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Unsupervised learning-based deformable registration of temporal chest radiographs to detect interval change

机译:不监督的基于学习的颞胸部射线照片的可变形注册,以检测间隔变化

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Temporal subtraction of sequential chest radiographs based on image registration technique has been developed for decades to assist radiologists in the detection of interval changes. Although the performance of current methods is good, the computation cost of these methods is generally high. The high computation cost is mainly due to the iterative optimization problem of non-learning-based deformable registration. In this work we present a fast unsupervised learning-based algorithm for deformable registration of chest radiographs. Based on a convolutional neural network, the proposed model learns to directly estimate spatial transformations from pairs of moving images and fixed images, and uses the transformations to warp the moving images. We apply a regularization term to constrain the model to learn local matching. The model is trained by optimizing a pair-wise similarity metric between the warped moving image and the fixed image, with no need for any supervised information such as ground truth deformation fields. The trained model can be used to predict the warped moving images in one shot, and is thus very fast. The subtraction images of the warped images and the fixed images are able to enhance various interval changes. The preliminary results showed that for approximately 98.55% cases, the learning-based method could obtain improved or comparable registration in comparison with the baseline method.
机译:已经开发了基于图像配准技术的顺序胸部射线照片的时间减法,几十年来帮助放射学家在检测间隔变化中。虽然目前方法的性能良好,但这些方法的计算成本通常很高。高计算成本主要是由于基于非学习的可变形注册的迭代优化问题。在这项工作中,我们提出了一种快速无监督的基于学习的胸部射线照片的可变形登记算法。基于卷积神经网络,所提出的模型学习直接从运动图像和固定图像对估计空间变换,并使用变换来横断运动图像。我们应用正则化术语来限制模型以学习本地匹配。通过优化翘曲运动图像和固定图像之间的成对相似度量来训练该模型,不需要任何监督信息,例如地面真理变形字段。培训的模型可用于预测一次翘曲的翘曲运动图像,因此非常快。扭曲图像的减法图像和固定图像能够增强各种间隔变化。初步结果表明,对于约98.55%的病例,与基线方法相比,基于学习的方法可以获得改进或可比的登记。

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