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首页> 外文期刊>PeerJ Computer Science >Chest X-ray pneumothorax segmentation using U-Net with EfficientNet and ResNet architectures
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Chest X-ray pneumothorax segmentation using U-Net with EfficientNet and ResNet architectures

机译:使用U-NET使用有效网络和RESET架构的胸部X射线气胸分段

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Medical imaging refers to visualization techniques to provide valuable information about the internal structures of the human body for clinical applications, diagnosis, treatment, and scientific research. Segmentation is one of the primary methods for analyzing and processing medical images, which helps doctors diagnose accurately by providing detailed information on the body’s required part. However, segmenting medical images faces several challenges, such as requiring trained medical experts and being time-consuming and error-prone. Thus, it appears necessary for an automatic medical image segmentation system. Deep learning algorithms have recently shown outstanding performance for segmentation tasks, especially semantic segmentation networks that provide pixel-level image understanding. By introducing the first fully convolutional network (FCN) for semantic image segmentation, several segmentation networks have been proposed on its basis. One of the state-of-the-art convolutional networks in the medical image field is U-Net. This paper presents a novel end-to-end semantic segmentation model, named Ens4B-UNet, for medical images that ensembles four U-Net architectures with pre-trained backbone networks. Ens4B-UNet utilizes U-Net’s success with several significant improvements by adapting powerful and robust convolutional neural networks (CNNs) as backbones for U-Nets encoders and using the nearest-neighbor up-sampling in the decoders. Ens4B-UNet is designed based on the weighted average ensemble of four encoder-decoder segmentation models. The backbone networks of all ensembled models are pre-trained on the ImageNet dataset to exploit the benefit of transfer learning. For improving our models, we apply several techniques for training and predicting, including stochastic weight averaging (SWA), data augmentation, test-time augmentation (TTA), and different types of optimal thresholds. We evaluate and test our models on the 2019 Pneumothorax Challenge dataset, which contains 12,047 training images with 12,954 masks and 3,205 test images. Our proposed segmentation network achieves a 0.8608 mean Dice similarity coefficient (DSC) on the test set, which is among the top one-percent systems in the Kaggle competition.
机译:医学成像是指可视化技术,以提供有关人体内部结构的有价值的信息,用于临床应用,诊断,治疗和科学研究。分割是分析和处理医学图像的主要方法之一,这使医生通过提供关于身体所需部分的详细信息来准确诊断。然而,分割医学图像面临着几种挑战,例如需要训练有素的医学专家并耗时和容易出错。因此,它似乎需要自动医学图像分割系统。深度学习算法最近显示了分割任务的出色性能,尤其是提供像素级图像理解的语义分段网络。通过引入用于语义图像分割的第一全卷积网络(FCN),已经基于其基础提出了几个分段网络。医学图像领域的最先进的卷积网络是U-Net。本文介绍了名为ENS4B-UNET的新型端到端语义分割模型,用于与预先训练的骨干网络合并四个U-Net架构的医学图像。 ENS4B-UNET利用U-Net的成功通过将功能强大和强大的卷积神经网络(CNNS)作为U-Net编码器的骨干,并在解码器中使用最近的邻近采样来使用几种显着的改进。 ENS4B-UNET是基于四个编码器解码器分段模型的加权平均集合设计的。所有合奏模型的骨干网络都在ImageNet数据集上预先培训,以利用转移学习的好处。为了改进我们的模型,我们应用了几种用于训练和预测的技术,包括随机重量平均(SWA),数据增强,测试时间增强(TTA)和不同类型的最佳阈值。我们在2019年Pneumothorax挑战数据集上评估和测试我们的模型,其中包含12,047个培训图像,具有12,954个掩模和3,205个测试图像。我们所提出的分割网络在测试集上实现了0.8608平均骰子相似系数(DSC),这是动摇竞争中的最高百分比系统之一。

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