6533b7d4fe1ef96bd1262701
RESEARCH PRODUCT
CUDA-enabled hierarchical ward clustering of protein structures based on the nearest neighbour chain algorithm
Tuan Tu TranAnna Katharina HildebrandtHoang-vu DangAndreas HildebrandtBertil Schmidtsubject
0301 basic medicineSpeedupComputer scienceCorrelation clusteringParallel computingTheoretical Computer Science03 medical and health sciencesCUDA030104 developmental biologyHardware and ArchitectureCluster analysisAlgorithmSoftwareWard's methoddescription
Clustering of molecular systems according to their three-dimensional structure is an important step in many bioinformatics workflows. In applications such as docking or structure prediction, many algorithms initially generate large numbers of candidate poses (or decoys), which are then clustered to allow for subsequent computationally expensive evaluations of reasonable representatives. Since the number of such candidates can easily range from thousands to millions, performing the clustering on standard central processing units (CPUs) is highly time consuming. In this paper, we analyse and evaluate different approaches to parallelize the nearest neighbour chain algorithm to perform hierarchical Ward clustering of protein structures, using both atom-based root mean square deviation (RMSD) and rigid-body RMSD molecular distances on a graphics processing unit (GPU). This leads to a speedup of around one order of magnitude of our CUDA implementation on a GeForce Titan GPU compared to a multi-threaded CPU implementation on a Core-i7 2700. Furthermore, the runtimes compare favourably with ClusCo, another state-of-the-art CUDA-enabled protein structure clustering method, while achieving similar accuracy on the iTasser benchmark dataset. Our implementation has also been incorporated into the Biochemical Algorithms library to allow easy integration into biologists’ workflows.
year | journal | country | edition | language |
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2015-08-09 | The International Journal of High Performance Computing Applications |