Curve Fitting Criteria to Determine Arterial Input Function for MR Perfusion Analysis

A. Huang, Chung-wei Lee, Hon-Man Liu
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引用次数: 2

Abstract

The purpose of this study is to develop a fully automatic algorithm for determining a “proper” arterial input function (AIF) that is critical in the deconvolution approach for cerebral perfusion quantification. We proposed using a fast gamma variate model (GVM) fitting strategy to scout the whole brain dynamic susceptibility contrast magnetic resonance imaging (DSC-MRI) dataset for AIF candidates. Goodness-of-fit criteria such as signal to noise ratios and GVM peak shapes were first used to screen out voxels of noisy signals and non-AIF-shaped concentration-time curves respectively. Last, qualified AIF candidates were ranked by bolus peak arrival time and peak width. Our method was tested by 10 DSC-MRI datasets: 5 adults (24-52 years of age) with stenosis or occlusion, and 5 youths (9-18 years of age) with moyamoya disease. The preliminary results indicated that the proposed algorithm was able to detect AIFs robustly and efficiently under 1 minute.
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曲线拟合标准确定动脉输入函数的MR灌注分析
本研究的目的是开发一种全自动算法来确定“适当的”动脉输入功能(AIF),这在脑灌注量化的反卷积方法中至关重要。我们提出了一种快速伽马变量模型(GVM)拟合策略来寻找AIF候选人的全脑动态敏感性对比磁共振成像(DSC-MRI)数据集。首先使用信噪比和GVM峰形等拟合优度准则分别筛选噪声信号和非aif形浓度-时间曲线的体素。最后,根据峰值到达时间和峰值宽度对候选候选AIF进行排序。我们的方法通过10个DSC-MRI数据集进行了测试:5个成人(24-52岁)患有狭窄或闭塞,5个青少年(9-18岁)患有烟雾病。初步结果表明,该算法能够在1分钟内鲁棒有效地检测出aif。
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