首页> 外文会议>IEEE International Symposium on Biomedical Imaging >A MULTIPLICATIVE MODEL TO IMPROVE MICROVASCULAR FLOW EVALUATION IN THE CONTEXT OF DYNAMIC CONTRAST-ENHANCED ULTRASOUND (DCE-US)
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A MULTIPLICATIVE MODEL TO IMPROVE MICROVASCULAR FLOW EVALUATION IN THE CONTEXT OF DYNAMIC CONTRAST-ENHANCED ULTRASOUND (DCE-US)

机译:一种繁殖模型,以改善动态对比增强超声背景下的微血管流量评价(DCE-US)

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Estimation of perfusion parameters from dynamic contrast-enhanced ultrasound (DCE-US) data relies on locally fitting mathematical models to the time-echo-power curves derived from a sequence. The least-squares method generally used to fit a parametric perfusion model to experimental data is optimal only under the hypothesis of an additive Gaussian noise. Due to the nature of the DCE-US signal, this hypothesis is disputable. A maximum likelihood estimator based on a multiplicative noise model is proposed and tested. Results on simulated data show improvements of the precision and accuracy of commonly estimated perfusion parameters. We also analyzed the perfusion of a rather homogeneous in vivo tissue, the renal cortex of an healthy mouse. The new method leads to more homogeneous parametric maps. These improvements should contribute to a more robust estimation of perfusion parameters and an improved resolution of DCE-US parametric images.
机译:来自动态对比度增强超声(DCE-US)数据的灌注参数的估计依赖于局部拟合数学模型到源自序列的时间回波功率曲线。通常用于将参数灌注模型适合实验数据的最小二乘法仅在添加高斯高斯噪声的假设下最佳。由于DCE-US信号的性质,这一假设是争议的。提出并测试了基于乘法噪声模型的最大似然估计。结果模拟数据显示了普通估计灌注参数精度和准确性的提高。我们还分析了体内组织中相当均匀的灌注,是健康小鼠的肾皮层。新方法导致更均匀的参数映射。这些改进应该有助于更强大的灌注参数估计和DCE-US参数图像的改进分辨率。

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