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Bio-Swarm-Pipeline: A Light-Weight, Extensible Batch Processing System for Efficient Biomedical Data Processing

机译:生物群管道:用于高效生物医学数据处理的轻巧,可扩展的批处理系统

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摘要

A streamlined scientific workflow system that can track the details of the data processing history is critical for the efficient handling of fundamental routines used in scientific research. In the scientific workflow research community, the information that describes the details of data processing history is referred to as “provenance” which plays an important role in most of the existing workflow management systems. Despite its importance, however, provenance modeling and management is still a relatively new area in the scientific workflow research community. The proper scope, representation, granularity and implementation of a provenance model can vary from domain to domain and pose a number of challenges for an efficient pipeline design. This paper provides a case study on structured provenance modeling and management problems in the neuroimaging domain by introducing the Bio-Swarm-Pipeline. This new model, which is evaluated in the paper through real world scenarios, systematically addresses the provenance scope, representation, granularity, and implementation issues related to the neuroimaging domain. Although this model stems from applications in neuroimaging, the system can potentially be adapted to a wide range of bio-medical application scenarios.
机译:能够跟踪数据处理历史细节的简化科学工作流程系统对于有效处理科学研究中使用的基本例程至关重要。在科学工作流程研究社区中,描述数据处理历史详细信息的信息称为“来源”,它在大多数现有工作流程管理系统中起着重要作用。尽管具有重要意义,但在科学工作流程研究社区中,物产建模和管理仍是一个相对较新的领域。来源模型的适当范围,表示形式,粒度和实现可能因域而异,并且对有效的管道设计提出了许多挑战。本文通过介绍Bio-Swarm-Pipeline,提供了有关神经成像领域结构化物源建模和管理问题的案例研究。本文通过实际场景对这种新模型进行了评估,该模型系统地解决了与神经影像领域有关的出处范围,表示形式,粒度和实现问题。尽管此模型源于神经影像学的应用,但该系统可以潜在地适应各种生物医学应用场景。

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