利用基于迁移学习的三维 U 网与注意机制,实现非对比冠状动脉磁共振血管造影的自动血管分割与重塑

IF 4.2 1区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
Lu Lin, Yijia Zheng, Yanyu Li, Difei Jiang, Jian Cao, Jian Wang, Yueting Xiao, Xinsheng Mao, Chao Zheng, Yining Wang
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引用次数: 0

摘要

背景:冠状动脉磁共振血管造影术(CMRA)具有明显的优势,但依赖人工进行图像后处理需要大量人力和专业知识。本研究旨在设计和测试一种高效的人工智能(AI)模型,该模型能够自动从 CMRA 图像中分割和重塑冠状动脉,用于冠状动脉疾病(CAD)诊断:方法:利用已有冠状动脉 CT 血管造影模型的迁移学习,在 104 名受试者的 CMRA 数据集上建立、训练和验证了三维注意力感知 U-网络。此外,还对另外 70 名患者进行了独立临床评估。使用骰子相似系数(DSC)和召回率评估了人工智能模型分割冠状动脉的性能。人工智能模型与经验丰富的放射科医生手动处理血管重整的比较基于重新格式化图像质量(rIQ)评分、后处理时间和必要的用户交互次数。在子集数据中,以传统冠状动脉造影术(CAG)为参考,评估了人工智能分段 CMRA 对明显狭窄(直径缩小≥50%)的诊断性能:人工智能模型在训练集和验证集上的 DSC 分别为 0.952 和 0.944,召回率分别为 0.936 和 0.923。在临床评估中,该模型的表现优于人工处理,其血管后处理时间从632.6±17.0秒减少到77.4±8.9秒,用户交互次数从221±59次减少到8±2次。人工智能后处理图像保持了较高的rIQ评分,与人工处理的图像相当(2.7±0.8 vs 2.7±0.6;P=0.4806)。在有 CAG 的受试者中,CAD 的患病率为 71%。通过人工智能后处理的全心CMRA,基于患者分析的敏感性、特异性和准确性分别为94%、71%和88%:结论:人工智能自动分割系统能有效促进 CMRA 血管重组,减少放射医师的时间消耗。结论:人工智能自动分割系统能有效促进 CMRA 血管重整,减少放射医师的时间消耗,有望成为日常工作流程的标准组成部分,优化 CMRA 的临床应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic vessel segmentation and reformation of non-contrast coronary magnetic resonance angiography using transfer learning-based three-dimensional U-net with attention mechanism.

Background: Coronary magnetic resonance angiography (CMRA) presents distinct advantages, but its reliance on manual image post-processing is labor-intensive and requires specialized knowledge. This study aims to design and test an efficient artificial intelligence (AI) model capable of automating coronary artery segmentation and reformation from CMRA images for coronary artery disease (CAD) diagnosis.

Methods: By leveraging transfer learning from a pre-existing coronary computed tomography angiography model, a three-dimensional attention-aware U-Net was established, trained, and validated on a dataset of 104 subjects' CMRA. Furthermore, an independent clinical evaluation was conducted on an additional cohort of 70 patients. The AI model's performance in segmenting coronary arteries was assessed using the Dice similarity coefficient (DSC) and recall. The comparison between the AI model and manual processing by experienced radiologists on vessel reformation was based on reformatted image quality (rIQ) scoring, post-processing time, and the number of necessary user interactions. The diagnostic performance of AI-segmented CMRA for significant stenosis (≥50% diameter reduction) was evaluated using conventional coronary angiography (CAG) as a reference in sub-set data.

Results: The DSC of the AI model achieved on the training and validation sets were 0.952 and 0.944, with recalls of 0.936 and 0.923, respectively. In the clinical evaluation, the model outperformed manual processes by reducing vessel post-processing time, from 632.6±17.0 s to 77.4±8.9 s, and the number of user interactions from 221±59 to 8±2. The AI post-processed images maintained high rIQ scores comparable to those processed manually (2.7±0.8 vs 2.7±0.6; P = 0.4806). In subjects with CAG, the prevalence of CAD was 71%. The sensitivity, specificity, and accuracy at patient-based analysis were 94%, 71%, and 88%, respectively, by AI post-processed whole-heart CMRA.

Conclusion: The AI auto-segmentation system can effectively facilitate CMRA vessel reformation and reduce the time consumption for radiologists. It has the potential to become a standard component of daily workflows, optimizing the clinical application of CMRA in the future.

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来源期刊
CiteScore
10.90
自引率
12.50%
发文量
61
审稿时长
6-12 weeks
期刊介绍: Journal of Cardiovascular Magnetic Resonance (JCMR) publishes high-quality articles on all aspects of basic, translational and clinical research on the design, development, manufacture, and evaluation of cardiovascular magnetic resonance (CMR) methods applied to the cardiovascular system. Topical areas include, but are not limited to: New applications of magnetic resonance to improve the diagnostic strategies, risk stratification, characterization and management of diseases affecting the cardiovascular system. New methods to enhance or accelerate image acquisition and data analysis. Results of multicenter, or larger single-center studies that provide insight into the utility of CMR. Basic biological perceptions derived by CMR methods.
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