利用独立分量分析从异质组织信号中去除斑点

Tadashi Yamaguchi, Tomoyuki Iwashina, N. Kamiyama, Jonathan Mamou, H. Hachiya
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引用次数: 0

摘要

为了定量诊断纤维化,从现有的临床超声诊断仪器获得的回波数据中提取纤维结构和抑制斑点的技术将是非常有价值的。为了满足这一需求,我们提出应用独立分量分析(ICA)将临床组织纤维结构返回的信号与散斑信号分离。为了使用ICA和去除斑点,从正常组织模拟体中获取数据来表征斑点,并用于纠正临床回波信号数据中的斑点。结果表明,散斑信号与纤维组织回波信号分离效果良好。然而,结果表明,ICA算法正确成像纤维组织结构的能力在很大程度上取决于临床和组织模拟图像中的斑点是否具有相同的性质。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Speckle removal from heterogeneous-tissue signals using independent component analysis
In order to diagnose fibrosis quantitatively, a technique to extract fiber structure and suppress speckle from the echo data acquired using available clinical ultrasonic diagnostic instruments would be very valuable. To meet this need, we propose to apply independent component analysis (ICA) to separate the signals returning from clinical tissue fiber structures from the speckle signals. To use ICA and to remove speckle, data acquired from a normal tissue-mimicking phantom are acquired to characterize speckle and used to correct for speckle in clinical echo-signal data. Results showed satisfactory separation of speckle signals and fiber-tissue echo signals. However, results indicated that the ability of the ICA algorithm to correctly image fiber tissue structures depended greatly on whether the speckle in the clinical and tissue-mimicking images had same properties.
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