AbstractTo microarray expression data analysis, it is well accepted that biological knowledge-guided clustering techniques show more advantages than pure mathematical techniques. In this paper, Gene Ontology is introduced to guide the clustering process, and thus a new algorithm capturing both expression pattern similarities and biological function similarities is developed. Our algorithm was validated on two well-known public data sets and the results were compared with some previous works. It is shown that our method has advantages in both the quality of clusters and the precision of biological annotations. Furthermore, the clustering results can be adjusted according to different stringency requirements. It is expected that our algorithm...
Abstract Background A cluster analysis is the most commonly performed procedure (often regarded as a...
Simultaneous measurement of the expression levels of thousands to ten thousand genes in multiple tis...
Partitioning closely related genes into clusters has become an important element of practically all ...
Abstract. Current microarray technology provides ways to obtain time series expression data for stud...
The Gene Ontology (GO) is an important knowledge resource for biologists and bioinformaticians. This...
High throughput technologies produce large biological datasets that may lead to greater understandin...
Abstract:- In this paper it is explained a new approach for clustering Gene Ontology (GO) terms by e...
This paper discusses different approaches for integrating biological knowledge in gene ex-pression a...
In this paper we propose a clustering algorithm called s-Cluster for analysis of gene expression dat...
The analysis of microarray data is a widespread functional genomics approach that allows for the mon...
Abstract Background DNA microarray technology allows for the measurement of genome-wide expression p...
Try to put well in practice what you already know. In so doing, you will, in good time, discover the...
Abstract. The huge volume of gene expression data produced by mi-croarrays and other high-throughput...
Abstract. In this paper we propose a clustering algorithm called s-Cluster for analysis of gene expr...
Abstract. With the invention of biotechnological high throughput methods like DNA microarrays, biolo...
Abstract Background A cluster analysis is the most commonly performed procedure (often regarded as a...
Simultaneous measurement of the expression levels of thousands to ten thousand genes in multiple tis...
Partitioning closely related genes into clusters has become an important element of practically all ...
Abstract. Current microarray technology provides ways to obtain time series expression data for stud...
The Gene Ontology (GO) is an important knowledge resource for biologists and bioinformaticians. This...
High throughput technologies produce large biological datasets that may lead to greater understandin...
Abstract:- In this paper it is explained a new approach for clustering Gene Ontology (GO) terms by e...
This paper discusses different approaches for integrating biological knowledge in gene ex-pression a...
In this paper we propose a clustering algorithm called s-Cluster for analysis of gene expression dat...
The analysis of microarray data is a widespread functional genomics approach that allows for the mon...
Abstract Background DNA microarray technology allows for the measurement of genome-wide expression p...
Try to put well in practice what you already know. In so doing, you will, in good time, discover the...
Abstract. The huge volume of gene expression data produced by mi-croarrays and other high-throughput...
Abstract. In this paper we propose a clustering algorithm called s-Cluster for analysis of gene expr...
Abstract. With the invention of biotechnological high throughput methods like DNA microarrays, biolo...
Abstract Background A cluster analysis is the most commonly performed procedure (often regarded as a...
Simultaneous measurement of the expression levels of thousands to ten thousand genes in multiple tis...
Partitioning closely related genes into clusters has become an important element of practically all ...