High performance computing workflow for protein functional annotation

L. Stanberry, Yuan Liu, Bhanu Rekepalli, Paul Giblock, R. Higdon, William Broomall
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引用次数: 1

Abstract

Functional annotation of newly sequenced genomes is one of the major challenges in modern biology. With modern sequencing technologies, the PSU (Protein Sequence Universe) expands exponentially. Newly sequenced bacterial genomes alone contain over 7.5 million proteins. The rate of data generation has far surpassed that of protein annotation. The volume of protein data makes manual curation infeasible whereas a high compute cost limits the utility of existing automated approaches. In this study, we built an automated workflow to enable large-scale protein annotation into existing orthologous groups using HPC (High Performance Computing) architectures. We developed a low complexity classification algorithm to assign proteins into bacterial COGs (Clusters of Orthologous Groups of proteins). Based on the PSI-BLAST (Position-Specific Iterative Basic Local Alignment Search Tool), the algorithm was validated on simulated and archaeal data to ensure at least 80% specificity and sensitivity. The workflow with highly scalable parallel applications for classification and sequence alignment was developed on XSEDE (Extreme Science and Engineering Discovery Environment) supercomputers. Using the workflow, we have classified one million newly sequenced bacterial proteins. With the rapid expansion of the PSU, the proposed workflow will enable scientists to annotate big genome data.
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蛋白质功能注释的高性能计算工作流
新测序基因组的功能注释是现代生物学的主要挑战之一。随着现代测序技术的发展,PSU(蛋白质序列宇宙)呈指数级增长。仅新测序的细菌基因组就包含超过750万个蛋白质。数据生成的速度远远超过了蛋白质注释的速度。大量的蛋白质数据使得人工管理不可行,而高计算成本限制了现有自动化方法的实用性。在这项研究中,我们构建了一个自动化的工作流程,使用高性能计算(HPC)架构对现有的同源组进行大规模的蛋白质注释。我们开发了一种低复杂度的分类算法来将蛋白质分配到细菌COGs(同源蛋白质群的簇)中。基于PSI-BLAST (Position-Specific Iterative Basic Local Alignment Search Tool,位置特定迭代基本局部比对搜索工具),在模拟和古细菌数据上验证了该算法,确保了至少80%的特异性和灵敏度。在XSEDE(极端科学与工程发现环境)超级计算机上开发了具有高度可扩展的分类和序列对齐并行应用程序的工作流。利用这个工作流程,我们已经对100万个新测序的细菌蛋白质进行了分类。随着PSU的快速扩展,所提出的工作流程将使科学家能够注释大的基因组数据。
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