A strategy is presented to build a discrimination model in proteomics studies. The model is built using cross-validation. This cross-validation step can simply be combined with a variable selection method, called rank products. The strategy is especially suitable for the low-samples-to-variables-ratio (undersampling) case, as is often encountered in proteomics and metabolomics studies. As a classification method, Principal Component Discriminant Analysis is used; however, the methodology can be used with any classifier. A data set containing serum samples from breast cancer patients and healthy controls is analysed. Double cross-validation shows that the sensitivity of the model is 82% and the specificity 86%. Potential putative biomarkers ...
International audienceThe paper proposes a variable selection method for pro-teomics. It aims at sel...
The performance results of a wide range of different classifiers applied to proteomic mass spectra d...
In recent years, mass spectrometry techniques have helped proteomics to become a powerful tool for t...
A strategy is presented to build a discrimination model in proteomics studies. The model is built us...
Abstract A strategy is presented to build a discrimination model in proteomics studies. The model is...
A strategy is presented for the statistical validation of discrimination models in proteomics studie...
This review discusses data analysis strategies for the discovery of biomarkers in clinical proteomic...
The discovery of protein variation is an important strategy in disease diagnosis within the biologic...
We use several different multivariate analysis methods to discriminate between diseased and healthy ...
To discriminate between breast cancer patients and controls, we used a three-step approach to obtain...
To discriminate between breast cancer patients and controls, we used a three-step approach to obtain...
To discriminate between breast cancer patients and controls, we used a three-step approach to obtain...
International audienceThe paper proposes a variable selection method for pro-teomics. It aims at sel...
The performance results of a wide range of different classifiers applied to proteomic mass spectra d...
In recent years, mass spectrometry techniques have helped proteomics to become a powerful tool for t...
A strategy is presented to build a discrimination model in proteomics studies. The model is built us...
Abstract A strategy is presented to build a discrimination model in proteomics studies. The model is...
A strategy is presented for the statistical validation of discrimination models in proteomics studie...
This review discusses data analysis strategies for the discovery of biomarkers in clinical proteomic...
The discovery of protein variation is an important strategy in disease diagnosis within the biologic...
We use several different multivariate analysis methods to discriminate between diseased and healthy ...
To discriminate between breast cancer patients and controls, we used a three-step approach to obtain...
To discriminate between breast cancer patients and controls, we used a three-step approach to obtain...
To discriminate between breast cancer patients and controls, we used a three-step approach to obtain...
International audienceThe paper proposes a variable selection method for pro-teomics. It aims at sel...
The performance results of a wide range of different classifiers applied to proteomic mass spectra d...
In recent years, mass spectrometry techniques have helped proteomics to become a powerful tool for t...