The statistical language R is favoured by many biostatisticians for processing microarray data. In recent times, the quantity of data that can be obtained in experiments has risen significantly, making previously fast analyses time consuming or even not possible at all with the existing software infrastructure. High performance computing (HPC) systems offer a solution to these problems but at the expense of increased complexity for the end user. The Simple Parallel R Interface is a library for R that aims to reduce the complexity of using HPC systems by providing biostatisticians with drop‐in parallelised replacements of existing R functions. In this paper we describe parallel implementations of two popular techniques: exploratory clusterin...
Many real-world problems are large in scale and hence difficult to address. Due to the large number ...
Nowadays, microarray technology has become one of the popular ways to study gene expression and diag...
Abstract. Studies of gene expression using high-density oligonucleotide microar-rays have become sta...
The statistical language R is favoured by many biostatisticians for processing microarray data. In r...
The statistical language R is favoured by many biostatisticians for processing microarray data. In r...
The statistical language R is favoured by many biostaticians for processing microarray data. In rece...
Abstract Background Microarray analysis allows the simultaneous measurement of thousands to millions...
R is a free statistical programming language commonly used for the analysis of high-throughput micro...
The statistical language R and its Bioconductor package are favoured by many biostatisticians for pr...
Abstract Background R is the preferred tool for statistical analysis of many bioinformaticians due i...
The statistical language R and its Bioconductor package are favoured by many biostatisticians for pr...
Background: R is the preferred tool for statistical analysis of many bioinformaticians due in part t...
Currently, clustering applications use classical methods to partition a set of data (or objects) in ...
Parallel computing in R has been widely used to analyse microarray data. We have seen various applic...
Abstract Background Microarray data are often used for patient classification and gene selection. An...
Many real-world problems are large in scale and hence difficult to address. Due to the large number ...
Nowadays, microarray technology has become one of the popular ways to study gene expression and diag...
Abstract. Studies of gene expression using high-density oligonucleotide microar-rays have become sta...
The statistical language R is favoured by many biostatisticians for processing microarray data. In r...
The statistical language R is favoured by many biostatisticians for processing microarray data. In r...
The statistical language R is favoured by many biostaticians for processing microarray data. In rece...
Abstract Background Microarray analysis allows the simultaneous measurement of thousands to millions...
R is a free statistical programming language commonly used for the analysis of high-throughput micro...
The statistical language R and its Bioconductor package are favoured by many biostatisticians for pr...
Abstract Background R is the preferred tool for statistical analysis of many bioinformaticians due i...
The statistical language R and its Bioconductor package are favoured by many biostatisticians for pr...
Background: R is the preferred tool for statistical analysis of many bioinformaticians due in part t...
Currently, clustering applications use classical methods to partition a set of data (or objects) in ...
Parallel computing in R has been widely used to analyse microarray data. We have seen various applic...
Abstract Background Microarray data are often used for patient classification and gene selection. An...
Many real-world problems are large in scale and hence difficult to address. Due to the large number ...
Nowadays, microarray technology has become one of the popular ways to study gene expression and diag...
Abstract. Studies of gene expression using high-density oligonucleotide microar-rays have become sta...