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Siam-U-Net: encoder-decoder siamese network for knee cartilage tracking in ultrasound images

机译:SIAM-U-NET:Encoder-Decoder暹罗网络用于膝关节软骨跟踪超声图像

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The tracking of the knee femoral condyle cartilage during ultrasound-guided minimally invasive procedures is important to avoid damaging this structure during such interventions. In this study, we propose a new deep learning method to track, accurately and efficiently, the femoral condyle cartilage in ultrasound sequences, which were acquired under several clinical conditions, mimicking realistic surgical setups. Our solution, that we name Siam-U-Net, requires minimal user initialization and combines a deep learning segmentation method with a siamese framework for tracking the cartilage in temporal and spatio-temporal sequences of 2D ultrasound images. Through extensive performance validation given by the Dice Similarity Coefficient, we demonstrate that our algorithm is able to track the femoral condyle cartilage with an accuracy which is comparable to experienced surgeons. It is additionally shown that the proposed method outperforms state-of-the-art segmentation models and trackers in the localization of the cartilage. We claim that the proposed solution has the potential for ultrasound guidance in minimally invasive knee procedures. Crown Copyright (C) 2019 Published by Elsevier B.V. All rights reserved.
机译:在超声引导的微创手术期间膝盖股骨髁软骨的跟踪对于避免在这种干预期间避免损坏这种结构。在这项研究中,我们提出了一种新的深度学习方法,可以在超声序列中履行股骨髁软骨,在几种临床条件下获得,模仿现实的手术设置。我们的解决方案是,我们命名Siam-U-Net,需要最小的用户初始化,并将深度学习分段方法与暹罗框架进行跟踪2D超声图像的时间和时空序列中的软骨。通过骰子相似度系数给出的广泛性能验证,我们证明我们的算法能够跟踪股骨髁软骨,精度可与经验丰富的外科医生相当。另外示出了所提出的方法在软骨本地化中优于最先进的分段模型和跟踪器。我们声称,所提出的解决方案具有超声波引导在微创膝盖手术中的潜力。皇家版权(c)2019由elsevier b.v出版。保留所有权利。

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