Three-stage registration pipeline for dynamic lung field of chest X-ray images based on convolutional neural networks.

IF 4.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Frontiers in Artificial Intelligence Pub Date : 2025-03-12 eCollection Date: 2025-01-01 DOI:10.3389/frai.2025.1466643
Yingjian Yang, Jie Zheng, Peng Guo, Qi Gao, Yingwei Guo, Ziran Chen, Chengcheng Liu, Tianqi Wu, Zhanglei Ouyang, Huai Chen, Yan Kang
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Abstract

Background: The anatomically constrained registration network (AC-RegNet), which yields anatomically plausible results, has emerged as the state-of-the-art registration architecture for chest X-ray (CXR) images. Nevertheless, accurate lung field registration results may be more favored and exciting than the registration results of the entire CXR images and hold promise for dynamic lung field analysis in clinical practice.

Objective: Based on the above, a registration model of the dynamic lung field of CXR images based on AC-RegNet and static CXR images is urgently developed to register these dynamic lung fields for clinical quantitative analysis.

Methods: This paper proposes a fully automatic three-stage registration pipeline for the dynamic lung field of CXR images. First, the dynamic lung field mask images are generated from a pre-trained standard lung field segmentation model with the dynamic CXR images. Then, a lung field abstraction model is designed to generate the dynamic lung field images based on the dynamic lung field mask images and their corresponding CXR images. Finally, we propose a three-step registration training method to train the AC-RegNet, obtaining the registration network of the dynamic lung field images (AC-RegNet_V3).

Results: The proposed AC-RegNet_V3 with the four basic segmentation networks achieve the mean dice similarity coefficient (DSC) of 0.991, 0.993, 0.993, and 0.993, mean Hausdorff distance (HD) of 12.512, 12.813, 12.449, and 13.661, mean average symmetric surface distance (ASSD) of 0.654, 0.550, 0.572, and 0.564, and mean squared distance (MSD) of 559.098, 577.797, 548.189, and 559.652, respectively. Besides, compared to the dynamic CXR images, the mean DSC of these four basic segmentation networks with AC-RegNet has been significantly improved by 7.2, 7.4, 7.4, and 7.4% (p-value < 0.0001). Meanwhile, the mean HD has been significantly improved by 8.994, 8.693, 9.057, and 7.845 (p-value < 0.0001). Similarly, the mean ASSD has significantly improved by 4.576, 4.680, 4.658, and 4.658 (p-value < 0.0001). Last, the mean MSD has significantly improved by 508.936, 519.776, 517.904, and 520.626 (p-value < 0.0001).

Conclusion: Our proposed three-stage registration pipeline has demonstrated its effectiveness in dynamic lung field registration. Therefore, it could become a powerful tool for dynamic lung field analysis in clinical practice, such as pulmonary airflow detection and air trapping location.

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基于卷积神经网络的胸部x线图像动态肺场三级配准流水线。
背景:解剖学约束配准网络(AC-RegNet)产生解剖学上合理的结果,已成为胸部x射线(CXR)图像的最先进的配准架构。然而,准确的肺野配准结果可能比整个CXR图像的配准结果更受欢迎和令人兴奋,并有望在临床实践中进行动态肺野分析。目的:在此基础上,迫切需要开发一种基于AC-RegNet和静态CXR图像的动态肺场配准模型,将这些动态肺场配准用于临床定量分析。方法:提出了一种用于CXR图像动态肺场的全自动三级配准流水线。首先,利用预训练的标准肺场分割模型和动态CXR图像生成动态肺场掩模图像;然后,设计肺场抽象模型,基于动态肺场掩模图像及其对应的CXR图像生成动态肺场图像。最后,提出了一种三步配准训练方法对AC-RegNet进行训练,得到了动态肺场图像的配准网络AC-RegNet_V3。结果:采用4种基本分割网络构建的AC-RegNet_V3的平均骰子相似系数(DSC)分别为0.991、0.993、0.993和0.993,平均Hausdorff距离(HD)分别为12.512、12.813、12.449和13.661,平均对称表面距离(ASSD)分别为0.654、0.550、0.572和0.564,均方距离(MSD)分别为559.098、577.797、548.189和559.652。此外,与动态CXR图像相比,使用AC-RegNet的四种基本分割网络的DSC均值分别显著提高了7.2、7.4、7.4和7.4% (p-value p-value p-value p-value )。结论:我们提出的三阶段配准流水线在动态肺场配准中是有效的。因此,它可以成为临床实践中动态肺场分析的有力工具,如肺气流检测和空气捕获定位。
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CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
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