Abstract Background Cluster analysis is a crucial tool in several biological and medical studies dealing with microarray data. Such studies pose challenging statistical problems due to dimensionality issues, since the number of variables can be much higher than the number of observations. Results Here, we present a general framework to deal with the clustering of microarray data, based on a three-step procedure: (i) gene filtering; (ii) dimensionality reduction; (iii) clustering of observations in the reduced space. Via a nonparametric model-based clustering approach we obtain promising results both in simulated and real data. Conclusions The proposed algorithm is a simple and effective tool for the clustering of microarray data, in an unsu...
An unsupervised data clustering method, called the local maximum clustering (LMC) method, is propos...
Microarray experiments involve the measurement of the expression level of many thousands of genes in...
With the incredible growth of high dimensional data such as microarray gene expression data, the res...
Cluster analysis is a crucial tool in several biological and medical studies dealing with microarray...
Cluster analysis is a crucial tool in several biological and medical studies dealing with microarray...
none2noThe analysis of microarray data is a widespread functional genomics approach that allows for ...
The analysis of microarray data is a widespread functional genomics approach that allows for the mon...
The analysis of microarray data is a widespread functional genomics approach that allows for the mon...
In just a few years, gene expression microarrays have rapidly become a standard experimental tool in...
Standard clustering algorithms when applied to DNA microarray data often tend to produce erroneous c...
This dissertation focuses on methodology specific to microarray data analyses that organize the data...
In this dissertation project, clustering algorithms have been implemented and applied to DNA microar...
Abstract: This chapter describes the basic concepts and application of a family of methods for class...
Microarray data clustering represents a basic exploratory tool to find groups of genes exhibiting si...
A clustering method based on recursive bisection is introduced for analyzing microarray gene express...
An unsupervised data clustering method, called the local maximum clustering (LMC) method, is propos...
Microarray experiments involve the measurement of the expression level of many thousands of genes in...
With the incredible growth of high dimensional data such as microarray gene expression data, the res...
Cluster analysis is a crucial tool in several biological and medical studies dealing with microarray...
Cluster analysis is a crucial tool in several biological and medical studies dealing with microarray...
none2noThe analysis of microarray data is a widespread functional genomics approach that allows for ...
The analysis of microarray data is a widespread functional genomics approach that allows for the mon...
The analysis of microarray data is a widespread functional genomics approach that allows for the mon...
In just a few years, gene expression microarrays have rapidly become a standard experimental tool in...
Standard clustering algorithms when applied to DNA microarray data often tend to produce erroneous c...
This dissertation focuses on methodology specific to microarray data analyses that organize the data...
In this dissertation project, clustering algorithms have been implemented and applied to DNA microar...
Abstract: This chapter describes the basic concepts and application of a family of methods for class...
Microarray data clustering represents a basic exploratory tool to find groups of genes exhibiting si...
A clustering method based on recursive bisection is introduced for analyzing microarray gene express...
An unsupervised data clustering method, called the local maximum clustering (LMC) method, is propos...
Microarray experiments involve the measurement of the expression level of many thousands of genes in...
With the incredible growth of high dimensional data such as microarray gene expression data, the res...