Background: Data accuracy plays a key role in determining the model performances and the field of metabolism prediction suffers from the lack of truly reliable data. To enhance the accuracy of metabolic data, we recently proposed a manually curated database collected by a meta-analysis of the specialized literature (MetaQSAR). Here we aim to further increase data accuracy by focusing on publications reporting exhaustive metabolic trees. This selection should indeed reduce the number of false negative data. Methods: a new metabolic database (MetaTREE) was thus collected and utilized to extract a dataset for metabolic data concerning glutathione conjugation (MT-dataset). After proper pre-processing, this dataset, along with the correspondi...
Metabolomics is a rapidly evolving discipline that involves the systematic study of endogenous small...
Introduction: Metabolomics is increasingly being used in the clinical setting for disease diagnosis,...
Genomics profiling based on high dimensional data from high throughput experiments that measure the ...
(1) Background: Machine learning algorithms are finding fruitful applications in predicting the ADME...
Even though glucuronidations are the most frequent metabolic reactions of conjugation, both in quant...
Even though glucuronidations are the most frequent metabolic reactions of conjugation, both in quant...
Even though glucuronidations are the most frequent metabolic reactions of conjugation, both in quant...
Metabolomics, the systematic identification and quantification of all metabolites in a biological sy...
Metabolomics research has recently gained popularity because it enables the study of biological trai...
The study describes the MetaQSAR tool, a new database engine specifically tailored to collect and an...
Powerful algorithms are required to deal with the dimensionality of metabolomics data. Although many...
Metabolomics research has recently gained popularity because it enables the study of biological trai...
In this study the performance of a selection of computational models for the prediction of metabolit...
MetaPrint2D, a new software tool implementing a data-mining approach for predicting sites of xenobio...
As a comprehensive analysis of all metabolites in a biological system, metabolomics is being widely ...
Metabolomics is a rapidly evolving discipline that involves the systematic study of endogenous small...
Introduction: Metabolomics is increasingly being used in the clinical setting for disease diagnosis,...
Genomics profiling based on high dimensional data from high throughput experiments that measure the ...
(1) Background: Machine learning algorithms are finding fruitful applications in predicting the ADME...
Even though glucuronidations are the most frequent metabolic reactions of conjugation, both in quant...
Even though glucuronidations are the most frequent metabolic reactions of conjugation, both in quant...
Even though glucuronidations are the most frequent metabolic reactions of conjugation, both in quant...
Metabolomics, the systematic identification and quantification of all metabolites in a biological sy...
Metabolomics research has recently gained popularity because it enables the study of biological trai...
The study describes the MetaQSAR tool, a new database engine specifically tailored to collect and an...
Powerful algorithms are required to deal with the dimensionality of metabolomics data. Although many...
Metabolomics research has recently gained popularity because it enables the study of biological trai...
In this study the performance of a selection of computational models for the prediction of metabolit...
MetaPrint2D, a new software tool implementing a data-mining approach for predicting sites of xenobio...
As a comprehensive analysis of all metabolites in a biological system, metabolomics is being widely ...
Metabolomics is a rapidly evolving discipline that involves the systematic study of endogenous small...
Introduction: Metabolomics is increasingly being used in the clinical setting for disease diagnosis,...
Genomics profiling based on high dimensional data from high throughput experiments that measure the ...