The use of Bioinformatic tools in routine clinical diagnostics is still facing a number of issues. The more complex and advanced bioinformatic tools become, the more performance is required by the computing platforms. Unfortunately, the cost of parallel computing platforms is usually prohibitive for both public and small private medical practices. This paper presents a successful experience in using the parallel processing capabilities of Graphical Processing Units (GPU) to speed up bioinformatic tasks such as statistical classification of gene expression profiles. The results show that using open source CUDA programming libraries allows to obtain a significant increase in performances and therefore to shorten the gap between advanced bioin...
Within the recent years clock rates of modern processors stagnated while the demand for computing po...
Motivation: Collecting millions of genetic variations is feasible with the advanced genotyping techn...
The extent of data in a typical genome-wide association study (GWAS) poses considerable computationa...
The days when bioinformatics tools will be so reliable to become a standard aid in routine clinical ...
Utilizing the power of GPU parallel processing with CUDA can speed up the processing of Variant Call...
Abstract. DNA microarrays are used to simultaneously analyze the expression level of thousands of ge...
International audienceMany bioinformatics studies require the analysis of RNA or DNA structures. Mor...
Over the past few years, DNA sequencing technology has been advancing at such a fast pace that compu...
Langenkämper D, Jakobi T, Feld D, Jelonek L, Goesmann A, Nattkemper TW. Comparison of Acceleration T...
Recent advances in genome sequencing technologies and modern biological data analysis technologies ...
AbstractGenotype imputation is an important approach for improving the power of genome-wide associat...
The emergence of personalized medicine requires being able to produce and process huge amounts of bi...
Background: Gene regulatory networks (GRN) inference is an important bioinformatics problem in which...
Bioinformatics require the analysis of large amounts of data. With the recent advent of next generat...
The biological datasets produced as a result of high-throughput genomic research such as specificall...
Within the recent years clock rates of modern processors stagnated while the demand for computing po...
Motivation: Collecting millions of genetic variations is feasible with the advanced genotyping techn...
The extent of data in a typical genome-wide association study (GWAS) poses considerable computationa...
The days when bioinformatics tools will be so reliable to become a standard aid in routine clinical ...
Utilizing the power of GPU parallel processing with CUDA can speed up the processing of Variant Call...
Abstract. DNA microarrays are used to simultaneously analyze the expression level of thousands of ge...
International audienceMany bioinformatics studies require the analysis of RNA or DNA structures. Mor...
Over the past few years, DNA sequencing technology has been advancing at such a fast pace that compu...
Langenkämper D, Jakobi T, Feld D, Jelonek L, Goesmann A, Nattkemper TW. Comparison of Acceleration T...
Recent advances in genome sequencing technologies and modern biological data analysis technologies ...
AbstractGenotype imputation is an important approach for improving the power of genome-wide associat...
The emergence of personalized medicine requires being able to produce and process huge amounts of bi...
Background: Gene regulatory networks (GRN) inference is an important bioinformatics problem in which...
Bioinformatics require the analysis of large amounts of data. With the recent advent of next generat...
The biological datasets produced as a result of high-throughput genomic research such as specificall...
Within the recent years clock rates of modern processors stagnated while the demand for computing po...
Motivation: Collecting millions of genetic variations is feasible with the advanced genotyping techn...
The extent of data in a typical genome-wide association study (GWAS) poses considerable computationa...