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A rule-based approach to stroke lesion analysis from CT brain images

机译:基于规则的CT脑图像中风病变分析方法

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This paper presents a method for automatic segmentation and labeling of computerised tomography (CT) head images of stroke lesions. The method is composed of three steps. The first step is automatic determination of head symmetry axis, with the possibility of manual improvement of the result if necessary. Symmetry axis calculation is based on moments. In the second step, the seeded region-growing (SRG) algorithm is used to segment the input image into a number of regions having uniform brightness. Features of these regions, such as brightness, area, neighborhood and relative position to the symmetry axis are used to create facts for a rule-based expert system. Based on created facts and pre-defined rules as input, the rule-based expert system is used in the third step to label regions as background, skull, gray/white matter, CSF and stroke. Experimental results have been conducted and have demonstrated the feasibility and accuracy of the proposed method.
机译:本文提出了一种自动分割和标记中风病灶的计算机断层扫描(CT)头部图像的方法。该方法包括三个步骤。第一步是自动确定头部对称轴,并在必要时手动改善结果。对称轴的计算基于力矩。在第二步中,使用种子区域增长(SRG)算法将输入图像分割为多个具有均匀亮度的区域。这些区域的特征(例如亮度,面积,邻域和相对于对称轴的相对位置)用于为基于规则的专家系统创建事实。基于创建的事实和预定义的规则作为输入,第三步使用基于规则的专家系统将区域标记为背景,头骨,灰/白质,CSF和中风。实验结果表明,该方法具有可行性和准确性。

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