Improving genericity and performances of medical systems based on image analysis

Jean-Baptiste Fasquel, V. Agnus
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引用次数: 2

Abstract

This paper deals with the improvement of the genericity of the well-known ITK medical image processing library. Such a library is the core of any medical system/software based on the medical image analysis (e.g. computer aided diagnosis, surgery planning...). This proposed improvement consists in, without algorithm rewriting, extending ITK iterators (leading to an ITK++framework) in order to constrain algorithms to user-specified image areas. We experimentally evaluate this work by considering the practical case of liver vessel segmentation from CT-scan images, where it is pertinent to constrain processing's to the liver area: this reduces the number of voxels to process. Experimental results clearly prove the interest of this work: for example, the anisotropic filtering of this area is performed in only 16 seconds with our proposed solution, while 52 seconds are required using the native limited ITK framework. Moreover, we also show that the code resulting from the proposed improvement remains easy to manage. A major advantage of the proposed solution is that the native ITK library is not modified because the improvement consists in some add-ons: this facilitates the further evaluation of the pertinence of the proposed design while preserving the native ITK framework.
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基于图像分析提高医疗系统的通用性和性能
本文研究了ITK医学图像处理库的通用性改进问题。这样一个库是任何基于医学图像分析的医疗系统/软件的核心(如计算机辅助诊断、手术计划等)。这个改进包括,在不重写算法的情况下,扩展ITK迭代器(导致itk++框架),以便将算法约束到用户指定的图像区域。我们通过考虑从ct扫描图像中分割肝血管的实际情况来实验评估这项工作,其中将处理限制在肝脏区域相关:这减少了要处理的体素数量。实验结果清楚地证明了这项工作的兴趣:例如,我们提出的解决方案仅在16秒内完成了该区域的各向异性滤波,而使用本地有限ITK框架则需要52秒。此外,我们还表明,由所建议的改进产生的代码仍然易于管理。所建议的解决方案的一个主要优点是本机ITK库没有被修改,因为改进包含在一些附加组件中:这有助于进一步评估所建议的设计的相关性,同时保留本机ITK框架。
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