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Reducing the Hausdorff Distance in Medical Image Segmentation With Convolutional Neural Networks

机译:利用卷积神经网络减少医学图像分割中的Hausdorff距离

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摘要

The Hausdorff Distance (HD) is widely used in evaluating medical image segmentation methods. However, the existing segmentation methods do not attempt to reduce HD directly. In this paper, we present novel loss functions for training convolutional neural network (CNN)-based segmentation methods with the goal of reducing HD directly. We propose three methods to estimate HD from the segmentation probability map produced by a CNN. One method makes use of the distance transform of the segmentation boundary. Another method is based on applying morphological erosion on the difference between the true and estimated segmentation maps. The third method works by applying circular/spherical convolution kernels of different radii on the segmentation probability maps. Based on these three methods for estimating HD, we suggest three loss functions that can be used for training to reduce HD. We use these loss functions to train CNNs for segmentation of the prostate, liver, and pancreas in ultrasound, magnetic resonance, and computed tomography images and compare the results with commonly-used loss functions. Our results show that the proposed loss functions can lead to approximately reduction in HD without degrading other segmentation performance criteria such as the Dice similarity coefficient. The proposed loss functions can be used for training medical image segmentation methods in order to reduce the large segmentation errors.
机译:Hausdorff距离(HD)被广泛用于评估医学图像分割方法。但是,现有的分割方法并未尝试直接减小HD。在本文中,我们提出了新颖的损失函数,用于训练基于卷积神经网络(CNN)的分割方法,目的是直接降低HD。我们提出了三种方法来从CNN产生的分割概率图中估算HD。一种方法利用分割边界的距离变换。另一种方法是基于对真实分割图和估计分割图之间的差异应用形态侵蚀。第三种方法是通过将不同半径的圆/球形卷积核应用于分割概率图上。基于这三种估计HD的方法,我们建议了三种可用于训练以减少HD的损失函数。我们使用这些损失函数来训练CNN,以便在超声,磁共振和计算机断层扫描图像中对前列腺,肝脏和胰腺进行分割,并将结果与​​常用的损失函数进行比较。我们的结果表明,所提出的损失函数可以导致HD近似降低,而不会降低其他分割性能标准,例如骰子相似性系数。所提出的损失函数可用于训练医学图像分割方法,以减少较大的分割误差。

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