Clustering algorithms aim, by definition, at partitioning a given set of objects into a set of clusters such that those objects which belong to the same cluster are similar to each other while being dissimilar to the objects belonging to the other clusters. By application to three case studies of real gene expression data, we demonstrate that the most commonly used algorithms (e.g. k-means and Markov clustering) do not always meet the objective of clustering as per the definition of clustering. This problem becomes more significant when data with more dimensions are analysed, or when multiple datasets are analysed simultaneously. We solve this problem by proposing an automated consensus clustering algorithm, Clust, which can be applied to o...
We assess the robustness of partitional clustering algorithms applied to gene expression data. A num...
Abstract: We assess the robustness of partitional clustering algorithms applied to gene expression d...
Integrative clustering is used to identify groups of samples by jointly analysing multiple datasets ...
Clustering algorithms aim, by definition, at partitioning a given set of objects into a set of clust...
In data analysis, clustering is the process of finding groups in unlabelled data according to simila...
Current methods for analysis of gene expression data are mostly based on clustering and classificati...
Data mining technique used in the field of clustering is a subject of active research and assists in...
Includes bibliographical references (pages 30-31).As the role of large scale data analysis continues...
Many existing clustering algorithms have been used to identify coexpressed genes in gene expression ...
DNA microarray technology has made it possible to simultaneously monitor the expression levels of th...
Identifying co-expressed gene clusters can provide evidence for genetic or physical interactions. Th...
AbstractClustering algorithms have been shown to be useful to explore large-scale gene expression pr...
Clustering is a challenging research task which could benefit a wide range of practical applications...
Modern technologies have resulted in the production of numerous high-throughput biological datasets....
Data clustering techniques have been applied to extract information from gene expression data for tw...
We assess the robustness of partitional clustering algorithms applied to gene expression data. A num...
Abstract: We assess the robustness of partitional clustering algorithms applied to gene expression d...
Integrative clustering is used to identify groups of samples by jointly analysing multiple datasets ...
Clustering algorithms aim, by definition, at partitioning a given set of objects into a set of clust...
In data analysis, clustering is the process of finding groups in unlabelled data according to simila...
Current methods for analysis of gene expression data are mostly based on clustering and classificati...
Data mining technique used in the field of clustering is a subject of active research and assists in...
Includes bibliographical references (pages 30-31).As the role of large scale data analysis continues...
Many existing clustering algorithms have been used to identify coexpressed genes in gene expression ...
DNA microarray technology has made it possible to simultaneously monitor the expression levels of th...
Identifying co-expressed gene clusters can provide evidence for genetic or physical interactions. Th...
AbstractClustering algorithms have been shown to be useful to explore large-scale gene expression pr...
Clustering is a challenging research task which could benefit a wide range of practical applications...
Modern technologies have resulted in the production of numerous high-throughput biological datasets....
Data clustering techniques have been applied to extract information from gene expression data for tw...
We assess the robustness of partitional clustering algorithms applied to gene expression data. A num...
Abstract: We assess the robustness of partitional clustering algorithms applied to gene expression d...
Integrative clustering is used to identify groups of samples by jointly analysing multiple datasets ...