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Comparison of various fuzzy clustering algorithms in the detection of ROI in lung CT and a modified kernelized-spatial fuzzy c-means algorithm

机译:肺CT ROI检测中各种模糊聚类算法与改进的核化空间模糊c均值算法的比较

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The detection of pulmonary nodules in radiological images or Computed Tomography has been widely researched in the field of medical image analysis, because it is a highly complicated but socially interesting matter. The classical approach consists in the development of a CAD system that indicates in phases the presence or absence of nodules. One of these phases is the detection of regions of interest that may be nodules, with the aim of reducing the problem area. This article evaluates various fuzzy clustering algorithms that represent current tendencies in the field, and proposes a new algorithm. The algorithms were evaluated with high resolution CTs from the Lung Internet Database Consortium.
机译:在放射线图像或计算机断层扫描中检测肺结节已在医学图像分析领域进行了广泛的研究,因为这是一个非常复杂但具有社会意义的问题。经典方法在于开发CAD系统,该系统可分阶段指示结核的存在与否。这些阶段之一是检测可能是小结节的感兴趣区域,目的是减少问题区域。本文评估了代表该领域当前趋势的各种模糊聚类算法,并提出了一种新算法。通过Lung Internet Database Consortium的高分辨率CT对算法进行了评估。

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