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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >Estimation of End-Diastole in Cardiac Spectral Doppler Using Deep Learning
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Estimation of End-Diastole in Cardiac Spectral Doppler Using Deep Learning

机译:基于深度学习的心谱多普勒舒张末期估计

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Electrocardiogram (ECG) is often used together with a spectral Doppler ultrasound to separate heart cycles by determining the end-diastole locations. However, the ECG signal is not always recorded. In such cases, the cardiac cycles can be estimated manually from the ultrasound data retrospectively. We present a deep learning-based method for automatic detection of the end-diastoles in spectral Doppler spectrograms. The method uses a combination of a convolutional neural network (CNN) for extracting features and a recurrent neural network (RNN) for modeling temporal relations. In echocardiography, there are three Doppler spectrogram modalities, continuous wave, pulsed wave, and tissue velocity Doppler. Both the training and test data sets include all three modalities. The model was tested on 643 spectrograms coming from different hospitals than in the training data set. For the purposes described in this work, a valid end-diastole detection is defined as a prediction being closer than 60 ms to the reference value. We will refer to these as true detections. Similarly, a prediction farther away is defined as nonvalid or false detections. The method automatically rejects spectrograms where the detection of an end-diastole has low confidence. When setting the algorithm to reject 1.9, the method achieved 97.7 true detections with a mean error of 14 ms and had 2.5 false detections on the remaining spectrograms.
机译:心电图 (ECG) 通常与频谱多普勒超声一起使用,通过确定舒张末期位置来分离心脏周期。然而,心电图信号并不总是被记录下来。在这种情况下,可以回顾性地根据超声数据手动估计心动周期。我们提出了一种基于深度学习的方法,用于在频谱多普勒频谱图中自动检测舒张末期。该方法结合使用卷积神经网络 (CNN) 提取特征和递归神经网络 (RNN) 对时间关系进行建模。在超声心动图中,有三种多普勒频谱图模式,连续波、脉冲波和组织速度多普勒。训练数据集和测试数据集都包括所有三种模式。该模型在来自不同医院的 643 个频谱图上进行了测试,而不是在训练数据集中。出于本文所述的目的,有效的舒张末期检测被定义为接近参考值小于 60 毫秒的预测。我们将这些称为真正的检测。同样,距离较远的预测被定义为无效或错误的检测。该方法自动剔除舒张末期检测置信度低的频谱图。当将算法设置为拒绝1.9%时,该方法实现了97.7%的真实检测率,平均误差为14 ms,其余频谱图的误检测率为2.5%。

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