Neural network for sonogram gap filling

Henrik Jensen Klebæk, J. Arendt, Lars Kai
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引用次数: 15

Abstract

In duplex imaging both an anatomical B-mode image and a sonogram are acquired, and the time for data acquisition is divided between the two images. This gives problems when rapid B-mode image display is needed, since there is not time for measuring the velocity data. Gaps then appear in the sonogram and in the audio signal, rendering the audio signal useless, thus making diagnosis difficult. The current goal for ultrasound scanners is to maintain a high refresh rate for the B-mode image and at the same time attain a high maximum velocity in the sonogram display. This precludes the intermixing of the B-mode and sonogram pulses, and time must be shared between the two. Gaps will appear frequently in the sonogram since, e.g., half the time is spent on B-mode acquisition. The information in the gaps can be filled from the available information through interpolation. One possibility is to use a neural network for predicting mean frequency of the velocity signal and its variance. The neural network then predicts the evolution of the mean and variance in the gaps, and the sonogram and audio signal are reconstructed from these. The technique is applied on in-vivo data from the carotid artery. The neural network is trained on part of the data and the network is pruned by the optimal brain damage procedure in order to reduce the number of parameters in the network, and thereby reduce the risk of overfitting. The neural predictor is compared to using a linear filter for the mean and variance time series, and is shown to yield better results, i.e., the variances of the predictions are lower. The ability of the neural predictor to reconstruct both the sonogram and the audio signal, when only 50% of the time is used for velocity data acquisition, is demonstrated for the in-vivo data.
超声图间隙填充的神经网络
在双工成像中,同时获得解剖b模式图像和超声图,数据采集的时间在两个图像之间分配。当需要快速b模式图像显示时,由于没有时间测量速度数据,这就产生了问题。然后在超声图和音频信号中出现间隙,使音频信号无效,从而使诊断变得困难。超声扫描仪当前的目标是保持b模式图像的高刷新率,同时在超声图显示中获得较高的最大速度。这就排除了b模和超声脉冲的混合,并且时间必须在两者之间共享。在超声图中会经常出现间隙,因为,例如,一半的时间花在b模式采集上。空白中的信息可以通过插值从可用信息中填充。一种可能性是使用神经网络来预测速度信号的平均频率及其方差。然后,神经网络预测间隙中的均值和方差的演变,并以此重建声图和音频信号。该技术应用于颈动脉的活体数据。神经网络对部分数据进行训练,并通过最优脑损伤程序对网络进行修剪,以减少网络中参数的数量,从而降低过拟合的风险。神经预测器与使用线性滤波器对均值和方差时间序列进行比较,并显示出更好的结果,即预测的方差更低。当只有50%的时间用于速度数据采集时,神经预测器重建超声图和音频信号的能力被证明用于体内数据。
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