Data normalization plays a crucial role in metabolomics to take into account the inevitable variation in sample concentration and the efficiency of sample preparation procedure. The conventional methods such as constant sum normalization (CSN) and probabilistic quotient normalization (PQN) are widely used, but both methods have their own shortcomings. In the current study, a new data normalization method called group aggregating normalization (GAN) is proposed, by which the samples were normalized so that they aggregate close to their group centers in a principal component analysis (PCA) subspace. This is in contrast with CSN and PQN which rely on a constant reference for all samples. The evaluation of GAN method using both simulated and ex...
Metabolomics research often requires the use of multiple analytical platforms, batches of samples, a...
Metabolomics involves the large scale analysis of metabolites and thus, provides information regardi...
<p><b>Copyright information:</b></p><p>Taken from "Improved classification accuracy in 1- and 2-dime...
Extracting biomedical information from large metabolomic datasets by multivariate data analysis is o...
Before reaching the end goal of interpreting any underlying biological processes, metabolomics data ...
We demonstrate how different normalization techniques in GC‐MS analysis impart unique properties to ...
Metabolomics research often requires the use of multiple analytical platforms, batches of samples, a...
Because of inevitable and complicated signal variations in LC-MSn-based nontargeted metabolomics, no...
Data normalization is an essential step in NMR-based metabolomics. Conducted properly, it improves d...
Data normalization is an essential step in NMR-based metabolomics. Conducted properly, it improves d...
Mass spectrometry (MS)-based proteomics has seen significant technical advances during the past two ...
In many metabolomics studies, NMR spectra are divided into bins of fixed width. This spectral quanti...
INTRODUCTION: In metabolomics studies, unwanted variation inevitably arises from various sources. No...
The specific object of the present investigation was to find a new algorithm, developed on a dataset...
Metabolomics, the systematic identification and quantification of all metabolites in a biological sy...
Metabolomics research often requires the use of multiple analytical platforms, batches of samples, a...
Metabolomics involves the large scale analysis of metabolites and thus, provides information regardi...
<p><b>Copyright information:</b></p><p>Taken from "Improved classification accuracy in 1- and 2-dime...
Extracting biomedical information from large metabolomic datasets by multivariate data analysis is o...
Before reaching the end goal of interpreting any underlying biological processes, metabolomics data ...
We demonstrate how different normalization techniques in GC‐MS analysis impart unique properties to ...
Metabolomics research often requires the use of multiple analytical platforms, batches of samples, a...
Because of inevitable and complicated signal variations in LC-MSn-based nontargeted metabolomics, no...
Data normalization is an essential step in NMR-based metabolomics. Conducted properly, it improves d...
Data normalization is an essential step in NMR-based metabolomics. Conducted properly, it improves d...
Mass spectrometry (MS)-based proteomics has seen significant technical advances during the past two ...
In many metabolomics studies, NMR spectra are divided into bins of fixed width. This spectral quanti...
INTRODUCTION: In metabolomics studies, unwanted variation inevitably arises from various sources. No...
The specific object of the present investigation was to find a new algorithm, developed on a dataset...
Metabolomics, the systematic identification and quantification of all metabolites in a biological sy...
Metabolomics research often requires the use of multiple analytical platforms, batches of samples, a...
Metabolomics involves the large scale analysis of metabolites and thus, provides information regardi...
<p><b>Copyright information:</b></p><p>Taken from "Improved classification accuracy in 1- and 2-dime...