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使用混合深度学习和图像处理技术进行 COVID-19 感染分割。

COVID-19 infection segmentation using hybrid deep learning and image processing techniques.

机构信息

Computer Science Division, Department of Mathematics, Faculty of Science, Ain Shams University, Abbassia, Cairo, 11566, Egypt.

出版信息

Sci Rep. 2023 Dec 20;13(1):22737. doi: 10.1038/s41598-023-49337-1.

Abstract

The coronavirus disease 2019 (COVID-19) epidemic has become a worldwide problem that continues to affect people's lives daily, and the early diagnosis of COVID-19 has a critical importance on the treatment of infected patients for medical and healthcare organizations. To detect COVID-19 infections, medical imaging techniques, including computed tomography (CT) scan images and X-ray images, are considered some of the helpful medical tests that healthcare providers carry out. However, in addition to the difficulty of segmenting contaminated areas from CT scan images, these approaches also offer limited accuracy for identifying the virus. Accordingly, this paper addresses the effectiveness of using deep learning (DL) and image processing techniques, which serve to expand the dataset without the need for any augmentation strategies, and it also presents a novel approach for detecting COVID-19 virus infections in lung images, particularly the infection prediction issue. In our proposed method, to reveal the infection, the input images are first preprocessed using a threshold then resized to 128 × 128. After that, a density heat map tool is used for coloring the resized lung images. The three channels (red, green, and blue) are then separated from the colored image and are further preprocessed through image inverse and histogram equalization, and are subsequently fed, in independent directions, into three separate U-Nets with the same architecture for segmentation. Finally, the segmentation results are combined and run through a convolution layer one by one to get the detection. Several evaluation metrics using the CT scan dataset were used to measure the performance of the proposed approach in comparison with other state-of-the-art techniques in terms of accuracy, sensitivity, precision, and the dice coefficient. The experimental results of the proposed approach reached 99.71%, 0.83, 0.87, and 0.85, respectively. These results show that coloring the CT scan images dataset and then dividing each image into its RGB image channels can enhance the COVID-19 detection, and it also increases the U-Net power in the segmentation when merging the channel segmentation results. In comparison to other existing segmentation techniques employing bigger 512 × 512 images, this study is one of the few that can rapidly and correctly detect the COVID-19 virus with high accuracy on smaller 128 × 128 images using the metrics of accuracy, sensitivity, precision, and dice coefficient.

摘要

2019 年冠状病毒病(COVID-19)疫情已成为全球性问题,持续影响着人们的日常生活,而对感染患者的早期诊断对医疗机构的治疗至关重要。为了检测 COVID-19 感染,医学影像学技术,包括计算机断层扫描(CT)图像和 X 射线图像,被认为是医疗保健提供者进行的一些有帮助的医学检查。然而,除了从 CT 扫描图像中分割污染区域的难度之外,这些方法对于识别病毒的准确性也很有限。因此,本文探讨了使用深度学习(DL)和图像处理技术的有效性,这些技术可用于扩展数据集,而无需任何扩充策略,并且还提出了一种新颖的方法来检测肺部图像中的 COVID-19 病毒感染,特别是感染预测问题。在我们提出的方法中,为了揭示感染,首先使用阈值对输入图像进行预处理,然后将其调整为 128×128。之后,使用密度热图工具对调整大小的肺部图像进行着色。然后将彩色图像的三个通道(红色、绿色和蓝色)分离,并通过图像反转和直方图均衡进一步预处理,然后分别以独立的方向输入具有相同架构的三个单独的 U-Net 进行分割。最后,将分割结果一一通过卷积层进行组合以进行检测。使用 CT 扫描数据集的几个评估指标来衡量与其他最先进技术相比,该方法在准确性、敏感性、精度和骰子系数方面的性能。所提出方法的实验结果分别达到 99.71%、0.83、0.87 和 0.85。这些结果表明,对 CT 扫描图像数据集进行着色,然后将每张图像分为其 RGB 图像通道,可以增强 COVID-19 检测,并在合并通道分割结果时增强 U-Net 的分割能力。与使用更大的 512×512 图像的其他现有分割技术相比,这项研究是为数不多的几项研究之一,它可以使用准确性、敏感性、精度和骰子系数等指标在较小的 128×128 图像上快速、正确地检测 COVID-19 病毒。

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