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Spatio-Temporal Modelling of First-Pass Perfusion Cardiovascular MRI

机译:首次灌注心血管MRI的时空建模

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Myocardial perfusion MRI provides valuable insight into how coronary artery and microvascular diseases affect myocardial tissue. Stenosis in a coronary vessel leads to reduced maximum blood flow (MBF), but collaterals may secure the blood supply of the myocardium but with altered tracer kinetics. To date, quantitative analysis of myocardial perfusion MRI has only been performed on a local level, largely ignoring the contextual information inherent in different myocardial segments. This paper proposes a Hierarchical Bayesian Model (HBM) to quantify the dependencies between local kinetic systems for perfusion quantification. In the proposed framework, all local systems are modelled simultaneously along with their dependencies, thus allowing more robust context-driven estimation of local kinetics. Detailed validation on both simulated and patient data is provided.
机译:心肌灌注MRI可提供有关冠状动脉和微血管疾病如何影响心肌组织的宝贵见解。冠状动脉狭窄导致最大血流量(MBF)降低,但侧支可以确保心肌的血液供应,但示踪动力学改变。迄今为止,心肌灌注MRI的定量分析仅在局部进行,很大程度上忽略了不同心肌节段固有的背景信息。本文提出了一种分层贝叶斯模型(HBM)来量化局部动力学系统之间的依赖关系,以进行灌注量化。在提出的框架中,所有本地系统及其依赖关系都同时进行了建模,因此可以进行更强大的上下文驱动的本地动力学估计。提供了对模拟数据和患者数据的详细验证。

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