Global adaptive histogram feature network for automatic segmentation of infection regions in CT images

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2024-07-11 DOI:10.1007/s00530-024-01392-y
Xinren Min, Yang Liu, Shengjing Zhou, Huihua Huang, Li Zhang, Xiaojun Gong, Dongshan Yang, Menghao Wang, Rui Yang, Mingyang Zhong
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Abstract

Accurate and timely diagnosis of COVID-like virus is of paramount importance for lifesaving. In this work, deep learning techniques are applied to lung CT image segmentation for accurate disease diagnosis. We discuss the limitations of current diagnostic methods, such as RT-PCR, and highlights the advantages of deep learning, including its ability to automatically learn features and handle complex lesion morphology and texture. We, therefore, propose a novel deep learning framework, GAHFNet, specifically designed for automatic segmentation of COVID-19 lung CT images. The proposed method addresses the challenges in lung CT image segmentation, such as the complex image structure and difficulties of distinguishing COVID-19 pneumonia lesions from other pathologies. We provide the detailed description of the proposed GAHFNet. Finally, comprehensive experiments are carried out to evaluate the performance of GAHFNet, and the proposed method outperforms other traditional and the state-of-the-art methods in various evaluation metrics, demonstrating the effectiveness and the efficiency of the proposed method in this task. GAHFNet is able to facilitate the application of artificial intelligence in COVID-19 diagnosis and achieve accurate automatic segmentation of infected areas in COVID-19 lung CT images.

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用于自动分割 CT 图像中感染区域的全局自适应直方图特征网络
准确及时地诊断 COVID 类病毒对挽救生命至关重要。在这项工作中,深度学习技术被应用于肺部 CT 图像分割,以实现准确的疾病诊断。我们讨论了当前诊断方法(如 RT-PCR)的局限性,并强调了深度学习的优势,包括其自动学习特征和处理复杂病变形态和纹理的能力。因此,我们提出了一种新型深度学习框架--GAHFNet,专门用于 COVID-19 肺部 CT 图像的自动分割。所提出的方法解决了肺部 CT 图像分割中的难题,如复杂的图像结构以及将 COVID-19 肺炎病变与其他病变区分开来的困难。我们对所提出的 GAHFNet 进行了详细描述。最后,我们对 GAHFNet 的性能进行了全面的实验评估,结果表明所提出的方法在各种评价指标上都优于其他传统方法和最先进的方法,证明了所提出的方法在该任务中的有效性和高效性。GAHFNet 能够促进人工智能在 COVID-19 诊断中的应用,实现 COVID-19 肺部 CT 图像中感染区域的精确自动分割。
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CiteScore
7.20
自引率
4.30%
发文量
567
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