Microarrays have become the effective, broadly used tools in biological and medical research to address a wide range of problems, including classification of disease subtypes and tumors. Many statistical methods are available for analyzing and systematizing these complex data into meaningful information, and one of the main goals in analyzing gene expression data is the detection of samples or genes with similar expression patterns. In this paper, we express and compare the performance of several clustering methods based on data preprocessing including strategies of normalization or noise clearness. We also evaluate each of these clustering methods with validation measures for both simulated data and real gene expression data. Consequently,...
Normalization before clustering is often needed for proximity indices, such as Euclidian distance, w...
AbstractClustering algorithms have been shown to be useful to explore large-scale gene expression pr...
Efficient use of the large data sets generated by gene expression microarray experiments requires co...
Abstract Background Cluster analysis is an integral part of high dimensional data analysis. In the c...
Discovery of disease sub-types is one of the fundamental problem in clinical applications. This is ...
Background: Cluster analysis, and in particular hierarchical clustering, is widely used to extract i...
Abstract. Motivation: Many clustering algorithms have been proposed for the analysis of gene expr...
Thesis (Ph. D.)--University of Washington, 2001The invention of DNA microarrays allows us to study s...
Abstracts--Data Mining has become an important topic in effective analysis of gene expression data d...
Many clustering techniques have been proposed for the analysis of gene expression data obtained from...
The progress in microarray technology is evident and huge amounts of gene expression data are curren...
The advent of DNA microarray technology has enabled biologists to monitor the expression levels (MRN...
Abstract Background A cluster analysis is the most commonly performed procedure (often regarded as a...
In the rapidly evolving field of genomics, many clustering and classification methods have been deve...
Simultaneous measurement of the expression levels of thousands to ten thousand genes in multiple tis...
Normalization before clustering is often needed for proximity indices, such as Euclidian distance, w...
AbstractClustering algorithms have been shown to be useful to explore large-scale gene expression pr...
Efficient use of the large data sets generated by gene expression microarray experiments requires co...
Abstract Background Cluster analysis is an integral part of high dimensional data analysis. In the c...
Discovery of disease sub-types is one of the fundamental problem in clinical applications. This is ...
Background: Cluster analysis, and in particular hierarchical clustering, is widely used to extract i...
Abstract. Motivation: Many clustering algorithms have been proposed for the analysis of gene expr...
Thesis (Ph. D.)--University of Washington, 2001The invention of DNA microarrays allows us to study s...
Abstracts--Data Mining has become an important topic in effective analysis of gene expression data d...
Many clustering techniques have been proposed for the analysis of gene expression data obtained from...
The progress in microarray technology is evident and huge amounts of gene expression data are curren...
The advent of DNA microarray technology has enabled biologists to monitor the expression levels (MRN...
Abstract Background A cluster analysis is the most commonly performed procedure (often regarded as a...
In the rapidly evolving field of genomics, many clustering and classification methods have been deve...
Simultaneous measurement of the expression levels of thousands to ten thousand genes in multiple tis...
Normalization before clustering is often needed for proximity indices, such as Euclidian distance, w...
AbstractClustering algorithms have been shown to be useful to explore large-scale gene expression pr...
Efficient use of the large data sets generated by gene expression microarray experiments requires co...