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An Automated Technique for Statistical Characterization of Brain Tissues in Magnetic Resonance Imaging

机译:磁共振成像中脑组织统计特征的自动化技术

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摘要

A procedure for estimating the joint probability density function (pdf) of T_1, T_2 and proton spin density (P_D) for gray matter (GM), white matter (WM), and cerebrospinal fluid (CSF) in the brain is presented. The pdf's have numerous applications, including the study of tissue parameter variability in pathology and across populations. The procedure requires a multispectral, spin echo magnetic resonance imaging (MRI) data set of the brain. It consists of five automated steps: (ⅰ) preprocess the data to remove extracranial tissue using a sequence of image processing operators; (ⅱ) estimate T_1, T_2 and P_D by fitting the preprocessed data to an imaging equation; (ⅲ) perform a fuzzy c-means clustering on the same preprocessed data to obtain a spatial map representing the membership value of the three tissue classes at each pixel location; (ⅳ) reject estimates which are not from pure tissue or have poor fits in the parameter estimation, and classify the remaining estimates as either GM, WM or CSF; (ⅴ) compute statistics on the classified estimates to obtain a probability mass function and a Gaussian joint pdf of the tissue parameters for each tissue class. Some preliminary results are shown comparing computed pdf's of young, elderly and Alzheimer's subjects. Two brief examples applying the joint pdf's to pulse sequence optimization and generation of computational phantoms are also provided.
机译:提出了估算大脑中灰质(GM),白质(WM)和脑脊液(CSF)的T_1,T_2和质子自旋密度(P_D)的联合概率密度函数(pdf)的过程。 pdf有许多应用,包括研究病理学和整个人群中的组织参数变异性。该程序需要大脑的多光谱自旋回波磁共振成像(MRI)数据集。它由五个自动化步骤组成:(ⅰ)使用一系列图像处理操作员对数据进行预处理以去除颅外组织; (ⅱ)通过将预处理的数据拟合成成像方程来估计T_1,T_2和P_D; (ⅲ)对相同的预处理数据执行模糊c均值聚类,以获得表示每个像素位置上三个组织类别的隶属度值的空间图; (ⅳ)拒绝并非来自纯组织或参数估计不适合的估计,并将其余估计分类为GM,WM或CSF; (ⅴ)计算分类估计的统计数据,以获得每种组织类别的概率质量函数和组织参数的高斯联合pdf。显示了一些初步结果,比较了年轻人,老年人和阿尔茨海默氏病受试者的pdf计算值。还提供了将联合pdf应用于脉冲序列优化和计算体模生成的两个简短示例。

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