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One-Step Deep Learning Approach to Ultrasound Image Formation and Image Segmentation with a Fully Convolutional Neural Network

机译:全卷积神经网络超声图像形成和图像分割的一步深度学习方法

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Single plane wave imaging is well-suited to high frame rate imaging tasks (e.g., ultrasound based robotic tracking). However, suboptimal image quality is obtained when limited to a single plane wave transmission. To address this challenge, we propose to train deep neural networks (DNNs) as an alternative to delay-and-sum beamforming followed by segmentation. Our overall goal is to extract information directly from raw channel data prior to the application of time delays and to simultaneously generate both a segmentation map and an ultrasound B-mode image of anechoic cysts surrounded by tissue. A network trained with 17, 676 Field II simulations was tested with both simulated and experimental phantom data sets that were not included during training (9, 108 and 320 images, respectively). DNN results from simulated and phantom test sets produced similar dice similarity coefficients (DSC), contrast, tissue signal-to-noise ratios (SNR), and generalized contrast-to-noise ratios (GCNR). Similarity is reported as the mean ± standard deviation of these metrics for simulated and experimental test set results as follows: 0.92 ± 0.13 and 0.92 ± 0 03 DSC, respectively; -39 56 ± 6.41 dB and -35.56 ± 3.81 dB contrast, respectively; 3.78 ± 1.08 and 4.53 ± 1.23 SNR, respectively; and 1.00 ± 0.01 and 1.00 ± 0.01 GCNR, respectively. Thus, the DNNs successfully transferred feature representations learned from simulated data to experimental phantom data, highlighting the promise of this novel alternative to traditional ultrasound information extraction.
机译:单个平面波成像非常适合于高帧速率成像任务(例如,基于超声波的机器人跟踪)。然而,当限于单个平面波传输时获得次优图像质量。为了解决这一挑战,我们建议将深度神经网络(DNN)培训为替代延迟和总和波束形成,然后是分割。我们的总体目标是在施加时间延迟之前直接从原始信道数据中提取信息,并同时生成由组织包围的AneChoic囊肿的分割图和超声波B模式图像。用17,676个字段II模拟接受培训的网络,其两者都是在训练期间(分别在9,108和320个图像)期间包含的模拟和实验幻像数据集。模拟和幻像测试组的DNN结果产生了类似的骰子相似度系数(DSC),对比度,组织信噪比(SNR)和广义对比度噪声比(GCNR)。相似性被报告为模拟和实验测试组的这些度量的平均值±标准偏差,如下:0.92±0.13和0.92±0 03 DSC; -39 56±6.41 dB和-35.56±3.81 dB对比度; 3.78±1.08和4.53±1.23 SNR;分别为1.00±0.01和1.00±0.01 GCNR。因此,DNN成功地将从模拟数据学习到实验幻像数据的特征表示,突出了这种新颖替代传统超声信息提取的承诺。

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