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An efficient parallel algorithm for accelerating computational protein design

机译:一种高效的并行算法可加快计算蛋白质的设计

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摘要

>Motivation: Structure-based computational protein design (SCPR) is an important topic in protein engineering. Under the assumption of a rigid backbone and a finite set of discrete conformations of side-chains, various methods have been proposed to address this problem. A popular method is to combine the dead-end elimination (DEE) and A* tree search algorithms, which provably finds the global minimum energy conformation (GMEC) solution.>Results: In this article, we improve the efficiency of computing A* heuristic functions for protein design and propose a variant of A* algorithm in which the search process can be performed on a single GPU in a massively parallel fashion. In addition, we make some efforts to address the memory exceeding problem in A* search. As a result, our enhancements can achieve a significant speedup of the A*-based protein design algorithm by four orders of magnitude on large-scale test data through pre-computation and parallelization, while still maintaining an acceptable memory overhead. We also show that our parallel A* search algorithm could be successfully combined with iMinDEE, a state-of-the-art DEE criterion, for rotamer pruning to further improve SCPR with the consideration of continuous side-chain flexibility.>Availability: Our software is available and distributed open-source under the GNU Lesser General License Version 2.1 (GNU, February 1999). The source code can be downloaded from or .>Contact: >Supplementary information: are available at Bioinformatics online.
机译:>动机:基于结构的计算蛋白质设计(SCPR)是蛋白质工程中的重要主题。在刚性主链和侧链离散构象的有限集合的假设下,已经提出了各种方法来解决该问题。一种流行的方法是将死角消除(DEE)和A *树搜索算法相结合,可证明找到了全局最小能量构象(GMEC)解决方案。>结果:在本文中,我们改进了为蛋白质设计计算A *启发式函数的效率,并提出了A *算法的一种变体,其中可以以大规模并行方式在单个GPU上执行搜索过程。另外,我们做出了一些努力来解决A *搜索中超出内存的问题。结果,我们的增强功能可以通过预先计算和并行化,在大规模测试数据上实现基于A *的蛋白质设计算法显着加速四个数量级,同时仍保持可接受的内存开销。我们还展示了我们的并行A *搜索算法可以与最新的DEE准则iMinDEE成功结合,以进行旋转异构体修剪以进一步改善SCPR,同时考虑到连续侧链的灵活性。>可用性: 我们的软件在GNU较宽松通用许可版本2.1(GNU,1999年2月)下可用并分发为开源。可以从或下载源代码。>联系方式: >补充信息:可从Bioinformatics在线获得。

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