treeclimbR is for analyzing hierarchical trees of entities, such as phylogenies or cell types, at different resolutions. It proposes multiple candidates that capture the latent signal and pinpoints branches or leaves that contain features of interest, in a data-driven way. It outperforms currently available methods on synthetic data, and we highlight the approach on various applications, including microbiome and microRNA surveys as well as single-cell cytometry and RNA-seq datasets. With the emergence of various multi-resolution genomic datasets, treeclimbR provides a thorough inspection on entities across resolutions and gives additional flexibility to uncover biological associations
The increasing availability of large genomic data sets as well as the advent of Bayesian phylogeneti...
Abstract: Hierarchical clustering is widely used to find patterns in multi-dimensional datasets, es...
ABSTRACT. Inferential summaries of tree estimates are useful in the setting of evolutionary biology,...
treeclimbR is for analyzing hierarchical trees of entities, such as phylogenies or cell types, at di...
treeclimbR is for analyzing hierarchical trees of entities, such as phylogenies or cell types, at di...
treeclimbR is for analyzing hierarchical trees of entities, such as phylogenies or cell types, at di...
One of the most common goals of hierarchical clustering is finding those branches of a tree that for...
BACKGROUND: One of the most common goals of hierarchical clustering is finding those branches of a t...
International audienceWe consider the problem of incorporating evolutionary information (e.g., taxon...
Traditionally, the visual analysis of hierarchies, respectively, trees, is conducted by focusing on ...
Hierarchical clustering is widely used to find patterns in multi-dimensional datasets, especially fo...
BackgroundClassification procedures are widely used in phylogenetic inference, the analysis of expre...
In genomics, hierarchical clustering (HC) is a popular method for grouping similar samples based on ...
This article is available from: http://www.biomedcentral.com/1471-2105/8/442[Background] Classificat...
The increasing availability of large genomic data sets as well as the advent of Bayesian phylogeneti...
The increasing availability of large genomic data sets as well as the advent of Bayesian phylogeneti...
Abstract: Hierarchical clustering is widely used to find patterns in multi-dimensional datasets, es...
ABSTRACT. Inferential summaries of tree estimates are useful in the setting of evolutionary biology,...
treeclimbR is for analyzing hierarchical trees of entities, such as phylogenies or cell types, at di...
treeclimbR is for analyzing hierarchical trees of entities, such as phylogenies or cell types, at di...
treeclimbR is for analyzing hierarchical trees of entities, such as phylogenies or cell types, at di...
One of the most common goals of hierarchical clustering is finding those branches of a tree that for...
BACKGROUND: One of the most common goals of hierarchical clustering is finding those branches of a t...
International audienceWe consider the problem of incorporating evolutionary information (e.g., taxon...
Traditionally, the visual analysis of hierarchies, respectively, trees, is conducted by focusing on ...
Hierarchical clustering is widely used to find patterns in multi-dimensional datasets, especially fo...
BackgroundClassification procedures are widely used in phylogenetic inference, the analysis of expre...
In genomics, hierarchical clustering (HC) is a popular method for grouping similar samples based on ...
This article is available from: http://www.biomedcentral.com/1471-2105/8/442[Background] Classificat...
The increasing availability of large genomic data sets as well as the advent of Bayesian phylogeneti...
The increasing availability of large genomic data sets as well as the advent of Bayesian phylogeneti...
Abstract: Hierarchical clustering is widely used to find patterns in multi-dimensional datasets, es...
ABSTRACT. Inferential summaries of tree estimates are useful in the setting of evolutionary biology,...