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 ...
DeepLC, a deep learning-based peptide retention time predictor, can predict retention times for unmo...
International audiencePrediction of retention times (RTs) is increasingly considered in untargeted m...
Metabolite identification is still the major bottleneck in non-targeted metabolomics. Different leve...
Identification of lipids in nontargeted lipidomics based on liquid-chromatography coupled to mass sp...
Annotation of lipids in untargeted lipidomic analysis remains challenging and a systematic approach ...
Liquid chromatography is a core component of almost all mass spectrometric analyses of (bio)molecule...
Unknown metabolites represent a bottleneck in untargeted metabolomics research. Ion mobility–mass sp...
The application of predicted LC retention time to support metabolite identification was evaluated fo...
In gas chromatography–mass spectrometry-based untargeted metabolomics, metabolites are identified by...
Liquid chromatography is a core component of almost all mass spectrometric analyses of (bio)molecul...
The untargeted profiling of steroids constitutes a growing research field because of their importanc...
Accurate prediction of liquid chromatographic retention times from small-molecule structures is usef...
The development of metabolomics based on ultra-high pressure liquid chromatography coupled to high-r...
Motivation Identification of small molecules in a biological sample remains a major bottleneck in mo...
International audienceSynopsisInterest in the follow-up of fatty acid composition(saturated, polyuns...
DeepLC, a deep learning-based peptide retention time predictor, can predict retention times for unmo...
International audiencePrediction of retention times (RTs) is increasingly considered in untargeted m...
Metabolite identification is still the major bottleneck in non-targeted metabolomics. Different leve...
Identification of lipids in nontargeted lipidomics based on liquid-chromatography coupled to mass sp...
Annotation of lipids in untargeted lipidomic analysis remains challenging and a systematic approach ...
Liquid chromatography is a core component of almost all mass spectrometric analyses of (bio)molecule...
Unknown metabolites represent a bottleneck in untargeted metabolomics research. Ion mobility–mass sp...
The application of predicted LC retention time to support metabolite identification was evaluated fo...
In gas chromatography–mass spectrometry-based untargeted metabolomics, metabolites are identified by...
Liquid chromatography is a core component of almost all mass spectrometric analyses of (bio)molecul...
The untargeted profiling of steroids constitutes a growing research field because of their importanc...
Accurate prediction of liquid chromatographic retention times from small-molecule structures is usef...
The development of metabolomics based on ultra-high pressure liquid chromatography coupled to high-r...
Motivation Identification of small molecules in a biological sample remains a major bottleneck in mo...
International audienceSynopsisInterest in the follow-up of fatty acid composition(saturated, polyuns...
DeepLC, a deep learning-based peptide retention time predictor, can predict retention times for unmo...
International audiencePrediction of retention times (RTs) is increasingly considered in untargeted m...
Metabolite identification is still the major bottleneck in non-targeted metabolomics. Different leve...