Background: Metabolomics LC-MS experiments yield large numbers of peaks, few of which can be identified by database matching. Many of the remaining peaks correspond to derivatives of identified peaks (e.g., isotope peaks, adducts, fragments and multiply charged molecules). In this article, we present a data-reduction approach that automatically identifies these derivative peaks. Results: Using data-driven clustering based on chromatographic peak shape correlation and intensity patterns across biological replicates, derivative peaks can be reliably identified. Using a test data set obtained from Leishmania donovani extracts, we achieved a 60% reduction of the number of peaks. After quality control filtering, almost 80% of the peaks could ...
Available automated methods for peak detection in untargeted metabolomics suffer from poor precision...
In untargeted metabolomics experiments library search engines detect metabolites using several featu...
Available automated methods for peak detection in untargeted metabolomics suffer from poor precision...
Background: Metabolomics LC-MS experiments yield large numbers of peaks, few of which can be identif...
Background: Metabolomics LC-MS experiments yield large numbers of peaks, few of which can be identif...
Background: Metabolomics LC-MS experiments yield large numbers of peaks, few of which can be identif...
Background: Metabolomics LC-MS experiments yield large numbers of peaks, few of which can be identif...
Background: Metabolomics LC-MS experiments yield large numbers of peaks, few of which can be identif...
Metabolomics LC-MS experiments yield large numbers of peaks, few of which can be identified by datab...
Metabolomics LC-MS experiments yield large numbers of peaks, few of which can be identified by datab...
Motivation: Peak detection is a key step in the pre-processing of untargeted metabolomics data gener...
LC-MS-based untargeted metabolomics is heavily dependent on algorithms for automated peak detection ...
LC-MS-based untargeted metabolomics is heavily dependent on algorithms for automated peak detection ...
LC–MS-based untargeted metabolomics is heavily dependent on algorithms for automated peak detection ...
MOTIVATION: The study of metabolites (metabolomics) is increasingly being applied to investigate mic...
Available automated methods for peak detection in untargeted metabolomics suffer from poor precision...
In untargeted metabolomics experiments library search engines detect metabolites using several featu...
Available automated methods for peak detection in untargeted metabolomics suffer from poor precision...
Background: Metabolomics LC-MS experiments yield large numbers of peaks, few of which can be identif...
Background: Metabolomics LC-MS experiments yield large numbers of peaks, few of which can be identif...
Background: Metabolomics LC-MS experiments yield large numbers of peaks, few of which can be identif...
Background: Metabolomics LC-MS experiments yield large numbers of peaks, few of which can be identif...
Background: Metabolomics LC-MS experiments yield large numbers of peaks, few of which can be identif...
Metabolomics LC-MS experiments yield large numbers of peaks, few of which can be identified by datab...
Metabolomics LC-MS experiments yield large numbers of peaks, few of which can be identified by datab...
Motivation: Peak detection is a key step in the pre-processing of untargeted metabolomics data gener...
LC-MS-based untargeted metabolomics is heavily dependent on algorithms for automated peak detection ...
LC-MS-based untargeted metabolomics is heavily dependent on algorithms for automated peak detection ...
LC–MS-based untargeted metabolomics is heavily dependent on algorithms for automated peak detection ...
MOTIVATION: The study of metabolites (metabolomics) is increasingly being applied to investigate mic...
Available automated methods for peak detection in untargeted metabolomics suffer from poor precision...
In untargeted metabolomics experiments library search engines detect metabolites using several featu...
Available automated methods for peak detection in untargeted metabolomics suffer from poor precision...