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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >Evaluating Input Domain and Model Selection for Deep Network Ultrasound Beamforming
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Evaluating Input Domain and Model Selection for Deep Network Ultrasound Beamforming

机译:深网络超声波形成的评估输入域和模型选择

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摘要

Improving ultrasound B-mode image quality remains an important area of research. Recently, there has been increased interest in using deep neural networks (DNNs) to perform beamforming to improve image quality more efficiently. Several approaches have been proposed that use different representations of channel data for network processing, including a frequency-domain approach that we previously developed. We previously assumed that the frequency domain would be more robust to varying pulse shapes. However, frequency- and time-domain implementations have not been directly compared. In addition, because our approach operates on aperture domain data as an intermediate beamforming step, a discrepancy often exists between network performance and image quality on fully reconstructed images, making model selection challenging. Here, we perform a systematic comparison of frequency- and time-domain implementations. In addition, we propose a contrast-to-noise ratio (CNR)-based regularization to address previous challenges with model selection. Training channel data were generated from simulated anechoic cysts. Test channel data were generated from simulated anechoic cysts with and without varied pulse shapes, in addition to physical phantom and in vivo data. We demonstrate that simplified time-domain implementations are more robust than we previously assumed, especially when using phase preserving data representations. Specifically, 0.39- and 0.36-dB median improvements in in vivo CNR compared to DAS were achieved with frequency- and time-domain implementations, respectively. We also demonstrate that CNR regularization improves the correlation between training validation loss and simulated CNR by 0.83 and between simulated and in vivo CNR by 0.35 compared to DNNs trained without CNR regularization.
机译:改善超声波B模式图像质量仍然是一个重要的研究领域。最近,利用深神经网络(DNN)的利益增加了更有效地改善图像质量的兴趣。已经提出了几种方法,该方法使用用于网络处理的网络处理的不同表示,包括我们之前开发的频域方法。我们之前假设频域对不同的脉冲形状更加坚固。但是,频率和时域实现尚未直接比较。另外,由于我们的方法在孔域数据上操作作为中间波束成形步骤,因此在完全重建图像上的网络性能和图像质量之间通常存在差异,使模型选择具有挑战性。在这里,我们执行频率和时域实现的系统性比较。此外,我们提出了对比噪声比(CNR)的正规化,以解决模型选择以前的挑战。培训渠道数据是从模拟的化学型囊肿产生的。除了物理幻影和体内数据之外,还从模拟的脉冲形状生成了测试通道数据。我们证明简化的时域实现比我们预先假定的更强大,尤其是在使用相位保留数据表示时。具体而言,与DAS相比,分别使用频率和时域实施实现了与DAS的0.39-和0.36dB的中值改善。我们还证明CNR正规化通过0.83,与没有CNR规则的DNN培训相比,CNR正则化提高了训练验证损失和模拟CNR之间的相关性和模拟和体内CNR之间的相关性。

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