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Fetal Abdominal Standard Plane Localization through Representation Learning with Knowledge Transfer

机译:通过代表性学习与知识转移的胎儿腹部标准平面定位

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Acquisition of the fetal abdominal standard plane (FASP) is crucial for prenatal ultrasound diagnosis. However, it requires a thorough knowledge of human anatomy and substantial experience. In this paper, we propose an automatic method to localize the FASP from US images. Unlike the previous methods that consider simple low-level features such as Haar features, we exploited the deep convolutional neural network to automatically learn the latent representation. In addition, we adopted the novel knowledge transfer method to enhance the learning performance by making use of the knowledge obtained in other domain. Experimental results on 219 fetal abdomen videos showed that the classification accuracy of our method was above 90%, outperforming other methods by a significant margin.
机译:胎儿腹部标准平面(FASP)的采集对于产前超声诊断至关重要。但是,这需要对人体解剖学有全面的了解,并需要丰富的经验。在本文中,我们提出了一种自动方法来从美国图像中定位FASP。与之前考虑简单的低层特征(例如Haar特征)的方法不同,我们利用深度卷积神经网络自动学习潜在表示。此外,我们采用了新颖的知识转移方法,以利用在其他领域获得的知识来提高学习成绩。在219例胎儿腹部视频上的实验结果表明,我们的方法的分类准确率达到90%以上,明显优于其他方法。

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