首页> 外文会议>Conference on Physiology and Function: Methods, Systems, and Applications Feb 16-18, 2003 San Diego, California, USA >Sub-band Denoising and Spline Curve Fitting Method for Hemodynamic Measurement in Perfusion MRI
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Sub-band Denoising and Spline Curve Fitting Method for Hemodynamic Measurement in Perfusion MRI

机译:子磁共振成像血流动力学测量的子带去噪和样条曲线拟合方法

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摘要

In clinical research, non-invasive MR perfusion imaging is capable of investigating brain pet-fusion phenomenon via various hemodynamic measurements, such as cerebral blood volume (CBV), cerebral blood flow (CBF), and mean transit time (MTT). These hemodynamic parameters are useful in diagnosing brain disorders such as stroke, infarction and periinfarct ischemia by further semi-quantitative analysis. However, the accuracy of quantitative analysis is usually affected by poor signal-to-noise ratio image quality. In this paper, we propose a hemodynamic measurement method based upon sub-band denoising and spline curve fitting processes to improve image quality for better hemodynamic quantitative analysis results. Ten sets of perfiision MRI data and corresponding PET images were used to validate the performance. For quantitative comparison, we evaluate gray/white matter CBF ratio. As a result, the hemodynamic semi-quantitative analysis result of mean gray to white matter CBF ratio is 2.10+-0.34. The evaluated ratio of brain tissues in perfiision MRI is comparable to PET technique in less than 1-% difference in average. Furthermore, the method features excellent noise reduction and boundary preserving in image processing, and short hemodynamic measurement time.
机译:在临床研究中,无创MR灌注成像能够通过各种血液动力学测量来研究脑部宠物融合现象,例如脑血容量(CBV),脑血流量(CBF)和平均通过时间(MTT)。通过进一步的半定量分析,这些血液动力学参数可用于诊断脑部疾病,例如中风,梗塞和梗塞周围缺血。但是,定量分析的准确性通常受信噪比图像质量差的影响。在本文中,我们提出一种基于子带去噪和样条曲线拟合过程的血液动力学测量方法,以改善图像质量,以获得更好的血液动力学定量分析结果。使用十组完善的MRI数据和相应的PET图像来验证性能。为了进行定量比较,我们评估了灰色/白色物质的CBF比。结果,平均灰白物质CBF比的血流动力学半定量分析结果为2.10 + -0.34。 MRI评估的脑组织比率与PET技术相当,平均差异不到1%。此外,该方法在图像处理中具有出色的降噪和边界保留功能,并且血液动力学测量时间短。

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