首页> 外文期刊>Magnetic resonance in medicine: official journal of the Society of Magnetic Resonance in Medicine >Classification of spatiotemporal hemodynamics from brain perfusion MR images using expectation-maximization estimation with finite mixture of multivariate gaussian distributions.
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Classification of spatiotemporal hemodynamics from brain perfusion MR images using expectation-maximization estimation with finite mixture of multivariate gaussian distributions.

机译:使用多变量高斯分布的有限混合,使用期望最大化估计从脑灌注MR图像分类时空血流动力学。

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摘要

The ability to cluster different perfusion compartments in the brain is critical for analyzing brain perfusion. This study presents a method based on a mixture of multivariate Gaussians (MoMG) and the expectation-maximization (EM) algorithm to dissect various perfusion compartments from dynamic susceptibility contrast (DSC) MR images so that each compartment comprises pixels of similar signal-time curves. This EM-based method provides an objective way to 1) delineate an area to serve as the in-plane arterial input function (AIF) of the feeding artery for adjacent tissues to better quantify the relative cerebral blood volume (rCBV), relative cerebral blood flow (rCBF), and mean transit time (MTT); 2) demarcate regions with abnormal perfusion derangement to facilitate diagnosis; and 3) obtain parametric maps with supplementary information, such as temporal scenarios and recirculation of contrast agent. Results from normal subjects show that perfusion cascade manifests (in order of appearance) the arteries, gray matter (GM), white matter (WM), veins and sinuses, and choroid plexus mixed with cerebrospinal fluid (CSF). The averaged rCBV, rCBF, and MTT ratios between GM and WM are in good agreement with those in the literature. Results from a patient with cerebral arteriovenous malformation (CAVM) showed distinct spatiotemporal characteristics between perfusion patterns, which allowed differentiation between pathological and nonpathological areas.
机译:在大脑中聚集不同的灌注腔的能力对于分析脑灌注至关重要。这项研究提出了一种基于多元高斯(MoMG)和期望最大化(EM)算法混合的方法,以从动态磁化率对比(DSC)MR图像中分割出各种灌注隔室,从而使每个隔室包含具有相似信号时间曲线的像素。这种基于EM的方法提供了一种客观的方法,即:1)划定一个区域,以用作邻近组织的供血动脉的面内动脉输入功能(AIF),以更好地量化相对脑血容量(rCBV),相对脑血流量(rCBF)和平均通过时间(MTT); 2)划定灌注异常异常的区域,以利于诊断; 3)获得带有补充信息的参数图,例如时间场景和造影剂的再循环。正常受试者的结果显示,灌注级联表现为(按照出现的顺序)动脉,灰质(GM),白质(WM),静脉和鼻窦以及脉络丛与脑脊液(CSF)混合。 GM和WM之间的平均rCBV,rCBF和MTT比率与文献中的一致。脑动静脉畸形(CAVM)患者的结果显示灌注模式之间存在明显的时空特征,从而可以区分病理区域和非病理区域。

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