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A Novel, Adaptive Hierarchical Clustering Approach for Independent Component Sorting for Block-wise ICA Filtering

机译:一种新的,自适应分层聚类方法,用于独立分量对块明智ICA滤波的分类

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Non-contrast ultrasound blood flow imaging is difficult at slow blood flow rates. Singular value decomposition (SVD) and independent component analysis (ICA) are useful for separating tissue, blood, and noise sources for Doppler filtering. In addition, it has been shown that applying SVD and ICA in a block-wise manner further improves source separation; noise within a small block is theoretically more stationary, and thus easier to separate. Yet, there is much discussion on how to select independent components; several methods have been introduced with some success. We present a novel, adaptive hierarchical clustering approach for selecting appropriate independent components for blood flow image filtering that utilizes Kurtosis and Normalized Cross Correlation. Components are clustered based on the Kurtosis and NCC of each component; an optimal number of clusters is chosen using the Silhouette Method. Appropriate clusters are selected based on the Autocorrelation Function of each cluster. Our method was tested on 1 mm/s and 5 mm/s flowrate phantoms containing a 0.6 mm vessel and resulted in average SNR and CNR increases of 6.2 dB and 3.7 dB, respectively, for 1 mm/s blood flow velocities. We demonstrate that our method improves tissue and noise suppression throughout the field of view while maintaining blood flow information.
机译:在慢血流速率下,非对比度超声血流成像难以困难。奇异值分解(SVD)和独立分量分析(ICA)可用于分离多普勒滤波的组织,血液和噪声源。此外,已经证明,以框架明智的方式应用SVD和ICA进一步改善源分离;小块内的噪声理论上是更静止的,因此更容易分开。然而,有很多关于如何选择独立组件的讨论;有几种方法取得了一些成功。我们提出了一种新颖的自适应分层聚类方法,用于选择用于血流图像滤波的适当独立组分,其利用Kurtosis和归一化交叉相关性。组分基于每个组分的Kurtosis和NCC聚类;选择使用轮廓方法选择最佳的簇数。根据每个群集的自相关函数来选择适当的群集。我们的方法在1mm / s和5mm / s的流量模型含有0.6mm容器上进行测试,并导致平均SNR和CNR分别增加6.2dB和3.7dB,血流流速为1mm / s的血流速度。我们证明我们的方法在保持血流信息的同时改善整个视野中的组织和噪声抑制。

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