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XML-Based Data Model and Architecture for a Knowledge-Based Grid-Enabled Problem-Solving Environment for High-Throughput Biological Imaging

机译:用于高通量生物成像的基于知识的基于网格的问题解决环境的基于XML的数据模型和体系结构

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High-throughput biological imaging uses automated imaging devices to collect a large number of microscopic images for analysis of biological systems and validation of scientific hypotheses. Efficient manipulation of these datasets for knowledge discovery requires high-performance computational resources, efficient storage, and automated tools for extracting and sharing such knowledge among different research sites. Newly emerging grid technologies provide powerful means for exploiting the full potential of these imaging techniques. Efficient utilization of grid resources requires the development of knowledge-based tools and services that combine domain knowledge with analysis algorithms. In this paper, we first investigate how grid infrastructure can facilitate high-throughput biological imaging research, and present an architecture for providing knowledge-based grid services for this field. We identify two levels of knowledge-based services. The first level provides tools for extracting spatiotemporal knowledge from image sets and the second level provides high-level knowledge management and reasoning services. We then present cellular imaging markup language, an extensible markup language-based language for modeling of biological images and representation of spatiotemporal knowledge. This scheme can be used for spatiotemporal event composition, matching, and automated knowledge extraction and representation for large biological imaging datasets. We demonstrate the expressive power of this formalism by means of different examples and extensive experimental results.
机译:高通量生物成像使用自动化成像设备来收集大量显微图像,以分析生物系统和验证科学假设。要有效地操纵这些数据集以进行知识发现,就需要高性能的计算资源,有效的存储以及用于在不同研究地点之间提取和共享此类知识的自动化工具。新出现的网格技术为开发这些成像技术的全部潜力提供了强大的手段。网格资源的有效利用要求开发基于知识的工具和服务,这些工具和服务将领域知识与分析算法结合在一起。在本文中,我们首先研究网格基础设施如何促进高通量生物成像研究,并提出一种为该领域提供基于知识的网格服务的体系结构。我们确定了两种基于知识的服务。第一级提供从图像集中提取时空知识的工具,第二级提供高级知识管理和推理服务。然后,我们介绍细胞成像标记语言,这是一种可扩展的基于标记语言的语言,用于建模生物图像和时空知识。此方案可用于时空事件的组成,匹配以及大型生物成像数据集的自动知识提取和表示。我们通过不同的例子和广泛的实验结果证明了这种形式主义的表现力。

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