Modified U-Net Architecture for Ischemic Stroke Lesion Segmentation and Detection

W. Shi, Heng Liu
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引用次数: 6

Abstract

In this paper, to improve the accuracy of detection and segmentation, we modify U-Net architecture to address ischemic stroke segmentation and detection, from ISLES 2018 dataset. In this dataset, CT images (in five modalities) and corresponding ground truth created by combining manual annotations are provided. We use shortcut connections in the architecture, which performs as a residual block. In the meantime, to reduce the overfitting caused by the scarcity of training data, we use elementwise-sum and concatenation in the network. We also use the dice coefficient and the Jaccard index to assess our model. Our architecture can be applied to ischemic segmentation and detection of CT images easily by choosing suitable hyperparameters. Experiment results show that our model can segment ischemic stroke accurately, with the dice coefficient between the segmentation given by our network and ground truth is about 0.77 while the dice coefficient of U-Net is about 0.74.
基于改进U-Net结构的缺血性脑卒中病灶分割与检测
在本文中,为了提高检测和分割的准确性,我们修改了U-Net架构,以解决ISLES 2018数据集的缺血性卒中分割和检测问题。在该数据集中,提供了CT图像(五种模式)和通过结合手动注释创建的相应的地面真值。我们在体系结构中使用快捷连接,它作为剩余块执行。同时,为了减少由于训练数据的稀缺性而导致的过拟合,我们在网络中使用了元素求和和拼接。我们还使用骰子系数和Jaccard指数来评估我们的模型。通过选择合适的超参数,我们的结构可以很容易地应用于CT图像的缺血分割和检测。实验结果表明,我们的模型可以准确地分割缺血性脑卒中,我们的网络给出的分割结果与地面真实值之间的骰子系数约为0.77,而U-Net的骰子系数约为0.74。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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