This article describes three multivariate projection methods and compares them for their ability to identify clusters of biological samples and genes using real-life data on gene expression levels of leukemia patients. It is shown that principal component analysis (PCA) has the disadvantage that the resulting principal factors are not very informative, while correspondence factor analysis (CFA) has difficulties interpreting distances between objects. Spectral map analysis (SMA) is introduced as an alternative approach to the analysis of microarray data. Weighted SMA outperforms PCA, and is at least as powerful as CFA, in finding clusters in the samples, as well as identifying genes related to these clusters. SMA addresses the problem of dat...
The purpose of many microarray studies is to find the association between gene expression and sample...
Analysis of microarray data. when presented with raw gene expression intensity data, often take two ...
Molecular analysis of cancer, at the genomic level, could lead to individualized patient diagnostics...
SUMMARY. This article describes three multivariate projection methods and compares them for their ab...
<p>Gene selection based on principal component analysis. A) variance explained by components 1–6 fro...
<p>Cluster analysis of genes and samples using a heat map (A), principal component analysis (B) and ...
The very high dimensional space of gene expression measurements obtained by DNA microarrays impedes ...
SUMMARY Motivation: Microarray technology provides a massively parallel means to study gene expressi...
Microarray studies are used in molecular biology to explore patterns of expression of thousands of g...
Thesis (Ph. D.)--University of Washington, 2001The invention of DNA microarrays allows us to study s...
The study addresses the significance of biomedical data to be analyzed by Statistical Community in c...
Motivation: Microarray experiments typically analyze thousands to tens of thousands of genes from sm...
This thesis describes the application of multivariate methods in analyses of genomic DNA sequences, ...
AbstractThe detection of genes that show similar profiles under different experimental conditions is...
<p>Principal Component Analysis (PCA) scatter plot using Partek analysis is shown in the upper left ...
The purpose of many microarray studies is to find the association between gene expression and sample...
Analysis of microarray data. when presented with raw gene expression intensity data, often take two ...
Molecular analysis of cancer, at the genomic level, could lead to individualized patient diagnostics...
SUMMARY. This article describes three multivariate projection methods and compares them for their ab...
<p>Gene selection based on principal component analysis. A) variance explained by components 1–6 fro...
<p>Cluster analysis of genes and samples using a heat map (A), principal component analysis (B) and ...
The very high dimensional space of gene expression measurements obtained by DNA microarrays impedes ...
SUMMARY Motivation: Microarray technology provides a massively parallel means to study gene expressi...
Microarray studies are used in molecular biology to explore patterns of expression of thousands of g...
Thesis (Ph. D.)--University of Washington, 2001The invention of DNA microarrays allows us to study s...
The study addresses the significance of biomedical data to be analyzed by Statistical Community in c...
Motivation: Microarray experiments typically analyze thousands to tens of thousands of genes from sm...
This thesis describes the application of multivariate methods in analyses of genomic DNA sequences, ...
AbstractThe detection of genes that show similar profiles under different experimental conditions is...
<p>Principal Component Analysis (PCA) scatter plot using Partek analysis is shown in the upper left ...
The purpose of many microarray studies is to find the association between gene expression and sample...
Analysis of microarray data. when presented with raw gene expression intensity data, often take two ...
Molecular analysis of cancer, at the genomic level, could lead to individualized patient diagnostics...