Consensus Sigma-70 Promoter Prediction Using Hadoop

J. Hogan, W. Kelly, Felicity Newell
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引用次数: 2

Abstract

MapReduce frameworks such as Hadoop are well suited to handling large sets of data which can be processed separately and independently, with canonical applications in information retrieval and sales record analysis. Rapid advances in sequencing technology have ensured an explosion in the availability of genomic data, with a consequent rise in the importance of large scale comparative genomics, often involving operations and data relationships which deviate from the classical Map Reduce structure. This work examines the application of Hadoop to patterns of this nature, using as our focus a well established workflow for identifying promoters - binding sites for regulatory proteins - across multiple gene regions and organisms, coupled with the unifying step of assembling these results into a consensus sequence. Our approach demonstrates the utility of Hadoop for problems of this nature, showing how the tyranny of the "dominant decomposition" can be at least partially overcome. It also demonstrates how load balance and the granularity of parallelism can be optimized by pre-processing that splits and reorganizes input files, allowing a wide range of related problems to be brought under the same computational umbrella.
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基于Hadoop的共识Sigma-70启动子预测
MapReduce框架(如Hadoop)非常适合处理可以单独和独立处理的大型数据集,在信息检索和销售记录分析中具有规范的应用程序。测序技术的快速发展确保了基因组数据的爆炸性增长,随之而来的是大规模比较基因组学的重要性上升,通常涉及偏离经典Map Reduce结构的操作和数据关系。这项工作考察了Hadoop在这种性质模式中的应用,我们的重点是建立一个良好的工作流程,用于识别跨多个基因区域和生物体的启动子(调节蛋白的结合位点),以及将这些结果组装成共识序列的统一步骤。我们的方法展示了Hadoop在解决这类问题上的实用性,展示了如何至少部分地克服“主导分解”的暴政。它还演示了如何通过分割和重新组织输入文件的预处理来优化负载平衡和并行度粒度,从而允许将广泛的相关问题放在同一个计算伞下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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