Multi-level segmentation method for serial computed tomography brain images

W. M. Diyana, W. Zaki, M. Faizal, A. Fauzi, R. Besar, W. Munirah, Wan Siti Halimatul Munirah Wan Ahmad
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引用次数: 5

Abstract

This paper presents an automated computed tomography brain segmentation approach used to segment intracranial into brain matters and cerebrospinal fluid in order to detect any asymmetry present. Intracranial midline is used as reference axial where left and right segmented regions are subjectively compared. Two-level Otsu multi-thresholding method has been developed and applied to 213 abnormal cases of serial computed tomography brain images of thirty one patients. Prior to that, multilevel Fuzzy C-Means is used to extract the intracranial from background and skull. The segmented regions found to be very useful in providing information regarding normal and abnormal structures in the intracranial where any asymmetry detected would indicate high probability of abnormalities. This approach proved to effectively isolate important homogenous regions of computed tomography brain images from which extracted features would provide a strong basis in the application of content-based medical image retrieval.
串行计算机断层扫描脑图像的多级分割方法
本文提出了一种自动计算机断层扫描脑分割方法,用于分割颅内脑物质和脑脊液,以检测任何不对称的存在。以颅内中线为参考轴,主观上比较左右分割区域。建立了两级Otsu多阈值法,并将其应用于31例连续ct脑图像的213例异常。在此之前,使用多级模糊C-Means从背景和颅骨中提取颅内。发现分割区域在提供颅内正常和异常结构的信息方面非常有用,任何不对称的检测都表明异常的可能性很高。事实证明,该方法可以有效地分离出计算机断层扫描大脑图像的重要同质区域,从中提取的特征将为基于内容的医学图像检索的应用提供坚实的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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