论文标题

COVID-19胸部CT图像分割 - 深卷积神经网络解决方案

COVID-19 Chest CT Image Segmentation -- A Deep Convolutional Neural Network Solution

论文作者

Yan, Qingsen, Wang, Bo, Gong, Dong, Luo, Chuan, Zhao, Wei, Shen, Jianhu, Shi, Qinfeng, Jin, Shuo, Zhang, Liang, You, Zheng

论文摘要

自2019年底以来,发现了一种新型的2019年冠状病毒疾病(COVID-19),并已迅速在世界各地传播,计算机断层扫描(CT)图像已被用作耗时的RT-PCR检验的至关重要的替代方法。但是,随着可疑病例的增加,CT图像的纯手动分割面临严重的挑战,导致迫切要求准确和自动分割Covid-19感染。不幸的是,由于COVID-19感染的成像特征是多种多样的,并且与背景相似,因此现有的医学图像分割方法无法实现令人满意的性能。在这项工作中,我们尝试建立一个新的深层卷积神经网络,该网络量身定制,该网络量身定制,该网络用于分割带有COVID-19感染的胸部CT图像。我们首先维护一个新的胸部CT图像数据集,该数据集由来自861例COVID-19患者的165,667个注释的胸部CT图像组成。受到观察的启发,即可以通过调整全局强度来增强感染肺的边界,在提议的深CNN中,我们引入了一个特征变异块,该块可自适应地调节分割COVID-19感染的特征的全局特性。所提出的FV块可以有效地增强特征表示能力,并适应各种情况。我们通过提出渐进性的空间金字塔池来融合不同尺度的特征,以处理具有不同外观和形状的复杂感染区域。我们对中国和德国收集的数据进行了实验,并表明拟议的深CNN可以有效地产生令人印象深刻的性能。

A novel coronavirus disease 2019 (COVID-19) was detected and has spread rapidly across various countries around the world since the end of the year 2019, Computed Tomography (CT) images have been used as a crucial alternative to the time-consuming RT-PCR test. However, pure manual segmentation of CT images faces a serious challenge with the increase of suspected cases, resulting in urgent requirements for accurate and automatic segmentation of COVID-19 infections. Unfortunately, since the imaging characteristics of the COVID-19 infection are diverse and similar to the backgrounds, existing medical image segmentation methods cannot achieve satisfactory performance. In this work, we try to establish a new deep convolutional neural network tailored for segmenting the chest CT images with COVID-19 infections. We firstly maintain a large and new chest CT image dataset consisting of 165,667 annotated chest CT images from 861 patients with confirmed COVID-19. Inspired by the observation that the boundary of the infected lung can be enhanced by adjusting the global intensity, in the proposed deep CNN, we introduce a feature variation block which adaptively adjusts the global properties of the features for segmenting COVID-19 infection. The proposed FV block can enhance the capability of feature representation effectively and adaptively for diverse cases. We fuse features at different scales by proposing Progressive Atrous Spatial Pyramid Pooling to handle the sophisticated infection areas with diverse appearance and shapes. We conducted experiments on the data collected in China and Germany and show that the proposed deep CNN can produce impressive performance effectively.

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