For the untargeted analysis of the metabolome of biological samples with liquid chromatography–mass spectrometry (LC-MS), high-dimensional data sets containing many different metabolites are obtained. Since the utilization of these complex data is challenging, different machine learning approaches have been developed. Those methods are usually applied as black box classification tools, and detailed information about class differences that result from the complex interplay of the metabolites are not obtained. Here, we demonstrate that this information is accessible by the application of random forest (RF) approaches and especially by surrogate minimal depth (SMD) that is applied to metabolomics data for the first time. We show this by the se...
Before reaching the end goal of interpreting any underlying biological processes, metabolomics data ...
Before reaching the end goal of interpreting any underlying biological processes, metabolomics data ...
NMR measurements combined with chemometrics allow achieving a great amount of information for the id...
Powerful algorithms are required to deal with the dimensionality of metabolomics data. Although many...
Powerful algorithms are required to deal with the dimensionality of metabolomics data. Although many...
We discuss application of a machine learning method, Random Forest (RF), for the extraction of relev...
We discuss application of a machine learning method, Random Forest (RF), for the extraction of relev...
Metabolomics research has recently gained popularity because it enables the study of biological trai...
Metabolomics research has recently gained popularity because it enables the study of biological trai...
Metabolomics research has recently gained popularity because it enables the study of biological trai...
The identification of metabolites by mass spectrometry constitutes a major bottleneck which consider...
The identification of metabolites by mass spectrometry constitutes a major bottleneck which consider...
We introduce a cheminformatics approach that combines highly selective and orthogonal structure eluc...
Metabolomics research has recently gained popularity because it enables the study of biological trai...
Abstract Background The goal of metabolomics analyses is a comprehensive and systematic understandin...
Before reaching the end goal of interpreting any underlying biological processes, metabolomics data ...
Before reaching the end goal of interpreting any underlying biological processes, metabolomics data ...
NMR measurements combined with chemometrics allow achieving a great amount of information for the id...
Powerful algorithms are required to deal with the dimensionality of metabolomics data. Although many...
Powerful algorithms are required to deal with the dimensionality of metabolomics data. Although many...
We discuss application of a machine learning method, Random Forest (RF), for the extraction of relev...
We discuss application of a machine learning method, Random Forest (RF), for the extraction of relev...
Metabolomics research has recently gained popularity because it enables the study of biological trai...
Metabolomics research has recently gained popularity because it enables the study of biological trai...
Metabolomics research has recently gained popularity because it enables the study of biological trai...
The identification of metabolites by mass spectrometry constitutes a major bottleneck which consider...
The identification of metabolites by mass spectrometry constitutes a major bottleneck which consider...
We introduce a cheminformatics approach that combines highly selective and orthogonal structure eluc...
Metabolomics research has recently gained popularity because it enables the study of biological trai...
Abstract Background The goal of metabolomics analyses is a comprehensive and systematic understandin...
Before reaching the end goal of interpreting any underlying biological processes, metabolomics data ...
Before reaching the end goal of interpreting any underlying biological processes, metabolomics data ...
NMR measurements combined with chemometrics allow achieving a great amount of information for the id...