International audienceObjective: Data clustering is a common exploration step in the omics era, notably in genomics and proteomics where many genes or proteins can be quantified from one or more experiments. Bayesian clustering is a powerful unsupervised algorithm that can classify several thousands of genes or proteins. AutoClass C, its original implementation, handles missing data, automatically determines the best number of clusters but is not user-friendly. Results: We developed an online tool called AutoClassWeb, which provides an easy-to-use and simple web interface for Bayesian clustering with AutoClass. Input data are entered as TSV files and quality controlled. Results are provided in formats that ease further analyses with spreads...
A new unsupervised gene clustering algorithm based on the integration of biological knowledge into e...
Includes bibliographical references (pages 30-31).As the role of large scale data analysis continues...
As in many other fields, biology is faced with enormous amounts ofdata that contains valuable inform...
International audienceObjective: Data clustering is a common exploration step in the omics era, nota...
Data clustering is a common exploration step in the omics era, notably in genomics and proteomics wh...
International audienceRecently, several theoretical and applied studies have shown that unsupervised...
Recently, several theoretical and applied studies have shown that unsupervised Bayesian classificati...
Background Clustering is one of the most common techniques in data analysis and seeks to group toget...
Background: Studies that aim at explaining phenotypes or disease susceptibility by genetic or epigen...
Abstract. Clustering algorithms are employed in many bioinformatics tasks, including classification ...
Clustering is a long-standing problem in computer science and is applied in virtually any scientific...
The amount of available genomic data, produced by genome sequencing projects, increases more and mor...
Abstract. Current microarray technology provides ways to obtain time series expression data for stud...
The proliferation of biological databases and the easy access enabled by the Internet is having a be...
The Bayesian product partition model in Booth et al. (2007) simultaneously searches for the optimal ...
A new unsupervised gene clustering algorithm based on the integration of biological knowledge into e...
Includes bibliographical references (pages 30-31).As the role of large scale data analysis continues...
As in many other fields, biology is faced with enormous amounts ofdata that contains valuable inform...
International audienceObjective: Data clustering is a common exploration step in the omics era, nota...
Data clustering is a common exploration step in the omics era, notably in genomics and proteomics wh...
International audienceRecently, several theoretical and applied studies have shown that unsupervised...
Recently, several theoretical and applied studies have shown that unsupervised Bayesian classificati...
Background Clustering is one of the most common techniques in data analysis and seeks to group toget...
Background: Studies that aim at explaining phenotypes or disease susceptibility by genetic or epigen...
Abstract. Clustering algorithms are employed in many bioinformatics tasks, including classification ...
Clustering is a long-standing problem in computer science and is applied in virtually any scientific...
The amount of available genomic data, produced by genome sequencing projects, increases more and mor...
Abstract. Current microarray technology provides ways to obtain time series expression data for stud...
The proliferation of biological databases and the easy access enabled by the Internet is having a be...
The Bayesian product partition model in Booth et al. (2007) simultaneously searches for the optimal ...
A new unsupervised gene clustering algorithm based on the integration of biological knowledge into e...
Includes bibliographical references (pages 30-31).As the role of large scale data analysis continues...
As in many other fields, biology is faced with enormous amounts ofdata that contains valuable inform...