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2ST-UNet: 2-Stage Training Model using U-Net for Pneumothorax Segmentation in Chest X-Rays

机译:2ST-UNet:使用U-Net进行胸部X线气胸分割的2阶段训练模型

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Pneumothorax, also called a collapsed lung, is the presence of the air outside of the lung in the space between the lung and chest wall. It is generally diagnosed using a chest X-ray. However, for some cases, the diagnosis can be difficult as other medical conditions appear similarly. Machine Learning algorithms have been providing great assistance in detecting and locating pneumothorax lately. In this paper, we propose a 2-Stage Training system to segment images with pneumothorax. This system has been built based on U-Net, the state-of-the-art Fully Convolutional Network (FCN) architecture, with a backbone Residual Networks (ResNet-34) that is pre-trained on the ImageNet dataset. In the beginning, we train the network at a lower resolution. Then, we load the trained model weights to retrain the network with a higher resolution. Moreover, we utilize different techniques including Stochastic Weight Averaging (SWA), data augmentation, and Test-Time Augmentation (TTA). We use the chest X-ray dataset that is provided by the 2019 SIIM-ACR Pneumothorax Segmentation Challenge, which contains 12047 training images and 3205 testing images. Our experiments show that 2-Stage Training leads to better and faster network convergence. Our method achieves 0.8356 mean Dice coefficient placing it among the top 9% of competitors with a rank of 124 out of 1475.
机译:气胸,也称为肺萎陷,是指在肺与胸壁之间的空间中存在于肺外部的空气。通常使用胸部X光诊断。但是,在某些情况下,由于其他医学状况类似地出现,诊断可能会很困难。机器学习算法最近为检测和定位气胸提供了很大的帮助。在本文中,我们提出了一种2阶段训练系统,以用气胸分割图像。该系统基于最先进的全卷积网络(FCN)体系结构U-Net以及在ImageNet数据集上经过预训练的主干残差网络(ResNet-34)构建。首先,我们以较低的分辨率训练网络。然后,我们加载训练后的模型权重,以更高的分辨率重新训练网络。此外,我们利用了不同的技术,包括随机加权平均(SWA),数据增强和测试时间增强(TTA)。我们使用由2019 SIIM-ACR气胸分割挑战赛提供的胸部X射线数据集,其中包含12047个训练图像和3205个测试图像。我们的实验表明,两阶段训练可以带来更好,更快的网络融合。我们的方法获得了0.8356的平均骰子系数,在1475个调查中排名124,位居前9%竞争者之列。

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