分布式基础设施上海马分割的MRI分析

S. Tangaro, N. Amoroso, M. Antonacci, M. Boccardi, M. Bocchetta, A. Chincarini, D. Diacono, G. Donvito, R. Errico, G. Frisoni, Tommaso Maggipinto, A. Monaco, F. Sensi, A. Tateo, R. Bellotti
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引用次数: 0

摘要

由于所需分析的规模和复杂性,医学图像计算提出了新的挑战。医学图像数据库目前可提供临床诊断。例如,可以提供基于成像生物标志物的诊断信息,将单个病例与参照组(对照组或患有疾病的患者)进行比较。同时,为了从医学图像中提取有用的信息,已经实现了许多复杂的计算密集型算法。科学的工作流技术具有可设计、可快速实现、可重用等优点,将在许多应用中发挥巨大的优势。然而,这种技术需要分布式计算基础设施(如Grid或Cloud)才能有效地执行。医学图像处理中最常用的工作流管理器之一是LONI管道(LP),这是神经成像实验室开发的图形工作台(http://pipeline.loni.usc.edu)。在本文中,我们介绍了一种使用LONI Pipeline在分布式基础设施上提交和监控工作流的通用方法,包括欧洲网格基础设施(EGI)和基于扭矩的批处理场。本文在脑磁共振成像(MRI)中实现了一个完整的分割流水线。它需要耗时且数据密集的处理,因此减少计算时间对于满足临床实践限制至关重要。所开发的方法基于web服务,可用于任何医学成像应用程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MRI analysis for hippocampus segmentation on a distributed infrastructure
Medical image computing raises new challenges due to the scale and the complexity of the required analyses. Medical image databases are currently available to supply clinical diagnosis. For instance, it is possible to provide diagnostic information based on an imaging biomarker comparing a single case to the reference group (controls or patients with disease). At the same time many sophisticated and computationally intensive algorithms have been implemented to extract useful information from medical images. Many applications would take great advantage by using scientific workflow technology due to its design, rapid implementation and reuse. However this technology requires a distributed computing infrastructure (such as Grid or Cloud) to be executed efficiently. One of the most used workflow manager for medical image processing is the LONI pipeline (LP), a graphical workbench developed by the Laboratory of Neuro Imaging (http://pipeline.loni.usc.edu). In this article we present a general approach to submit and monitor workflows on distributed infrastructures using LONI Pipeline, including European Grid Infrastructure (EGI) and Torque-based batch farm. In this paper we implemented a complete segmentation pipeline in brain magnetic resonance imaging (MRI). It requires time-consuming and data-intensive processing and for which reducing the computing time is crucial to meet clinical practice constraints. The developed approach is based on web services and can be used for any medical imaging application.
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