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Dual Encoder Fusion U-Net (DEFU-Net) for Cross-manufacturer Chest X-ray Segmentation

机译:双编码器融合U-NET(DEFU-NET)用于跨制造商胸部X射线分割

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A number of methods based on deep learning have been applied to medical image segmentation and have achieved state-of-the-art performance. Due to the importance of chest x-ray data in studying COVID-19, there is a demand for state-of-the-art models capable of precisely segmenting soft tissue on the chest x-rays. The dataset for exploring best segmentation model is from Montgomery and Shenzhen hospital which had opened in 2014. The most famous technique is U-Net which has been used to many medical datasets including the Chest X-rays. However, most variant U-Nets mainly focus on extraction of contextual information and skip connections. There is still a large space for improving extraction of spatial features. In this paper, we propose a dual encoder fusion U-Net framework for Chest X-rays based on Inception Convolutional Neural Network with dilation, Densely Connected Recurrent Convolutional Neural Network, which is named DEFU-Net. The densely connected recurrent path extends the network deeper for facilitating contextual feature extraction. In order to increase the width of network and enrich representation of features, the inception blocks with dilation are adopted. The inception blocks can capture globally and locally spatial information from various receptive fields. At the same time, the two paths are fused by summing features, thus preserving the contextual and spatial information for decoding part. This multi-learning-scale model is benefiting in Chest X-ray dataset from two different manufacturers (Montgomery and Shenzhen hospital). The DEFU-Net achieves the better performance than basic U-Net, residual U-Net, BCDU-Net, R2U-Net and attention R2U-Net. This model has proved the feasibility for mixed dataset and approaches state-of-the-art. The source code for this proposed framework is public https://github.com/uceclz0/DEFU-Net.
机译:基于深度学习的许多方法已应用于医学图像分割,并实现了最先进的性能。由于胸部X射线数据在研究Covid-19中的重要性,需要一种能够精确地分割胸部X射线的软组织的最先进模型。用于探索最佳分割模型的数据集是2014年开放的蒙哥马利和深圳医院。最着名的技术是U-NET,用于许多医疗数据集,包括胸部X射线。然而,大多数变体U-Net主要专注于提取上下文信息和跳过连接。仍然有一个很大的空间,可以改善空间特征的提取。在本文中,我们为基于Inception卷积神经网络的胸部X射线提出了一种双编码器融合U-Net框架,具有扩张,密集连接的经常性卷积神经网络,其被命名为Defu-net。密集连接的复发路径扩展了网络更深,以便于促进上下文特征提取。为了增加网络的宽度并丰富特征的表示,采用了具有扩张的初始块。初始块可以从各种接收领域捕获全局和本地空间信息。同时,通过求和特征来融合两条路径,从而保留了解码部分的上下文和空间信息。这种多学习规模模型在两种不同制造商(Montgomery和深圳医院)中受益于胸X射线数据集。 DEFU-NET实现的性能比基本U-Net,残差U-Net,BCDU-Net,R2U-Net和Intention R2U-Net的性能更好。该模型证明了混合数据集的可行性和最先进的方法。此提议框架的源代码是公共https://github.com/cuceclz0/defu-ett。

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