Abstract Background Biological data comprises various topologies or a mixture of forms, which makes its analysis extremely complicated. With this data increasing in a daily basis, the design and development of efficient and accurate statistical methods has become absolutely necessary. Specific analyses, such as those related to genome-wide association studies and multi-omics information, are often aimed at clustering sub-conditions of cancers and other diseases. Hierarchical clustering methods, which can be categorized into agglomerative and divisive, have been widely used in such situations. However, unlike agglomerative methods divisive clustering approaches have consistently proved to be computationally expensive. Results The proposed cl...
In this paper, we provide an overview of existing partitioning and hierarchical clustering algorithm...
Clustering is an essential research problem which has received considerable attention in the researc...
Abstract Background Clustering methods are becoming widely utilized in biomedical research where the...
Background Biological data comprises various topologies or a mixture of forms, which makes its anal...
Objective: In this paper, we focused on devel- oping a clustering approach for biological data. In m...
Objective: In this work, we focused on developing a clustering approach for biological data. In ma...
Clustering analysis is an important tool in studying gene expression data. The Bayesian hierarchical...
Abstract. In this paper, we introduce a novel objective function for the hierarchical clustering of ...
Finding subtypes of heterogeneous diseases is the biggest challenge in the area of biology. Often, c...
Clustering algorithms are extensively used on patient tissue samples in order to group and visualize...
Machine learning techniques are increasingly popular tools for understanding complex biological data...
We present DHClus, a new Divisive Hierarchical Clustering algorithm developed to detect clusters wit...
In this paper, we introduce a novel objective function for the hierarchical clustering of data from ...
When applying hierarchical clustering algorithms to cluster patient samples from microarray data, th...
Clustering algorithms are routinely used in biomedical disciplines, and are a basic tool in bioinfor...
In this paper, we provide an overview of existing partitioning and hierarchical clustering algorithm...
Clustering is an essential research problem which has received considerable attention in the researc...
Abstract Background Clustering methods are becoming widely utilized in biomedical research where the...
Background Biological data comprises various topologies or a mixture of forms, which makes its anal...
Objective: In this paper, we focused on devel- oping a clustering approach for biological data. In m...
Objective: In this work, we focused on developing a clustering approach for biological data. In ma...
Clustering analysis is an important tool in studying gene expression data. The Bayesian hierarchical...
Abstract. In this paper, we introduce a novel objective function for the hierarchical clustering of ...
Finding subtypes of heterogeneous diseases is the biggest challenge in the area of biology. Often, c...
Clustering algorithms are extensively used on patient tissue samples in order to group and visualize...
Machine learning techniques are increasingly popular tools for understanding complex biological data...
We present DHClus, a new Divisive Hierarchical Clustering algorithm developed to detect clusters wit...
In this paper, we introduce a novel objective function for the hierarchical clustering of data from ...
When applying hierarchical clustering algorithms to cluster patient samples from microarray data, th...
Clustering algorithms are routinely used in biomedical disciplines, and are a basic tool in bioinfor...
In this paper, we provide an overview of existing partitioning and hierarchical clustering algorithm...
Clustering is an essential research problem which has received considerable attention in the researc...
Abstract Background Clustering methods are becoming widely utilized in biomedical research where the...