Background: Clustering analysis of microarray data is often criticized for giving ambiguous results because of sensitivity to data perturbation or clustering techniques used. In this paper, we describe a new method based on principal component analysis and ensemble consensus clustering that avoids these problems. Results: We illustrate the method on a public microarray dataset from 36 breast cancer patients of whom 31 were diagnosed with at least two of three pathological stages of disease (atypical ductal hyperplasia (ADH), ductal carcinoma in situ (DCIS) and invasive ductal carcinoma (IDC). Our method identifies an optimum set of genes and divides the samples into stable clusters which correlate with clinical classification into Luminal, ...
Background: Gene expression microarray studies for several types of cancer have been reported to ide...
The purpose of this study was to classify breast carcinomas based on variations in gene expression p...
The purpose of this study was to classify breast carcinomas based on variations in gene expression p...
Background: Clustering analysis of microarray data is often criticized for giving ambiguous results ...
BackgroundClustering analysis of microarray data is often criticized for giving ambiguous results be...
BackgroundClustering analysis of microarray data is often criticized for giving ambiguous results be...
BackgroundClustering analysis of microarray data is often criticized for giving ambiguous results be...
Abstract Background Clustering analysis of microarray data is often criticized for giving ambiguous ...
* Joint first authors We describe a new method based on principal component analysis and robust cons...
Background: Breast cancer is a heterogeneous disease at the clinical and molecular level. In this st...
Background: Breast cancer is a heterogeneous disease at the clinical and molecular level. In this st...
Abstract Background Breast cancer is a heterogeneous ...
Background Breast cancer is a heterogeneous disease at the clinical and molecular level. In this stu...
Abstract Background Breast cancer is a heterogeneous disease at the clinical and molecular level. In...
SINCE the advent of array-based technology and the sequencing of the human genome, scientistsattempt...
Background: Gene expression microarray studies for several types of cancer have been reported to ide...
The purpose of this study was to classify breast carcinomas based on variations in gene expression p...
The purpose of this study was to classify breast carcinomas based on variations in gene expression p...
Background: Clustering analysis of microarray data is often criticized for giving ambiguous results ...
BackgroundClustering analysis of microarray data is often criticized for giving ambiguous results be...
BackgroundClustering analysis of microarray data is often criticized for giving ambiguous results be...
BackgroundClustering analysis of microarray data is often criticized for giving ambiguous results be...
Abstract Background Clustering analysis of microarray data is often criticized for giving ambiguous ...
* Joint first authors We describe a new method based on principal component analysis and robust cons...
Background: Breast cancer is a heterogeneous disease at the clinical and molecular level. In this st...
Background: Breast cancer is a heterogeneous disease at the clinical and molecular level. In this st...
Abstract Background Breast cancer is a heterogeneous ...
Background Breast cancer is a heterogeneous disease at the clinical and molecular level. In this stu...
Abstract Background Breast cancer is a heterogeneous disease at the clinical and molecular level. In...
SINCE the advent of array-based technology and the sequencing of the human genome, scientistsattempt...
Background: Gene expression microarray studies for several types of cancer have been reported to ide...
The purpose of this study was to classify breast carcinomas based on variations in gene expression p...
The purpose of this study was to classify breast carcinomas based on variations in gene expression p...