Scalable 3D Spatial Queries for Analytical Pathology Imaging with MapReduce.

Yanhui Liang, Hoang Vo, Ablimit Aji, Jun Kong, Fusheng Wang
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引用次数: 9

Abstract

3D analytical pathology imaging examines high resolution 3D image volumes of human tissues to facilitate biomedical research and provide potential effective diagnostic assistance. Such approach - quantitative analysis of large-scale 3D pathology image volumes - generates tremendous amounts of spatially derived 3D micro-anatomic objects, such as 3D blood vessels and nuclei. Spatial exploration of such massive 3D spatial data requires effective and efficient querying methods. In this paper, we present a scalable and efficient 3D spatial query system for querying massive 3D spatial data based on MapReduce. The system provides an on-demand spatial querying engine which can be executed with as many instances as needed on MapReduce at runtime. Our system supports multiple types of spatial queries on MapReduce through 3D spatial data partitioning, customizable 3D spatial query engine, and implicit parallel spatial query execution. We utilize multi-level spatial indexing to achieve efficient query processing, including global partition indexing for data retrieval and on-demand local spatial indexing for spatial query processing. We evaluate our system with two representative queries: 3D spatial joins and 3D k-nearest neighbor query. Our experiments demonstrate that our system scales to large number of computing nodes, and efficiently handles data-intensive 3D spatial queries that are challenging in analytical pathology imaging.

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可扩展的三维空间查询分析病理成像与MapReduce。
三维分析病理成像检查人体组织的高分辨率三维图像量,以促进生物医学研究并提供潜在的有效诊断协助。这种方法——大规模三维病理图像量的定量分析——产生了大量空间衍生的三维微观解剖对象,如三维血管和核。对如此海量的三维空间数据进行空间探索,需要有效、高效的查询方法。本文提出了一种基于MapReduce的可扩展、高效的三维空间查询系统,用于查询海量三维空间数据。系统提供了一个按需空间查询引擎,可以在运行时在MapReduce上执行任意数量的实例。我们的系统通过三维空间数据分区、可定制的三维空间查询引擎和隐式并行空间查询执行,支持MapReduce上多种类型的空间查询。我们利用多级空间索引来实现高效的查询处理,包括用于数据检索的全局分区索引和用于空间查询处理的按需本地空间索引。我们用两个代表性的查询来评估我们的系统:3D空间连接和3D k近邻查询。我们的实验表明,我们的系统可以扩展到大量的计算节点,并有效地处理在分析病理成像中具有挑战性的数据密集型3D空间查询。
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