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首页> 外文期刊>International journal of computers, communications and control >A Fuzzy Rules-Based Segmentation Method for Medical Images Analysis
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A Fuzzy Rules-Based Segmentation Method for Medical Images Analysis

机译:基于模糊规则的医学图像分析分割方法

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Medical imaging mainly manages and processes missing, ambiguous, omplementary,?redundant and distorted data and information has a strong structural character. This?paper reports a new (semi)automated and supervised method for the segmentation?of brain structures using a rule-based fuzzy system. In the field of biomedical image?analysis fuzzy logic acts as a unified framework for representing and processing both?numerical and symbolic information, as well as structural information constituted?mainly by spatial relationships. The developed application is for the segmentation?of brain structures in CT (computer tomography) images. Promising results show?the superiority of this knowledge-based approach over best traditional techniques in?terms of segmentation errors. The quantitative assessment of this method is made?by comparing manually and automatic segmented brain structures by using some?indexes evaluating the accuracy of contour detection and spatial location. Though?the proposed methodology has been implemented and successfully used for modeldriven?in medical imaging, it is general enough and may be applied to any imagistic?object that can be expressed by expert knowledge and morphological images.
机译:医学成像主要管理和处理缺失,模棱两可,多余,冗余和失真的数据和信息,具有很强的结构特征。本文报告了一种新的(半)自动化和监督方法,该方法使用基于规则的模糊系统对脑结构进行分割。在生物医学图像领域,模糊逻辑作为表示和处理数值和符号信息以及主要由空间关系构成的结构信息的统一框架。开发的应用程序用于在CT(计算机断层扫描)图像中分割大脑结构。有希望的结果表明,在分割错误方面,这种基于知识的方法优于最佳传统技术。通过使用一些评估轮廓检测和空间定位准确性的指标来比较手动和自动分割的大脑结构,从而对该方法进行了定量评估。尽管所提出的方法已被实现并成功地用于医学成像中的模型驱动,但它已经足够通用,并且可以应用于可以由专家知识和形态图像表达的任何影像对象。

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