Gene expression profiles belonging to DNA microarrays are composed of thousands of genes at the same time, representing the complex relationships between them. In this context, the ability of designing methods capable of overcoming current limitations is crucial to reduce the generalization error of state-of-the-art algorithms. This paper presents the application of a self-organised growing cell structures network in an attempt to cluster biological homogeneous patients. This technique makes use of a previous successful supervised fuzzy pattern algorithm capable of performing DNA microarray data reduction. The proposed model has been tested with microarray data belonging to bone marrow samples from 43 adult patients with cancer plus a group...
Abstract-Breast cancer has become a major cause of death among women in India. Despite the fact, not...
Sample-based clustering is one of the most common methods for discovering disease subtypes as well a...
In this paper, we describe an incrementally generated fuzzy neural network (FNN) for intelligent dat...
The advent of DNA microarray technology has supplied a large volume of data to many fields like mach...
Gene expression profiles are composed of thousands of genes at the same time, representing the compl...
Background: Analysing gene expression data from microarray technologies is a very important task i...
Accurate classification of cancers based on microarray gene expressions is very important for doctor...
Bioinformatics involves analyses of biological data such as DNA sequences, microarrays and protein-p...
ABSTRACT The classification of cancers subtypes is essential for future clinical accomplishments of ...
In recent years, machine learning and data mining fields have found a successful application area in...
Analysis and interpretation of DNA Microarray data is a fundamental task in bioinformatics. Feature ...
: Microarray is a technology that enables simultaneously analysis of thousands of genes in DNA struc...
The importance of gene expression data in cancer diagnosis and treatment by now has been widely reco...
Motivation: In the interpretation of gene expression data from a group of microarray experiments tha...
AbstractIn the present article, we develop two interval based fuzzy systems for identification of so...
Abstract-Breast cancer has become a major cause of death among women in India. Despite the fact, not...
Sample-based clustering is one of the most common methods for discovering disease subtypes as well a...
In this paper, we describe an incrementally generated fuzzy neural network (FNN) for intelligent dat...
The advent of DNA microarray technology has supplied a large volume of data to many fields like mach...
Gene expression profiles are composed of thousands of genes at the same time, representing the compl...
Background: Analysing gene expression data from microarray technologies is a very important task i...
Accurate classification of cancers based on microarray gene expressions is very important for doctor...
Bioinformatics involves analyses of biological data such as DNA sequences, microarrays and protein-p...
ABSTRACT The classification of cancers subtypes is essential for future clinical accomplishments of ...
In recent years, machine learning and data mining fields have found a successful application area in...
Analysis and interpretation of DNA Microarray data is a fundamental task in bioinformatics. Feature ...
: Microarray is a technology that enables simultaneously analysis of thousands of genes in DNA struc...
The importance of gene expression data in cancer diagnosis and treatment by now has been widely reco...
Motivation: In the interpretation of gene expression data from a group of microarray experiments tha...
AbstractIn the present article, we develop two interval based fuzzy systems for identification of so...
Abstract-Breast cancer has become a major cause of death among women in India. Despite the fact, not...
Sample-based clustering is one of the most common methods for discovering disease subtypes as well a...
In this paper, we describe an incrementally generated fuzzy neural network (FNN) for intelligent dat...