基于深度学习的胸部计算机断层扫描图像 COVID-19 病灶自动分割。

IF 0.9 Q4 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Polish Journal of Radiology Pub Date : 2022-08-26 eCollection Date: 2022-01-01 DOI:10.5114/pjr.2022.119027
Mohammad Salehi, Mahdieh Afkhami Ardekani, Alireza Bashari Taramsari, Hamed Ghaffari, Mohammad Haghparast
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引用次数: 0

摘要

目的:新型冠状病毒 COVID-19 于 2019 年 12 月底在全球范围内传播,是一场全球性的健康危机。胸部计算机断层扫描(CT)在为临床医生检测 COVID-19 提供有用信息方面发挥了关键作用。然而,从胸部 CT 结果中分割 COVID-19 感染区域具有挑战性。因此,我们希望开发一种高效的工具,利用胸部 CT 自动分割 COVID-19 病变。因此,我们旨在提出二维深度学习算法,从胸部 CT 切片中自动分割 COVID-19 感染区域,并评估其性能:材料:本文从头开始训练了 3 个已知的深度学习网络:U-Net、U-Net++ 和 Res-Unet,用于使用胸部 CT 图像自动分割 COVID-19 病灶。数据集由 20 个标有 COVID-19 的胸部 CT 卷组成。共使用了 2112 张图像。数据集的 80% 用于训练和验证,20% 用于测试所提出的模型。使用 Dice 相似性系数、平均对称面距离 (ASSD)、平均绝对误差 (MAE)、灵敏度、特异性和精确度评估分割性能:所有提出的模型在 COVID-19 病灶分割方面都取得了良好的效果。与 Res-Unet 相比,U-Net 和 U-Net++ 模型的结果更好,平均 Dice 值为 85.0%。与所有模型相比,U-Net 的分割性能最高,灵敏度为 86.0%,ASSD 为 2.22 mm。与 Res-Unet 模型相比,U-Net 模型在 Dice、灵敏度和 ASSD 方面分别提高了 1%、2% 和 0.66 毫米。与 Res-Unet 相比,U-Net++ 的 Dice、灵敏度、ASSD 和 MAE 分别提高了 1%、2%、0.1 毫米和 0.23 毫米:我们的数据表明,所提出模型的平均 Dice 值大于 84.0%。二维深度学习模型能够准确分割胸部 CT 图像中的 COVID-19 病变,帮助放射科医生更快地筛查和量化病变区域,以便进一步治疗。不过,还需要进一步的研究来评估所提出的模型在 COVID-19 语义分割方面的临床表现和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Automated deep learning-based segmentation of COVID-19 lesions from chest computed tomography images.

Automated deep learning-based segmentation of COVID-19 lesions from chest computed tomography images.

Automated deep learning-based segmentation of COVID-19 lesions from chest computed tomography images.

Automated deep learning-based segmentation of COVID-19 lesions from chest computed tomography images.

Purpose: The novel coronavirus COVID-19, which spread globally in late December 2019, is a global health crisis. Chest computed tomography (CT) has played a pivotal role in providing useful information for clinicians to detect COVID-19. However, segmenting COVID-19-infected regions from chest CT results is challenging. Therefore, it is desirable to develop an efficient tool for automated segmentation of COVID-19 lesions using chest CT. Hence, we aimed to propose 2D deep-learning algorithms to automatically segment COVID-19-infected regions from chest CT slices and evaluate their performance.

Material and methods: Herein, 3 known deep learning networks: U-Net, U-Net++, and Res-Unet, were trained from scratch for automated segmenting of COVID-19 lesions using chest CT images. The dataset consists of 20 labelled COVID-19 chest CT volumes. A total of 2112 images were used. The dataset was split into 80% for training and validation and 20% for testing the proposed models. Segmentation performance was assessed using Dice similarity coefficient, average symmetric surface distance (ASSD), mean absolute error (MAE), sensitivity, specificity, and precision.

Results: All proposed models achieved good performance for COVID-19 lesion segmentation. Compared with Res-Unet, the U-Net and U-Net++ models provided better results, with a mean Dice value of 85.0%. Compared with all models, U-Net gained the highest segmentation performance, with 86.0% sensitivity and 2.22 mm ASSD. The U-Net model obtained 1%, 2%, and 0.66 mm improvement over the Res-Unet model in the Dice, sensitivity, and ASSD, respectively. Compared with Res-Unet, U-Net++ achieved 1%, 2%, 0.1 mm, and 0.23 mm improvement in the Dice, sensitivity, ASSD, and MAE, respectively.

Conclusions: Our data indicated that the proposed models achieve an average Dice value greater than 84.0%. Two-dimensional deep learning models were able to accurately segment COVID-19 lesions from chest CT images, assisting the radiologists in faster screening and quantification of the lesion regions for further treatment. Nevertheless, further studies will be required to evaluate the clinical performance and robustness of the proposed models for COVID-19 semantic segmentation.

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来源期刊
Polish Journal of Radiology
Polish Journal of Radiology RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
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