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Automated Proximal Coronary Artery Calcium Identification Using Artificial Intelligence: Advancing Cardiovascular Risk Assessment

EUROPEAN HEART JOURNAL-CARDIOVASCULAR IMAGING(2025)

Department of Cardiac Sciences

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Abstract
Aims Identification of proximal coronary artery calcium (CAC) may improve prediction of major adverse cardiac events (MACE) beyond the CAC score, particularly in patients with low CAC burden. We investigated whether the proximal CAC can be detected on gated cardiac CT and whether it provides prognostic significance with artificial intelligence (AI).Methods and results A total of 2016 asymptomatic adults with baseline CAC CT scans from a single site were followed up for MACE for 14 years. An AI algorithm to classify CAC into proximal or not was created using expert annotations of total and proximal CAC and AI-derived cardiac structures. The algorithm was evaluated for prognostic significance on AI-derived CAC segmentation. In 303 subjects with expert annotations, the classification of proximal vs. non-proximal CAC reached an area under receiver operating curve of 0.93 [95% confidence interval (CI) 0.91-0.95]. For prognostic evaluation, in an additional 588 subjects with mild AI-derived CAC scores (CAC score 1-99), the AI proximal involvement was associated with worse MACE-free survival (P = 0.008) and higher risk of MACE when adjusting for CAC score alone [hazard ratio (HR) 2.28, 95% CI 1.16-4.48, P = 0.02] or CAC score and clinical risk factors (HR 2.12, 95% CI 1.03-4.36, P = 0.04).Conclusion The AI algorithm could identify proximal CAC on CAC CT. The proximal location had modest prognostic significance in subjects with mild CAC scores. The AI identification of proximal CAC can be integrated into automatic CAC scoring and improves the risk prediction of CAC CT.
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Key words
artificial intelligence,coronary artery calcification,coronary artery disease,computed tomography
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要点】:该研究利用人工智能算法在心脏CT扫描中自动识别冠状动脉近端钙化(proximal CAC),提高了对心血管不良事件的预测能力,尤其在低钙化负担患者中。

方法】:研究创建了一个基于专家标注的AI算法,用于将冠状动脉钙化分类为近端或非近端,并在AI导出的钙化分割上进行预后意义的评估。

实验】:研究对2016名无症状成年人的基线心脏CT扫描进行了14年的随访,以评估MACE事件,并在303名有专家标注的受试者中,AI算法对近端与非近端CAC的分类达到了0.93的AUC值;在另外588名AI衍生CAC评分轻微的受试者中,近端钙化的AI识别与较低的MACE无事件生存率相关,并且在调整CAC评分和临床风险因素后,近端钙化与MACE风险增加相关。数据集来源于单一机构的基线CAC CT扫描。