Summary: Hierarchical clustering is a widely used method for detecting clusters in genomic data. Clusters are defined by cutting branches off the dendrogram. A common but inflexible method uses a constant height cutoff value; this method exhibits suboptimal performance on complicated dendrograms. We present the Dynamic Tree Cut R package that implements novel dynamic branch cutting methods for detecting clusters in a dendrogram depending on their shape. Compared to the constant height cutoff method, our techniques offer the following advantages: (1) they are capable of identifying nested clusters; (2) they are flexible—cluster shape parameters can be tuned to suit the application at hand; (3) they are suitable for automation; and (4) they c...
In cancer research, class discovery is the first process for investigating a new dataset for which h...
In microarray gene expression data, clusters may hide in certain subspaces. For example, a set of co...
Choosing a single similarity threshold for cutting dendrograms is not sufficient for performing hier...
Summary: Hierarchical clustering is a widely used method for detecting clusters in genomic data. Clu...
Hierarchical clustering is widely used to find patterns in multi-dimensional datasets, especially fo...
Motivation: Hierarchical clustering is widely used to cluster genes into groups based on their expre...
Abstract: Hierarchical clustering is widely used to find patterns in multi-dimensional datasets, es...
Abstract: Clustering is the classification of objects into different groups, or more precisely, the ...
Micro arrays are used to assess the transcriptome of many biological systems that has generated an e...
In this paper, we provide an overview of existing partitioning and hierarchical clustering algorithm...
In microarray gene expression data, clusters may hide in certain subspaces. For example, a set of co...
We describe the use of a binary hierarchical clustering (BHC) framework for clustering of gene expre...
In genomics, hierarchical clustering (HC) is a popular method for grouping similar samples based on ...
In cancer research, class discovery is the first process for investigating a new dataset for which h...
In cancer research, class discovery is the first process for investigating a new dataset for which h...
In cancer research, class discovery is the first process for investigating a new dataset for which h...
In microarray gene expression data, clusters may hide in certain subspaces. For example, a set of co...
Choosing a single similarity threshold for cutting dendrograms is not sufficient for performing hier...
Summary: Hierarchical clustering is a widely used method for detecting clusters in genomic data. Clu...
Hierarchical clustering is widely used to find patterns in multi-dimensional datasets, especially fo...
Motivation: Hierarchical clustering is widely used to cluster genes into groups based on their expre...
Abstract: Hierarchical clustering is widely used to find patterns in multi-dimensional datasets, es...
Abstract: Clustering is the classification of objects into different groups, or more precisely, the ...
Micro arrays are used to assess the transcriptome of many biological systems that has generated an e...
In this paper, we provide an overview of existing partitioning and hierarchical clustering algorithm...
In microarray gene expression data, clusters may hide in certain subspaces. For example, a set of co...
We describe the use of a binary hierarchical clustering (BHC) framework for clustering of gene expre...
In genomics, hierarchical clustering (HC) is a popular method for grouping similar samples based on ...
In cancer research, class discovery is the first process for investigating a new dataset for which h...
In cancer research, class discovery is the first process for investigating a new dataset for which h...
In cancer research, class discovery is the first process for investigating a new dataset for which h...
In microarray gene expression data, clusters may hide in certain subspaces. For example, a set of co...
Choosing a single similarity threshold for cutting dendrograms is not sufficient for performing hier...