4.8 Article

Retention Time Prediction Improves Identification in Nontargeted Lipidomics Approaches

期刊

ANALYTICAL CHEMISTRY
卷 87, 期 15, 页码 7698-7704

出版社

AMER CHEMICAL SOC
DOI: 10.1021/acs.analchem.5b01139

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资金

  1. Sino-German Center for Research Promotion by DFG [GZ 753, LE 1391/1-1]
  2. Sino-German Center for Research Promotion by NSFC
  3. German Federal Ministry of Education and Research (BMBF) [01GI0925]
  4. BMBF [BIOMARKERS - FKZ 01GI1104A]
  5. European Commission FP7MARINA [236215]
  6. DFG [KO 2313/6-1]
  7. foundation and creative research group project by NSFC [21175132, 21321064]

向作者/读者索取更多资源

Identification of lipids in nontargeted lipidomics based on liquid-chromatography coupled to mass spectrometry (LC-MS) is still a major issue. While both accurate mass and fragment spectra contain valuable information, retention time (t(R)) information can be used to augment this data. We present a retention time model based on machine learning approaches which enables an improved assignment of lipid structures and automated annotation of lipidomics data. In contrast to common approaches we used a complex mixture of 201 lipids originating from fat tissue instead of a standard mixture to train a support vector regression (SVR) model including molecular structural features. The cross-validated model achieves a correlation coefficient between predicted and experimental test sample retention times of r = 0.989. Combining our retention time model with identification via accurate mass search (AMS) of lipids against the comprehensive LIPID MAPS database, retention time filtering can significantly reduce the rate of false positives in complex data sets like adipose tissue extracts. In our case, filtering with retention time information removed more than half of the potential identifications, while retaining 95% of the correct identifications. Combination of high-precision retention time prediction and accurate mass can thus significantly narrow down the number of hypotheses to be assessed for lipid identification in complex lipid pattern like tissue profiles.

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