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Automatic Determination of the Fetal Cardiac Cycle in Ultrasound Using Spatio-Temporal Neural Networks

机译:时空神经网络自动确定超声胎儿心动周期

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The characterization of the fetal cardiac cycle is an important determination of fetal health and stress. The anomalous appearance of different anatomical structures during different phases of the heart cycle is a key indicator of fetal congenital hearth disease. However, locating the fetal heart using ultrasound is challenging, as the heart is small and indistinct. In this paper, we present a viewpoint agnostic solution that automatically characterizes the cardiac cycle in clinical ultrasound scans of the fetal heart. When estimating the state of the cardiac cycle, our model achieves a mean-squared error of 0.177 between the ground truth cardiac cycle and our prediction. We also show that our network is able to localize the heart, despite the lack of labels indicating the location of the heart in the training process.
机译:胎儿心动周期的特征是胎儿健康和压力的重要决定因素。在心动周期的不同阶段,不同解剖结构的异常出现是胎儿先天性心脏病的关键指标。但是,由于心脏小且不清晰,因此使用超声定位胎儿心脏具有挑战性。在本文中,我们提出了一种视点不可知的解决方案,该解决方案可自动表征胎儿心脏的临床超声扫描中的心动周期。当估算心动周期的状态时,我们的模型在地面真实心动周期和我们的预测之间达到0.177的均方误差。我们还表明,尽管缺少在训练过程中指示心脏位置的标签,但我们的网络仍能够对心脏进行定位。

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