深度学习在冠状动脉钙化中的应用进展

Ke-Xin Tang, Yan-Lin Wu, Su-Kang Shan, Ling-Qing Yuan
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引用次数: 0

摘要

冠状动脉钙化(CAC)是冠状动脉粥样硬化进展过程中的一种特征性病理改变,被认为是重大不良心血管事件(MACE)的独立预测因子。CAC 的分布、病理分类和定量评估是影响 MACE 发生率和指导冠状动脉内介入治疗的关键因素。深度学习方法是人工智能中被广泛探索的一个领域,它通过构建多层神经网络模型来实现对大数据的学习和理解。这种稳健的方法为临床智能医学影像诊断提供了重要支持。目前,深度学习方法已被应用于冠状动脉钙化斑块的识别和量化,不仅提高了诊断效率,还有助于中低风险患者的早期预防和治疗。本文回顾了深度学习在冠状动脉钙化中的应用进展,以全面了解这一领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Advancements in the application of deep learning for coronary artery calcification

Advancements in the application of deep learning for coronary artery calcification
Coronary Artery Calcification (CAC) is a characteristic pathological alteration in the progression of coronary atherosclerosis and is considered an independent predictor of Major Adverse Cardiovascular Events (MACE). The distribution, pathological classification, and quantitative evaluation of CAC are pivotal factors influencing the incidence of MACE and guiding intracoronary interventions. Deep learning methods, a widely explored domain in artificial intelligence, achieve learning and understanding of big data by constructing multi-layer neural network models. This robust approach offers significant support for intelligent medical image diagnosis within clinical settings. Currently, deep learning methods have been applied to the identification and quantification of coronary artery calcification plaques, which not only improve diagnostic efficiency but also contribute to the early prevention and treatment of patients at moderate to low risk. This article reviews the progress of deep learning applications in coronary artery calcification to gain a comprehensive understanding of this field.
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