论文标题

用CT成像识别Covid-19的超图学习

Hypergraph Learning for Identification of COVID-19 with CT Imaging

论文作者

Di, Donglin, Shi, Feng, Yan, Fuhua, Xia, Liming, Mo, Zhanhao, Ding, Zhongxiang, Shan, Fei, Li, Shengrui, Wei, Ying, Shao, Ying, Han, Miaofei, Gao, Yaozong, Sui, He, Gao, Yue, Shen, Dinggang

论文摘要

自2020年初开始以来,冠状病毒疾病被称为Covid-19,已成为全球最大的公共卫生危机。CT成像已被用作协助早期筛查的互补工具,尤其是从社区获得的肺炎(CAP)病例中快速鉴定Covid-19病例。早期筛查中的主要挑战是如何在Covid-19和Cap组中对令人困惑的病例进行建模,并具有非常相似的临床表现和成像特征。为了应对这一挑战,我们建议使用CT图像从CAP中识别COVID-19的不确定性顶点加权超图(UVHL)方法。特别是,首先从CT图像中提取多种类型的功能(包括区域特征和放射线特征)。然后,不同情况之间的关系由超图结构提出,每种情况都表示为超图中的顶点。每个顶点的不确定性通过不确定性评分测量进一步计算,并用作超图中的重量。最后,使用顶点加权超图的学习过程用于预测新的测试案例是否属于COVID-19。进行了大型多中心肺炎数据集的实验,该数据集由2,148例COVID-19病例和1,182例CAP病例组成,以评估拟议方法的性能。结果证明了与最新方法相比,我们提出的方法对Covid-19鉴定的有效性和鲁棒性。

The coronavirus disease, named COVID-19, has become the largest global public health crisis since it started in early 2020. CT imaging has been used as a complementary tool to assist early screening, especially for the rapid identification of COVID-19 cases from community acquired pneumonia (CAP) cases. The main challenge in early screening is how to model the confusing cases in the COVID-19 and CAP groups, with very similar clinical manifestations and imaging features. To tackle this challenge, we propose an Uncertainty Vertex-weighted Hypergraph Learning (UVHL) method to identify COVID-19 from CAP using CT images. In particular, multiple types of features (including regional features and radiomics features) are first extracted from CT image for each case. Then, the relationship among different cases is formulated by a hypergraph structure, with each case represented as a vertex in the hypergraph. The uncertainty of each vertex is further computed with an uncertainty score measurement and used as a weight in the hypergraph. Finally, a learning process of the vertex-weighted hypergraph is used to predict whether a new testing case belongs to COVID-19 or not. Experiments on a large multi-center pneumonia dataset, consisting of 2,148 COVID-19 cases and 1,182 CAP cases from five hospitals, are conducted to evaluate the performance of the proposed method. Results demonstrate the effectiveness and robustness of our proposed method on the identification of COVID-19 in comparison to state-of-the-art methods.

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