Abstract
AbstractHigh-performance liquid chromatography (HPLC) is a common medium-throughput technique to analyze metabolic samples. However, analysis of HPLC data is hampered by a lack of tools to accurately determine the precise analyte quantities on a level of precision equivalent to mass-spectrometry approaches. To combat this problem, we developed a tool we call PeakClimber, that uses a sum of exponential Gaussian functions to accurately quantify the peaks in HPLC traces. In this paper we analytically show that HPLC peaks are well-fit by an exponential Gaussian function, that PeakClimber more accurately quantifies known peak areas than standard industry software and utilize PeakClimber to make new discoveries about lipid biology.
Publisher
Cold Spring Harbor Laboratory