Abdelrahman Khaled, Shiyovich Arthur, Huck Daniel M, Berman Adam N, Weber Brittany, Gupta Sumit, Cardoso Rhanderson, Blankstein Ron
Departments of Medicine (Cardiovascular Division) and Radiology, Brigham and Women's Hospital, Harvard Medical School, Boston, MA 02115, USA.
Diagnostics (Basel). 2024 Jan 5;14(2):125. doi: 10.3390/diagnostics14020125.
Coronary artery calcium (CAC) is a marker of coronary atherosclerosis, and the presence and severity of CAC have been shown to be powerful predictors of future cardiovascular events. Due to its value in risk discrimination and reclassification beyond traditional risk factors, CAC has been supported by recent guidelines, particularly for the purposes of informing shared decision-making regarding the use of preventive therapies. In addition to dedicated ECG-gated CAC scans, the presence and severity of CAC can also be accurately estimated on non-contrast chest computed tomography scans performed for other clinical indications. However, the presence of such "incidental" CAC is rarely reported. Advances in artificial intelligence have now enabled automatic CAC scoring for both cardiac and non-cardiac CT scans. Various AI approaches, from rule-based models to machine learning algorithms and deep learning, have been applied to automate CAC scoring. Convolutional neural networks, a deep learning technique, have had the most successful approach, with high agreement with manual scoring demonstrated in multiple studies. Such automated CAC measurements may enable wider and more accurate detection of CAC from non-gated CT studies, thus improving the efficiency of healthcare systems to identify and treat previously undiagnosed coronary artery disease.
冠状动脉钙化(CAC)是冠状动脉粥样硬化的一个标志物,并且CAC的存在和严重程度已被证明是未来心血管事件的有力预测指标。由于其在风险判别和超越传统风险因素进行重新分类方面的价值,CAC得到了近期指南的支持,特别是用于为关于预防性治疗使用的共同决策提供信息。除了专门的心电图门控CAC扫描外,在为其他临床指征进行的非增强胸部计算机断层扫描上也可以准确估计CAC的存在和严重程度。然而,这种“偶然”发现的CAC很少被报告。人工智能的进展现在已能够对心脏和非心脏CT扫描进行自动CAC评分。从基于规则的模型到机器学习算法和深度学习等各种人工智能方法已被应用于自动进行CAC评分。卷积神经网络作为一种深度学习技术,取得了最成功的方法,多项研究表明其与手动评分高度一致。这种自动CAC测量可能使从非门控CT研究中更广泛、更准确地检测CAC成为可能,从而提高医疗系统识别和治疗先前未诊断的冠状动脉疾病的效率。