首页> 外文期刊>Journal of magnetic resonance imaging: JMRI >Automated perfusion-weighted MRI using localized arterial input functions.
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Automated perfusion-weighted MRI using localized arterial input functions.

机译:使用局部动脉输入功能的自动灌注加权MRI。

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摘要

PURPOSE: To investigate the utility of an automated perfusion-weighted MRI (PWI) method for estimating cerebral blood flow (CBF) based on localized arterial input functions (AIFs) as compared to the standard method of manual global AIF selection, which is prone to deconvolution errors due to the effects of delay and dispersion of the contrast bolus. MATERIALS AND METHODS: Analysis was performed on spin- and gradient-echo EPI images from 36 stroke patients. A local AIF algorithm created an AIF for every voxel in the brain by searching out voxels with the lowest delay and dispersion, and then interpolating and spatially smoothing them for continuity. A generalized linear model (GLM) for predicting tissue outcome, and MTT lesion volumes were used to quantify the performance of the localized AIF method in comparison with global methods using ipsilateral and contralateral AIFs. RESULTS: The algorithm found local AIFs in each case without error and generated a higher area under the receiver operating characteristic (ROC) curve compared to both global-AIF methods. Similarly, the local MTT lesion volumes had the least mean squared error (MSE). CONCLUSION: Automated CBF calculation using local AIFs is feasible and appears to produce more useful CBF maps.
机译:目的:研究与局部全脑输入功能(AIF)的标准方法相比,基于局部动脉输入功能(AIF)的自动灌注加权MRI(PWI)方法估计脑血流量(CBF)的实用性由于造影剂延迟和分散的影响而产生的去卷积误差。材料与方法:对来自36名卒中患者的自旋和梯度回波EPI图像进行了分析。本地AIF算法通过搜索具有最低延迟和离散度的体素,然后对它们进行插值和空间平滑以实现连续性,为大脑中的每个体素创建一个AIF。与使用同侧和对侧AIF的整体方法相比,用于预测组织结局的广义线性模型(GLM)和MTT病变体积用于量化局部AIF方法的性能。结果:与两种全局AIF方法相比,该算法在每种情况下均发现了本地AIF,并且没有错误,并且在接收器工作特性(ROC)曲线下生成了更大的区域。同样,局部MTT病变体积的均方误差(MSE)最小。结论:使用局部AIF进行自动CBF计算是可行的,并且似乎可以产生更多有用的CBF图。

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