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基于复杂网络的 COVID-19 诊断放射影像分类。

Complex network-based classification of radiographic images for COVID-19 diagnosis.

机构信息

School of Computer Science, Zhongyuan University of Technology, ZhengZhou, China.

Institute of Mathematics and Computer Science (ICMC), University of São Paulo (USP), São Carlos, Brazil.

出版信息

PLoS One. 2023 Sep 1;18(9):e0290968. doi: 10.1371/journal.pone.0290968. eCollection 2023.

DOI:10.1371/journal.pone.0290968
PMID:37656697
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10473542/
Abstract

In this work, we present a network-based technique for chest X-ray image classification to help the diagnosis and prognosis of patients with COVID-19. From visual inspection, we perceive that healthy and COVID-19 chest radiographic images present different levels of geometric complexity. Therefore, we apply fractal dimension and quadtree as feature extractors to characterize such differences. Moreover, real-world datasets often present complex patterns, which are hardly handled by only the physical features of the data (such as similarity, distance, or distribution). This issue is addressed by complex networks, which are suitable tools for characterizing data patterns and capturing spatial, topological, and functional relationships in data. Specifically, we propose a new approach combining complexity measures and complex networks to provide a modified high-level classification technique to be applied to COVID-19 chest radiographic image classification. The computational results on the Kaggle COVID-19 Radiography Database show that the proposed method can obtain high classification accuracy on X-ray images, being competitive with state-of-the-art classification techniques. Lastly, a set of network measures is evaluated according to their potential in distinguishing the network classes, which resulted in the choice of communicability measure. We expect that the present work will make significant contributions to machine learning at the semantic level and to combat COVID-19.

摘要

在这项工作中,我们提出了一种基于网络的技术,用于对胸部 X 射线图像进行分类,以帮助 COVID-19 患者的诊断和预后。从视觉检查中,我们可以看出健康和 COVID-19 的胸部射线照片呈现出不同程度的几何复杂性。因此,我们应用分形维数和四叉树作为特征提取器来描述这些差异。此外,现实世界的数据集中经常出现复杂的模式,这些模式很难仅通过数据的物理特征(例如相似性、距离或分布)来处理。这个问题可以通过复杂网络来解决,复杂网络是用于描述数据模式和捕获数据中空间、拓扑和功能关系的合适工具。具体来说,我们提出了一种新的方法,将复杂性度量和复杂网络相结合,提供一种改进的高级分类技术,应用于 COVID-19 胸部射线图像分类。在 Kaggle COVID-19 射线照片数据库上的计算结果表明,所提出的方法可以在 X 射线图像上获得高分类精度,与最先进的分类技术竞争。最后,根据它们在区分网络类别的潜力评估了一组网络度量标准,最终选择了可传播性度量标准。我们希望本工作将对语义级别的机器学习和对抗 COVID-19 做出重大贡献。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fa80/10473542/5eb2e87e9c05/pone.0290968.g010.jpg
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本文引用的文献

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