GPU Accelerated Molecular Docking Simulation with Genetic Algorithms
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GPU Accelerated Molecular Docking Simulation with Genetic AlgorithmsData
2016Cita bibliográfica
Altuntaş S., Bozkus Z., Fraguela B.B. (2016) GPU Accelerated Molecular Docking Simulation with Genetic Algorithms. In: Squillero G., Burelli P. (eds) Applications of Evolutionary Computation. EvoApplications 2016. Lecture Notes in Computer Science, vol 9598. Springer, Cham. https://doi.org/10.1007/978-3-319-31153-1_10
Resumo
[Abstract] Receptor-Ligand Molecular Docking is a very computationally expensive process used to predict possible drug candidates for many diseases. A faster docking technique would help life scientists to discover better therapeutics with less effort and time. The requirement of long execution times may mean using a less accurate evaluation of drug candidates potentially increasing the number of false-positive solutions, which require expensive chemical and biological procedures to be discarded. Thus the development of fast and accurate enough docking algorithms greatly reduces wasted drug development resources, helping life scientists discover better therapeutics with less effort and time.
In this article we present the GPU-based acceleration of our recently developed molecular docking code. We focus on offloading the most computationally intensive part of any docking simulation, which is the genetic algorithm, to accelerators, as it is very well suited to them. We show how the main functions of the genetic algorithm can be mapped to the GPU. The GPU-accelerated system achieves a speedup of around ~ 14x with respect to a single CPU core. This makes it very productive to use GPU for small molecule docking cases.
Palabras chave
GPU
OpenCL
Molecular docking
Genetic algorithm
Parallelization
OpenCL
Molecular docking
Genetic algorithm
Parallelization
Descrición
The final publication is available at Springer via https://doi.org/10.1007/978-3-319-31153-1_10