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首页> 外文期刊>NeuroImage >A control point interpolation method for the non-parametric quantification of cerebral haemodynamics from dynamic susceptibility contrast MRI
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A control point interpolation method for the non-parametric quantification of cerebral haemodynamics from dynamic susceptibility contrast MRI

机译:动态敏感性对比MRI对脑血流动力学进行非参数量化的控制点插值方法

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摘要

DSC-MRI analysis is based on tracer kinetic theory and typically involves the deconvolution of the MRI signal in tissue with an arterial input function (AIF), which is an ill-posed inverse problem. The current standard singular value decomposition (SVD) method typically underestimates perfusion and introduces non-physiological oscillations in the resulting residue function. An alternative vascular model (VM) based approach permits only a restricted family of shapes for the residue function, which might not be appropriate in pathologies like stroke. In this work a novel deconvolution algorithm is presented that can estimate both perfusion and residue function shape accurately without requiring the latter to belong to a specific class of functional shapes. A control point interpolation (CPI) method is proposed that represents the residue function by a number of control points (CPs), each having two degrees of freedom (in amplitude and time). A complete residue function shape is then generated from the CPs using a cubic spline interpolation. The CPI method is shown in simulation to be able to estimate cerebral blood flow (CBF) with greater accuracy giving a regression coefficient between true and estimated CBF of 0.96 compared to 0.83 for VM and 0.71 for the circular SVD (oSVD) method. The CPI method was able to accurately estimate the residue function over a wide range of simulated conditions. The CPI method has also been demonstrated on clinical data where a marked difference was observed between the residue function of normally appearing brain parenchyma and infarcted tissue. The CPI method could serve as a viable means to examine the residue function shape under pathological variations.
机译:DSC-MRI分析基于示踪动力学理论,通常涉及具有动脉输入功能(AIF)的组织中MRI信号的反卷积,这是一个不适定的逆问题。当前的标准奇异值分解(SVD)方法通常会低估灌注并在所得残基函数中引入非生理振荡。另一种基于血管模型(VM)的方法仅允许残基功能受限的形状族,这在中风等病理学中可能不适合。在这项工作中,提出了一种新颖的反卷积算法,该算法可以准确地估计灌注和残差函数形状,而无需后者属于特定类别的功能形状。提出了一种控制点插值(CPI)方法,该方法通过多个控制点(CP)表示残差函数,每个控制点都具有两个自由度(幅度和时间)。然后,使用三次样条插值从CP生成完整的残差函数形状。仿真中显示的CPI方法能够更准确地估计脑血​​流量(CBF),与真实值和估计CBF之间的回归系数为VM的0.83和圆形SVD(oSVD)方法的0.71。 CPI方法能够在各种模拟条件下准确估计残差函数。 CPI方法也已在临床数据上得到证实,其中正常出现的脑实质和梗死组织的残留功能之间存在明显差异。 CPI方法可作为检查病理变化下残基功能形状的可行方法。

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