Background: Uncovering subtypes of disease from microarray samples has important clinical implications such as survival time and sensitivity of individual patients to specific therapies. Unsupervised clustering methods have been used to classify this type of data. However, most existing methods focus on clusters with compact shapes and do not reflect the geometric complexity of the high dimensional microarray clusters, which limits their performance. Results: We present a cluster-number-based ensemble clustering algorithm, called MULTI-K, for microarray sample classification, which demonstrates remarkable accuracy. The method amalgamates multiple k-means runs by varying the number of clusters and identifies clusters that manifest the most r...
Clustering is an essential research problem which has received considerable attention in the researc...
The paper presents the new approach to the supervised gene selection by means of gene clustering fo...
The amount of data made available by microarrays gives researchers the opportunity to delve into the...
Abstract Background Uncovering subtypes of disease from microarray samples has important clinical im...
Cluster ensembles seek a consensus across many individual partitions and the resulting solution is u...
Cluster ensembles seek a consensus across many individual partitions and the resulting solution is u...
Since data analysis using technical computational model has profound influence on interpretation of ...
NoMicroarray data analysis and classification has demonstrated convincingly that it provides an effe...
Includes bibliographical references (pages 30-31).As the role of large scale data analysis continues...
Abstract Background A potential benefit of profiling ...
Standard clustering algorithms when applied to DNA microarray data often tend to produce erroneous c...
Abstract: Problem statement: Using microarray techniques one could monitor the expressions levels of...
The DNA data are huge multidimensional which contains the simultaneous gene expression and it uses t...
Motivation: Unsupervised clustering of microarray data may detect potentially important, but not obv...
Microarray technology can measure thousands of genes which are useful for biologist to study and cla...
Clustering is an essential research problem which has received considerable attention in the researc...
The paper presents the new approach to the supervised gene selection by means of gene clustering fo...
The amount of data made available by microarrays gives researchers the opportunity to delve into the...
Abstract Background Uncovering subtypes of disease from microarray samples has important clinical im...
Cluster ensembles seek a consensus across many individual partitions and the resulting solution is u...
Cluster ensembles seek a consensus across many individual partitions and the resulting solution is u...
Since data analysis using technical computational model has profound influence on interpretation of ...
NoMicroarray data analysis and classification has demonstrated convincingly that it provides an effe...
Includes bibliographical references (pages 30-31).As the role of large scale data analysis continues...
Abstract Background A potential benefit of profiling ...
Standard clustering algorithms when applied to DNA microarray data often tend to produce erroneous c...
Abstract: Problem statement: Using microarray techniques one could monitor the expressions levels of...
The DNA data are huge multidimensional which contains the simultaneous gene expression and it uses t...
Motivation: Unsupervised clustering of microarray data may detect potentially important, but not obv...
Microarray technology can measure thousands of genes which are useful for biologist to study and cla...
Clustering is an essential research problem which has received considerable attention in the researc...
The paper presents the new approach to the supervised gene selection by means of gene clustering fo...
The amount of data made available by microarrays gives researchers the opportunity to delve into the...