Nguyen Quang H, Hoang Duc A, Pham Hai Van
School of Information and Communications Technology, Hanoi University of Science and Technology, No. 1 Dai Co Viet, Hai Ba Trung, Hanoi, Viet Nam.
School of Information and Communications Technology, Hanoi University of Science and Technology, No. 1 Dai Co Viet, Hai Ba Trung, Hanoi, Viet Nam.
Comput Biol Med. 2025 Jun 20;195:110376. doi: 10.1016/j.compbiomed.2025.110376.
The COVID-19 pandemic plays a significant roles in the global health, highlighting the imperative for effective management of post-recovery symptoms. Within this context, Ground Glass Opacity (GGO) in lung computed tomography CT scans emerges as a critical indicator for early intervention. Recently, most researchers have investigated initially a challenge to refine techniques for GGO segmentation. These approaches aim to scrutinize and juxtapose cutting-edge methods for analyzing lung CT images of patients recuperating from COVID-19. While many methods in this challenge utilize the nnU-Net architecture, its general approach has not concerned completely GGO areas such as marking infected areas, ground-glass opacity, irregular shapes and fuzzy boundaries. This research has investigated a specialized machine learning algorithm, advancing the nn-UNet framework to accurately segment GGO in lung CT scans of post-COVID-19 patients.
We propose a novel approach for two-stage image segmentation methods based on nnU-Net 2D and 3D models including lung and shadow image segmentation, incorporating the attention mechanism. The combination models enhance automatic segmentation and models' accuracy when using different error function in the training process.
Experimental results show that the proposed model's outcomes DSC score ranks fifth among the compared results. The proposed method has also the second-highest sensitivity value among the methods, which shows that this method has a higher true segmentation rate than most of the other methods. The proposed method has achieved a Hausdorff95 of 54.566, Surface dice of 0.7193, Sensitivity of 0.7528, and Specificity of 0.7749. As compared with the state-of-the-art methods, the proposed model in experimental results is improved much better than the current methods in term of segmentation of infected areas.
The proposed model has been deployed in the case study of real-world problems with the combination of 2D and 3D models. It is demonstrated the capacity to comprehensively detect lung lesions correctly. Additionally, the boundary loss function has assisted in achieving more precise segmentation for low-resolution images. Initially segmenting lung area has reduced the volume of images requiring processing, while diminishing for training process.
新冠疫情对全球健康产生了重大影响,凸显了有效管理康复后症状的紧迫性。在此背景下,肺部计算机断层扫描(CT)中的磨玻璃影(GGO)成为早期干预的关键指标。最近,大多数研究人员最初都在研究改进GGO分割技术的挑战。这些方法旨在审视和比较用于分析新冠康复患者肺部CT图像的前沿方法。虽然该挑战中的许多方法都采用了nnU-Net架构,但其一般方法并未完全关注GGO区域,如标记感染区域、磨玻璃影、不规则形状和模糊边界。本研究调查了一种专门的机器学习算法,改进了nn-UNet框架,以准确分割新冠康复患者肺部CT扫描中的GGO。
我们基于nnU-Net 2D和3D模型提出了一种用于两阶段图像分割方法的新方法,包括肺部和阴影图像分割,并结合了注意力机制。在训练过程中使用不同的误差函数时,组合模型提高了自动分割和模型的准确性。
实验结果表明,所提出模型的结果DSC分数在比较结果中排名第五。该方法在这些方法中还具有第二高的灵敏度值,这表明该方法比大多数其他方法具有更高的真分割率。所提出的方法实现了95%豪斯多夫距离为54.566、表面骰子系数为0.7193、灵敏度为0.7528和特异性为0.7749。与现有最先进的方法相比,实验结果中的所提出模型在感染区域分割方面比当前方法有了显著改进。
所提出的模型已结合2D和3D模型部署到实际问题的案例研究中。它展示了正确全面检测肺部病变的能力。此外,边界损失函数有助于对低分辨率图像实现更精确的分割。最初分割肺部区域减少了需要处理的图像体积,同时也减少了训练过程中的图像体积。