies, where samples must
be analyzed in separate blocks. This is not a trivial task, however,
due to differing data structures, temporal variability, and instrumental
drift. In this study, we employed blood serum and plasma samples collected
from 29 subjects diagnosed with small cell lung cancer and analyzed
each sample on two liquid chromatography–mass spectrometry
(LC-MS) platforms. We describe a method for mapping retention times
and matching metabolite features between platforms and approaches
for fusing data acquired from both instruments. Calibration transfer
models were developed and shown to be successful at mapping the response
of one LC-MS instrument to another (Procrustes dissimilarity = 0.04;
Mantel correlation = 0.95), allowing us to merge the data from different
samples analyzed on different instruments. Data fusion was assessed
in a clinical context by comparing the correlation of each metabolite
with subject survival time in both the original and fused data sets:
a simple autoscaling procedure (Pearson’s <i>R</i> = 0.99) was found to improve upon a calibration transfer method
based on partial least-squares regression (<i>R</i> = 0.94)