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基于深度学习的对比增强冠状动脉CT血管造影术对主动脉瓣钙化的自动量化

Deep learning based automatic quantification of aortic valve calcification on contrast enhanced coronary CT angiography.

作者信息

Park Daebeom, Kwon Soon-Sung, Song Yoona, Kim Yoon A, Jeong Baren, Lee Whal, Park Eun-Ah

机构信息

Department of Clinical Medical Sciences, Seoul National University College of Medicine, Seoul, Korea.

AI Medic Inc, Seoul, Korea.

出版信息

Sci Rep. 2025 Mar 12;15(1):8472. doi: 10.1038/s41598-025-93744-5.

Abstract

Quantifying aortic valve calcification is critical for assessing the severity of aortic stenosis, predicting cardiovascular risk, and guiding treatment decisions. This study evaluated the feasibility of a deep learning-based automatic quantification of aortic valve calcification using contrast-enhanced coronary CT angiography and compared the results with manual calcium scoring. A retrospective analysis of 177 patients undergoing aortic stenosis evaluation was conducted, divided into a development set (n = 97) and an internal validation set (n = 80). The DeepLab v3 + model segmented the ascending aorta, and the XGBoost model refined the aortic valve region using representative attenuation values. Calcifications were identified with a tailored threshold based on these values and quantified using a weighted scoring method analogous to the Agatston score. The automated method showed excellent agreement with manual Agatston scores derived from non-contrast CT (Pearson correlation coefficient = 0.93, 95% confidence interval [CI]: 0.89-0.95, p < 0.001, concordance correlation coefficient = 0.92, 95% CI: 0.87-0.95). For classifying severe aortic stenosis, defined by calcium scores exceeding 2000 for men and 1300 for women, the approach achieved a sensitivity of 88.6%, specificity of 91.1%, and overall accuracy of 90.0%. This deep learning model provides automated aortic valve calcification quantification with high accuracy on enhanced CT. This approach offers an alternative for measuring aortic valve calcium when non-contrast CT is unavailable, with the potential to reduce reliance on non-contrast CT, minimize operator dependency, and lower patient radiation exposure.

摘要

量化主动脉瓣钙化对于评估主动脉瓣狭窄的严重程度、预测心血管风险以及指导治疗决策至关重要。本研究评估了使用对比增强冠状动脉CT血管造影基于深度学习自动量化主动脉瓣钙化的可行性,并将结果与手动钙评分进行比较。对177例接受主动脉瓣狭窄评估的患者进行了回顾性分析,分为开发集(n = 97)和内部验证集(n = 80)。DeepLab v3 +模型分割升主动脉,XGBoost模型使用代表性衰减值细化主动脉瓣区域。根据这些值用定制阈值识别钙化,并使用类似于阿加斯顿评分的加权评分方法进行量化。自动化方法与非对比CT得出的手动阿加斯顿评分显示出极好的一致性(Pearson相关系数 = 0.93,95%置信区间[CI]:0.89 - 0.95,p < 0.001,一致性相关系数 = 0.92,95% CI:0.87 - 0.95)。对于将男性钙评分超过2000、女性钙评分超过1300定义为严重主动脉瓣狭窄的分类,该方法的敏感性为88.6%,特异性为91.1%,总体准确率为90.0%。这种深度学习模型在增强CT上提供了高精度的自动主动脉瓣钙化量化。当无法进行非对比CT时,这种方法为测量主动脉瓣钙化提供了一种替代方法,有可能减少对非对比CT的依赖,最大限度地减少操作者依赖性,并降低患者的辐射暴露。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6d54/11897391/615ecc5007b3/41598_2025_93744_Fig1_HTML.jpg

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