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An End-to-end Deep Learning Approach for Landmark Detection and Matching in Medical Images

机译:一种用于医学图像中地标检测和匹配的端到端深度学习方法

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Anatomical landmark correspondences in medical images can provide additional guidance information for the alignment of two images, which, in turn, is crucial for many medical applications. However, manual landmark annotation is labor-intensive. Therefore, we propose an end-to-end deep learning approach to automatically detect landmark correspondences in pairs of two-dimensional (2D) images. Our approach consists of a Siamese neural network, which is trained to identify salient locations in images as landmarks and predict matching probabilities for landmark pairs from two different images. We trained our approach on 2D transverse slices from 168 lower abdominal Computed Tomography (CT) scans. We tested the approach on 22.20G pairs of 2D slices with varying levels of intensity, affine, and elastic transformations. The proposed approach finds an average of 639, 466, and 370 landmark matches per image pair for intensity, affine, and elastic transformations, respectively, with spatial matching errors of at most 1 mm. Further, more than 99% of the landmark pairs are within a spatial matching error of 2 mm, 4 mm, and 8 mm for image pairs with intensity, affine, and elastic transformations, respectively. To investigate the utility of our developed approach in a clinical setting, we also tested our approach on pairs of transverse slices selected from follow-up CT scans of three patients. Visual inspection of the results revealed landmark matches in both bony anatomical regions as well as in soft tissues lacking prominent intensity gradients.
机译:医学图像中的解剖界标对应关系可以为两个图像的对齐提供其他指导信息,这又对许多医学应用至关重要。但是,手动地标注释需要大量劳动。因此,我们提出了一种端到端深度学习方法,以自动检测成对的二维(2D)图像中的地标对应关系。我们的方法包括一个暹罗神经网络,该网络经过训练可以将图像中的显着位置识别为界标,并预测来自两个不同图像的界标对的匹配概率。我们对来自168个下腹部计算机断层扫描(CT)扫描的2D横向切片进行了训练。我们在具有不同强度,仿射和弹性变换水平的22.20G对2D切片上测试了该方法。所提出的方法针对强度,仿射和弹性变换,每个图像对分别发现平均639、466和370个界标匹配,空间匹配误差最大为1 mm。此外,对于分别具有强度,仿射和弹性变换的图像对,超过99%的界标对在2mm,4mm和8mm的空间匹配误差内。为了研究我们开发的方法在临床中的实用性,我们还在从三名患者的后续CT扫描中选择的成对横向切片上测试了我们的方法。目视检查结果表明,在骨骼解剖区域以及缺乏明显强度梯度的软组织中都具有里程碑意义。

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