Boosting Cardiac Color Doppler Frame Rates with Deep Learning.

Julia Puig, Denis Friboulet, Hang Jung Ling, Francois Varray, Michael Mougharbel, Jonathan Poree, Jean Provost, Damien Garcia, Fabien Millioz
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Abstract

Color Doppler echocardiography enables visualization of blood flow within the heart. However, the limited frame rate impedes the quantitative assessment of blood velocity throughout the cardiac cycle, thereby compromising a comprehensive analysis of ventricular filling. Concurrently, deep learning is demonstrating promising outcomes in post-processing of echocardiographic data for various applications. This work explores the use of deep learning models for intracardiac Doppler velocity estimation from a reduced number of filtered I/Q signals. We used a supervised learning approach by simulating patient-based cardiac color Doppler acquisitions and proposed data augmentation strategies to enlarge the training dataset. We implemented architectures based on convolutional neural networks. In particular, we focused on comparing the U-Net model and the recent ConvNeXt models, alongside assessing real-valued versus complex-valued representations. We found that both models outperformed the state-of-the-art autocorrelator method, effectively mitigating aliasing and noise. We did not observe significant differences between the use of real and complex data. Finally, we validated the models on in vitro and in vivo experiments. All models produced quantitatively comparable results to the baseline and were more robust to noise. ConvNeXt emerged as the sole model to achieve high-quality results on in vivo aliased samples. These results demonstrate the interest of supervised deep learning methods for Doppler velocity estimation from a reduced number of acquisitions.

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利用深度学习提高心脏彩色多普勒帧速率。
彩色多普勒超声心动图可显示心脏内的血流情况。然而,有限的帧频妨碍了对整个心动周期内血液流速的定量评估,从而影响了对心室充盈的全面分析。与此同时,深度学习在超声心动图数据的后处理方面也取得了可喜的成果。这项研究探索了深度学习模型在心内多普勒速度估算中的应用,该模型来自数量较少的滤波 I/Q 信号。我们通过模拟基于患者的心脏彩色多普勒采集使用了监督学习方法,并提出了扩大训练数据集的数据增强策略。我们实施了基于卷积神经网络的架构。特别是,我们重点比较了 U-Net 模型和最新的 ConvNeXt 模型,同时评估了实值表示法和复值表示法。我们发现,这两种模型的性能都优于最先进的自相关器方法,能有效减少混叠和噪声。我们没有观察到使用真实数据和复杂数据之间的明显差异。最后,我们在体外和体内实验中验证了这些模型。所有模型都得出了与基线相当的定量结果,而且对噪声的抗干扰能力更强。ConvNeXt 是唯一能在体内混叠样本上获得高质量结果的模型。这些结果表明,监督深度学习方法对通过减少采集次数来估计多普勒速度很有帮助。
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来源期刊
CiteScore
7.70
自引率
16.70%
发文量
583
审稿时长
4.5 months
期刊介绍: IEEE Transactions on Ultrasonics, Ferroelectrics and Frequency Control includes the theory, technology, materials, and applications relating to: (1) the generation, transmission, and detection of ultrasonic waves and related phenomena; (2) medical ultrasound, including hyperthermia, bioeffects, tissue characterization and imaging; (3) ferroelectric, piezoelectric, and piezomagnetic materials, including crystals, polycrystalline solids, films, polymers, and composites; (4) frequency control, timing and time distribution, including crystal oscillators and other means of classical frequency control, and atomic, molecular and laser frequency control standards. Areas of interest range from fundamental studies to the design and/or applications of devices and systems.
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