MEGADOCK 3.0: a high-performance protein-protein interaction prediction software using hybrid parallel computing for petascale supercomputing environments.

Q2 Decision Sciences Source Code for Biology and Medicine Pub Date : 2013-09-03 DOI:10.1186/1751-0473-8-18
Yuri Matsuzaki, Nobuyuki Uchikoga, Masahito Ohue, Takehiro Shimoda, Toshiyuki Sato, Takashi Ishida, Yutaka Akiyama
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引用次数: 28

Abstract

Background: Protein-protein interaction (PPI) plays a core role in cellular functions. Massively parallel supercomputing systems have been actively developed over the past few years, which enable large-scale biological problems to be solved, such as PPI network prediction based on tertiary structures.

Results: We have developed a high throughput and ultra-fast PPI prediction system based on rigid docking, "MEGADOCK", by employing a hybrid parallelization (MPI/OpenMP) technique assuming usages on massively parallel supercomputing systems. MEGADOCK displays significantly faster processing speed in the rigid-body docking process that leads to full utilization of protein tertiary structural data for large-scale and network-level problems in systems biology. Moreover, the system was scalable as shown by measurements carried out on two supercomputing environments. We then conducted prediction of biological PPI networks using the post-docking analysis.

Conclusions: We present a new protein-protein docking engine aimed at exhaustive docking of mega-order numbers of protein pairs. The system was shown to be scalable by running on thousands of nodes. The software package is available at: http://www.bi.cs.titech.ac.jp/megadock/k/.

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MEGADOCK 3.0:一个高性能的蛋白质-蛋白质相互作用预测软件,使用混合并行计算用于千万亿次超级计算环境。
背景:蛋白-蛋白相互作用(PPI)在细胞功能中起着核心作用。大规模并行超级计算系统在过去几年中得到了积极的发展,它使大规模的生物问题得以解决,例如基于三级结构的PPI网络预测。结果:我们采用混合并行化(MPI/OpenMP)技术,假设在大规模并行超级计算系统上使用,开发了基于刚性对接的高通量超快速PPI预测系统“MEGADOCK”。MEGADOCK在刚体对接过程中显示出明显更快的处理速度,从而充分利用蛋白质三级结构数据来解决系统生物学中的大规模和网络级问题。此外,在两个超级计算环境上进行的测量表明,该系统具有可扩展性。然后,我们使用对接后分析对生物PPI网络进行了预测。结论:我们提出了一种新的蛋白质对接引擎,旨在对蛋白质对进行巨数量级的穷举对接。通过在数千个节点上运行,该系统显示出可扩展性。软件包可从以下网址获取:http://www.bi.cs.titech.ac.jp/megadock/k/。
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Source Code for Biology and Medicine
Source Code for Biology and Medicine Decision Sciences-Information Systems and Management
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期刊介绍: Source Code for Biology and Medicine is a peer-reviewed open access, online journal that publishes articles on source code employed over a wide range of applications in biology and medicine. The journal"s aim is to publish source code for distribution and use in the public domain in order to advance biological and medical research. Through this dissemination, it may be possible to shorten the time required for solving certain computational problems for which there is limited source code availability or resources.
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