Abstract. DNA microarrays are used to simultaneously analyze the expression level of thousands of genes under multiple conditions; however, massive amount of data is generated making its analysis a challenge and an ideal candidate for massive parallel processing. Among the available technologies, the use of General Purpose computation on Graphics Processing Units (GPGPU) is an efficient cost-effective alternative, compared to a Central Processing Unit (CPU). This paper presents an implementation of algorithms using Compute Unified Device Architecture (CUDA) to determine statistical significance in the evaluation of gene expression levels for a microarray hybridization experiment designed and carried out at the Centro de Investigaciones Biol...
Background: Gene regulatory networks (GRN) inference is an important bioinformatics problem in which...
[[abstract]]Microarray hybridization analysis on transcriptomic specimens has become an efficient te...
Gene expression can be studied at a genome-wide scale with the aid of modern microarray technologies...
The biological datasets produced as a result of high-throughput genomic research such as specificall...
The use of Bioinformatic tools in routine clinical diagnostics is still facing a number of issues. T...
The days when bioinformatics tools will be so reliable to become a standard aid in routine clinical ...
Recent advances in high-throughput genomic technology, such as micro arrays, usually produce vast am...
Utilizing the power of GPU parallel processing with CUDA can speed up the processing of Variant Call...
Análise de expressão gênica em larga escala é de fundamental importância para a biologia molecular a...
The isolation with migration (IM) model is important for studies in population genetics and phylogeo...
This thesis represents master's thesis focused on acceleration of Genetic algorithms using GPU. Firs...
International audienceMany bioinformatics studies require the analysis of RNA or DNA structures. Mor...
<div><p>Gene co-expression networks comprise one type of valuable biological networks. Many methods ...
Gene co-expression networks comprise one type of valuable biological networks. Many methods and tool...
It is shown how Nvidia Cuda can contribute to the analysis of DNA data. Three approaches are describ...
Background: Gene regulatory networks (GRN) inference is an important bioinformatics problem in which...
[[abstract]]Microarray hybridization analysis on transcriptomic specimens has become an efficient te...
Gene expression can be studied at a genome-wide scale with the aid of modern microarray technologies...
The biological datasets produced as a result of high-throughput genomic research such as specificall...
The use of Bioinformatic tools in routine clinical diagnostics is still facing a number of issues. T...
The days when bioinformatics tools will be so reliable to become a standard aid in routine clinical ...
Recent advances in high-throughput genomic technology, such as micro arrays, usually produce vast am...
Utilizing the power of GPU parallel processing with CUDA can speed up the processing of Variant Call...
Análise de expressão gênica em larga escala é de fundamental importância para a biologia molecular a...
The isolation with migration (IM) model is important for studies in population genetics and phylogeo...
This thesis represents master's thesis focused on acceleration of Genetic algorithms using GPU. Firs...
International audienceMany bioinformatics studies require the analysis of RNA or DNA structures. Mor...
<div><p>Gene co-expression networks comprise one type of valuable biological networks. Many methods ...
Gene co-expression networks comprise one type of valuable biological networks. Many methods and tool...
It is shown how Nvidia Cuda can contribute to the analysis of DNA data. Three approaches are describ...
Background: Gene regulatory networks (GRN) inference is an important bioinformatics problem in which...
[[abstract]]Microarray hybridization analysis on transcriptomic specimens has become an efficient te...
Gene expression can be studied at a genome-wide scale with the aid of modern microarray technologies...