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Segmentation of Aliasing Artefacts in Ultrasound Color Flow Imaging Using Convolutional Neural Networks

机译:卷积神经网络超声色流量成像中的锯齿艺术品分割

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Color flow imaging is a biomedical ultrasound modality used to visualize blood flow dynamics in the blood vessels, which are correlated with cardiovascular function and pathology. This is however done through a pulsed echo sensing mechanism and thus flow measurements can be corrupted by aliasing artefacts, hindering its application. While various methods have attempted to address these artefacts, there is still demand for a robust and flexible solution, particularly at the stage of identifying the aliased regions in the imaging view. In this paper, we investigate the application of convolutional neural networks to segment aliased regions in color flow images due to their strength in translation-invariant learning of complex features. Relevant ultrasound features including phase shifts, speckle images and optical flow were generated from ultrasound data obtained from anthropomorphic flow models. The investigated neural networks all showed strong performance in terms of precision, recall and intersection over union while revealing the important ultrasound features that improved detection. This study paves the way for sophisticated dealiasing algorithms in color flow imaging.
机译:颜色流动成像是用于可视化血管中的血流动力学的生物医学超声模型,其与心血管功能和病理学相关。然而,这通过脉冲回波传感机构完成,因此流动测量可以通过锯齿伪件损坏,阻碍其应用。虽然各种方法已经尝试解决这些人工制品,但仍需要稳健和灵活的解决方案,特别是在识别成像视图中识别锯齿区域的阶段。在本文中,我们调查卷积神经网络在复杂特征的翻译中的强度下的彩色流动图像中的锯齿地区的应用。从从拟人流动模型获得的超声数据产生包括相移,散斑图像和光学流的相关超声特征。调查的神经网络都在精确,召回和交叉口方面表现出强烈的性能,同时揭示了改进了检测的重要超声功能。这项研究为复杂的换换算法铺平了彩色流动成像的方法。

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