Ultrasound perfusion signal processing for tumor detection

MinWoo Kim, C. Abbey, M. Insana
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Abstract

Enhanced blood perfusion in a tissue mass is an indication of neo-vascularity and a sign of a potential malignancy. Ultrasonic pulsed-Doppler imaging is a preferred modality for noninvasive monitoring of blood flow. However, the weak blood echoes and disorganized slow flow make it difficult to detect perfusion using standard methods without the expense and risk of contrast enhancement. Our research measures the efficiency of conventional power-Doppler (PD) methods at discriminating flow states by comparing measurement performance to that of an ideal discriminator. ROC analysis applied to the experimental results shows that power Doppler methods are just 30-50 % efficient at perfusion flows less than 1ml/min, suggesting an opportunity to improve perfusion assessment through signal processing. A new perfusion estimator is proposed by extending the statistical discriminator approach. We show that 2-D perfusion color imaging may be enhanced using this approach.
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超声灌注信号处理用于肿瘤检测
组织肿块内血液灌注增强是新生血管形成的指示,也是潜在恶性肿瘤的征兆。超声脉冲多普勒成像是非侵入性血流监测的首选方式。然而,微弱的血液回声和无组织的缓慢血流使得使用标准方法检测灌注变得困难,而不需要增加费用和风险。我们的研究通过比较测量性能和理想鉴别器来测量传统功率多普勒(PD)方法在鉴别流态方面的效率。应用于实验结果的ROC分析表明,功率多普勒方法在灌注流量小于1ml/min时的效率仅为30- 50%,表明可以通过信号处理来改进灌注评估。通过对统计判别器方法的扩展,提出了一种新的灌注估计器。我们发现使用这种方法可以增强二维灌注彩色成像。
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