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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >Real-Time Automatic Ejection Fraction and Foreshortening Detection Using Deep Learning
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Real-Time Automatic Ejection Fraction and Foreshortening Detection Using Deep Learning

机译:使用深度学习的实时自动射出分数和透视缩短检测

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Volume and ejection fraction (EF) measurements of the left ventricle (LV) in 2-D echocardiography are associated with a high uncertainty not only due to interobserver variability of the manual measurement, but also due to ultrasound acquisition errors such as apical foreshortening. In this work, a real-time and fully automated EF measurement and foreshortening detection method is proposed. The method uses several deep learning components, such as view classification, cardiac cycle timing, segmentation and landmark extraction, to measure the amount of foreshortening, LV volume, and EF. A data set of 500 patients from an outpatient clinic was used to train the deep neural networks, while a separate data set of 100 patients from another clinic was used for evaluation, where LV volume and EF were measured by an expert using clinical protocols and software. A quantitative analysis using 3-D ultrasound showed that EF is considerably affected by apical foreshortening, and that the proposed method can detect and quantify the amount of apical foreshortening. The bias and standard deviation of the automatic EF measurements were ?3.6 ± 8.1, while the mean absolute difference was measured at 7.2 which are all within the interobserver variability and comparable with related studies. The proposed real-time pipeline allows for a continuous acquisition and measurement workflow without user interaction, and has the potential to significantly reduce the time spent on the analysis and measurement error due to foreshortening, while providing quantitative volume measurements in the everyday echo lab.
机译:二维超声心动图中左心室 (LV) 的容积和射血分数 (EF) 测量与高不确定性相关,这不仅是由于手动测量的观察者间变异性,还由于超声采集误差(如心尖透视缩短)。本文提出了一种实时、全自动的EF测量和透视缩短检测方法。该方法使用多个深度学习组件,例如视图分类、心动周期计时、分割和标志提取,来测量透视缩短量、左心室容积和 EF。来自门诊的 500 名患者的数据集用于训练深度神经网络,而来自另一家诊所的 100 名患者的单独数据集用于评估,其中左心室体积和 EF 由专家使用临床方案和软件进行测量。使用三维超声进行定量分析表明,EF受到心尖前缩的影响较大,并且所提方法可以检测和量化心尖前缩的量。自动EF测量的偏差和标准偏差为-3.6±8.1%,而平均绝对差为7.2%,均在观察者间变异性范围内,与相关研究相当。所提出的实时管道允许在没有用户交互的情况下进行连续的采集和测量工作流程,并有可能显着减少由于透视缩短而花费在分析和测量误差上的时间,同时在日常回波实验室中提供定量体积测量。

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