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Iterative Multi-domain Regularized Deep Learning for Anatomical Structure Detection and Segmentation from Ultrasound Images

机译:迭代多域正则深度学习用于超声图像的解剖结构检测和分割

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Accurate detection and segmentation of anatomical structures from ultrasound images are crucial for clinical diagnosis and bio-metric measurements. Although ultrasound imaging has been widely used with superiorities such as low cost and portability, the fuzzy border definition and existence of abounding artifacts pose great challenges for automatically detecting and segmenting the complex anatomical structures. In this paper, we propose a multi-domain regularized deep learning method to address this challenging problem. By leveraging the transfer learning from cross domains, the feature representations are effectively enhanced. The results are further improved by the iterative refinement. Moreover, our method is quite efficient by taking advantage of a fully convolutional network, which is formulated as an end-to-end learning framework of detection and segmentation. Extensive experimental results on a large-scale database corroborated that our method achieved a superior detection and segmentation accuracy, outperforming other methods by a significant margin and demonstrating competitive capability even compared to human performance.
机译:从超声图像中准确检测和分割解剖结构对于临床诊断和生物特征测量至关重要。尽管超声成像已经以低成本和便携性等优点被广泛使用,但是模糊边界的定义和大量伪影的存在对自动检测和分割复杂的解剖结构提出了巨大的挑战。在本文中,我们提出了一种多域正则化深度学习方法来解决这一具有挑战性的问题。通过利用跨领域的转移学习,可以有效地增强特征表示。通过迭代优化进一步改善了结果。此外,我们的方法通过利用完全卷积网络而非常有效,该网络被构造为检测和分段的端到端学习框架。在大型数据库上的大量实验结果证实,我们的方法具有出色的检测和分割精度,与其他方法相比,具有显着优势,甚至与人类的性能相比,也显示出竞争能力。

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