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Identifying the arterial input function from dynamic contrast-enhanced magnetic resonance images using an apex seeking technique

机译:使用顶点搜索技术从动态对比度增强的磁共振图像中识别动脉输入功能

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In order to extract quantitative information from dynamic contrast-enhanced MR images (DCE-MRI) it is usually necessary to identify an arterial input function. This is not a trivial problem if there are no major vessels present in the field of view. Most existing techniques rely on operator intervention or use various curve parameters to identify suitable pixels but these are often specific to the anatomical region or the acquisition method used. They also require the signal from several pixels to be averaged in order to improve the signal to noise ratio, however this introduces errors due to partial volume effects. We have described previously how factor analysis can be used to automatically separate arterial and venous components from DCE-MRI studies of the brain but although that method works well for single slice images through the brain when the blood brain barrier technique is intact, it runs into problems for multi-slice images with more complex dynamics. This paper will describe a factor analysis method that is more robust in such situations and is relatively insensitive to the number of physiological components present in the data set. The technique is very similar to that used to identify spectral end-members from multispectral remote sensing images.
机译:为了从动态对比度增强的MR图像(DCE-MRI)中提取定量信息,通常需要识别动脉输入功能。如果在视野内没有主要血管存在,这不是小问题。大多数现有技术依赖于操作员干预或使用各种曲线参数来识别合适的像素,但是这些通常特定于所使用的解剖区域或采集方法。它们还要求对来自几个像素的信号进行平均以提高信噪比,但是由于部分体积效应,这会引入误差。前面我们已经描述了如何使用因子分析从大脑的DCE-MRI研究中自动分离出动脉和静脉成分,但是当血脑屏障技术完好无损时,该方法对于通过大脑的单片图像效果很好,但是这种方法已经应用到具有更复杂动态特性的多层图像的问题。本文将介绍一种因子分析方法,该方法在这种情况下更为可靠,并且对数据集中存在的生理成分的数量相对不敏感。该技术与用于从多光谱遥感图像中识别光谱末端成员的技术非常相似。

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