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Automated segmentation of MS lesions in FLAIR, DIR and T2-w MR images via an information theoretic approach

机译:通过信息理论方法自动分割FLAIR,DIR和T2-w MR图像中的MS病变

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Magnetic Resonance Imaging (MRI) is a vital tool in the diagnosis and characterization of multiple sclerosis (MS). MS lesions can be imaged with relatively high contrast using either Fluid Attenuated Inversion Recovery (FLAIR) or Double Inversion Recovery (DIR). Automated segmentation and accurate tracking of MS lesions from MRI remains a challenging problem. Here, an information theoretic approach to cluster the voxels in pseudo-colorized multispectral MR data (FLAIR, DIR, T_2-weighted) is utilized to automatically segment MS lesions of various sizes and noise levels. The Improved Jump Method (IJM) clustering, assisted by edge suppression, is applied to the segmentation of white matter (WM), gray matter (GM), cerebrospinal fluid (CSF) and MS lesions, if present, into a subset of slices determined to be the best MS lesion candidates via Otsu's method. From this preliminary clustering, the modal data values for the tissues can be determined. A Euclidean distance is then used to estimate the fuzzy memberships of each brain voxel for all tissue types and their 50/50 partial volumes. From these estimates, binary discrete and fuzzy MS lesion masks are constructed. Validation is provided by using three synthetic MS lesions brains (mild, moderate and severe) with labeled ground truths. The MS lesions of mild, moderate and severe designations were detected with a sensitivity of 83.2%, and 88.5%, and 94.5%, and with the corresponding Dice similarity coefficient (DSC) of 0.7098, 0.8739, and 0.8266, respectively. The effect of MRI noise is also examined by simulated noise and the application of a bilateral filter in preprocessing.
机译:磁共振成像(MRI)是诊断和表征多发性硬化症(MS)的重要工具。使用液体衰减反转恢复(FLAIR)或双重反转恢复(DIR)可以以相对较高的对比度对MS病变进行成像。从MRI自动分割和准确跟踪MS病变仍然是一个具有挑战性的问题。在这里,信息理论方法将体素聚类在伪彩色多光谱MR数据(FLAIR,DIR,T_2加权)中,用于自动分割各种大小和噪声水平的MS病变。改进的跳跃法(IJM)聚类,在边缘抑制的辅助下,将白质(WM),灰质(GM),脑脊液(CSF)和MS病变(如果存在)分割为确定的切片子集通过大津的方法成为最佳的MS病变候选者。从该初步聚类中,可以确定组织的模态数据值。然后,使用欧几里德距离来估算所有组织类型及其50/50局部体积的每个脑素的模糊隶属度。根据这些估计,可以构建二进制离散和模糊MS病变蒙版。通过使用三个合成的MS病变大脑(轻度,中度和重度)并带有标记的事实来进行验证。检测到轻度,中度和重度指定的MS病变,敏感性分别为83.2%,88.5%和94.5%,相应的Dice相似系数(DSC)分别为0.7098、0.8739和0.8266。 MRI噪声的影响还可以通过模拟噪声以及双边滤波器在预处理中的应用来检查。

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