posted on 2016-01-04, 00:00authored byBing Peng, Robert Ahrends
In
response to the urgent need for analysis software that is capable
of handling data from targeted high-throughput lipidomics experiments,
we here present a systematic workflow for the straightforward method
design and analysis of selected reaction monitoring data in lipidomics
based on lipid building blocks. Skyline is a powerful software primarily
designed for proteomics applications where it is widely used. We adapted
this tool to a “Plug and Play” system for lipid research.
This extension offers the unique capability to assemble targeted mass
spectrometry methods for complex lipids easily by making use of building
blocks. With simple yet tailored modifications, targeted methods to
analyze main lipid classes such as glycerophospholipids, sphingolipids,
glycerolipids, cholesteryl-esters, and cholesterol can be quickly
introduced into Skyline for easy application by end users without
distinct bioinformatics skills. To illustrate the benefits of our
novel strategy, we used Skyline to quantify sphingolipids in mesenchymal
stem cells. We demonstrate a simple method building procedure for
sphingolipids screening, collision energy optimization, and absolute
quantification of sphingolipids. In total, 72 sphingolipids were identified
and absolutely quantified at the fatty acid scan species level by
utilizing Skyline for data interpretation and visualization.