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Abnormalities detection in serial computed tomography brain images using multi-level segmentation approach

机译:使用多级分割方法的串行计算机断层扫描脑图像中的异常检测

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Segmentation, where pixels are categorized by tissue types, is essential in medical image processing. This paper proposes a multi-level Fuzzy C-Means method to extract an intracranial from its background and skull. Then, a two-level Otsu multi-thresholding method is applied to segment the intracranial structure into cerebrospinal fluid, brain matters and other homogenous regions. Based on symmetrical properties in the intracranial structures, the left-half and right-half segmented intracranial regions are quantitatively compared with respect to the intracranial midline. The segmented regions are found to be very useful in providing information regarding normal and abnormal structures in the intracranial because any asymmetry that is detected would indicate a high probability of abnormalities. Additionally, pixel intensity information such as standard deviation and the maximum value of the pixels of the segmented regions are used to distinguish abnormalities such as bleeding and calcification from normal cases. This experimental work uses a medical image database consisting of 519 normal and 201 abnormal serial computed tomography (CT) brain images from 31 patients. The proposed multi-level segmentation approach proved to effectively isolate important homogenous regions in CT brain images. The extracted features of the regions would provide a strong basis for the application of content-based medical image retrieval (CMBIR).
机译:根据医学类型对像素进行分类的分割是必不可少的。本文提出了一种多级模糊C-均值方法,从背景和颅骨中提取颅内。然后,采用两级Otsu多阈值法将颅内结构分割为脑脊液,脑部物质和其他同质区域。基于颅内结构的对称特性,相对于颅内中线定量比较左半段和右半段颅内区域。发现分段的区域在提供关于颅内的正常和异常结构的信息方面非常有用,因为检测到的任何不对称性都将表明异常的可能性很高。另外,像素强度信息(例如,标准偏差和分割区域的像素的最大值)用于将异常(例如出血和钙化)与正常情况区分开。这项实验工作使用了医学图像数据库,该数据库由来自31位患者的519幅正常和201幅异常计算机断层扫描(CT)脑图像组成。所提出的多级分割方法证明可以有效地隔离CT脑图像中的重要同质区域。提取的区域特征将为基于内容的医学图像检索(CMBIR)的应用提供强大的基础。

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