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Automatic Myocardial Strain Imaging in Echocardiography Using Deep Learning

机译:使用深度学习的超声心动图自动心肌应变成像

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Recent studies in the field of deep learning suggest that motion estimation can be treated as a learnable problem. In this paper we propose a pipeline for functional imaging in echocardiography consisting of four central components, (ⅰ) classification of cardiac view, (ⅱ) semantic partitioning of the left ventricle (LV) myocardium, (ⅲ) regional motion estimates and (ⅳ) fusion of measurements. A U-Net type of convolutional neural network (CNN) was developed to classify muscle tissue, and partitioned into a semantic measurement kernel based on LV length and ventricular orientation. Dense tissue motion was predicted using stacked U-Net architectures with image warping of intermediate flow, designed to tackle variable displacements. Training was performed on a mixture of real and synthetic data. The resulting segmentation and motion estimates was fused in a Kalman filter and used as basis for measuring global longitudinal strain. For reference, 2D ultrasound images from 21 subjects were acquired using a GE Vivid system. Data weis analyzed by two specialists using a semi-automatic tool for longitudinal function estimates in a commercial system, and further compared to output of the proposed method. Qualitative assessment showed comparable deformation trends as the clinical analysis software. The average deviation for the global longitudinal strain was (-0.6±1.6)% for apical four-chamber view. The system was implemented with Tensorflow, and working in an end-to-end fashion without any ad-hoc tuning. Using a modern graphics processing unit, the average inference time is estimated to (115 ± 3) ms per frame.
机译:深度学习领域的最新研究表明,运动估计可以被视为一个可学习的问题。在本文中,我们提出了超声心动图功能成像的管线,该管线包括四个主要组成部分:(ⅰ)心脏视图分类,(ⅱ)左心室(LV)心肌的语义分区,(ⅲ)区域运动估计和(ⅳ)融合测量。开发了U-Net类型的卷积神经网络(CNN)来对肌肉组织进行分类,并根据LV长度和心室方向将其划分为语义测量核。使用带有中间流图像变形的堆叠式U-Net体系结构预测了密集的组织运动,该结构旨在解决可变位移。对真实和综合数据进行了混合训练。所得的分割和运动估计值在卡尔曼滤波器中融合在一起,并用作测量整体纵向应变的基础。作为参考,使用GE Vivid系统采集了21位受试者的2D超声图像。我们由两名专家使用半自动工具对数据进行了分析,以在商业系统中进行纵向函数估计,并将其与所提出方法的输出进行了比较。定性评估显示了与临床分析软件相当的变形趋势。对于心尖四腔视图,整体纵向应变的平均偏差为(-0.6±1.6)%。该系统是使用Tensorflow实施的,并且可以在不进行任何临时调整的情况下以端到端的方式工作。使用现代图形处理单元,平均推断时间估计为每帧(115±3)ms。

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