论文标题

灌注成像:数据同化方法

Perfusion Imaging: A Data Assimilation Approach

论文作者

Liu, Peirong, Lee, Yueh Z., Aylward, Stephen R., Niethammer, Marc

论文摘要

灌注成像(PI)用于评估中风和脑肿瘤。基于磁共振成像(MRI)或计算机断层扫描(CT)的常用PI方法测量造影剂穿过血管并进入组织的对比剂的影响。也存在基于内腔不一致运动的对比反应的免费方法,例如,迄今为止尚未在临床上常规使用。这些方法依赖于对动脉输入函数(AIF)估算以大致模型组织灌注,忽略空间依赖性以及可靠地估算AIF的模型,这也不是无处不在,导致了标准化灌注措施的困难。因此,在这项工作中,我们提出了一种数据辅助方法(钢琴),该方法估算了对流扩散模型的速度和扩散场,该模型最能解释对比度动力学。钢琴说明了空间依赖性,并且不需要估计AIF,也不需要依赖于特定的对比剂推注。具体而言,我们提出了一个方便的估计问题参数化,数值估计方法并广泛评估钢琴。我们证明钢琴可以成功地解决速度和扩散场的歧义,并为评估中风的敏感措施,与常规的灌注度量相比。

Perfusion imaging (PI) is clinically used to assess strokes and brain tumors. Commonly used PI approaches based on magnetic resonance imaging (MRI) or computed tomography (CT) measure the effect of a contrast agent moving through blood vessels and into tissue. Contrast-agent free approaches, for example, based on intravoxel incoherent motion, also exist, but are so far not routinely used clinically. These methods rely on estimating on the arterial input function (AIF) to approximately model tissue perfusion, neglecting spatial dependencies, and reliably estimating the AIF is also non-trivial, leading to difficulties with standardizing perfusion measures. In this work we therefore propose a data-assimilation approach (PIANO) which estimates the velocity and diffusion fields of an advection-diffusion model that best explains the contrast dynamics. PIANO accounts for spatial dependencies and neither requires estimating the AIF nor relies on a particular contrast agent bolus shape. Specifically, we propose a convenient parameterization of the estimation problem, a numerical estimation approach, and extensively evaluate PIANO. We demonstrate that PIANO can successfully resolve velocity and diffusion field ambiguities and results in sensitive measures for the assessment of stroke, comparing favorably to conventional measures of perfusion.

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