Department of Nuclear Medicine, University Hospital Zurich, Rämistrasse 100, Zurich, 8091, Switzerland.
University of Zurich, Zurich, Switzerland.
Int J Cardiovasc Imaging. 2024 May;40(5):951-966. doi: 10.1007/s10554-024-03080-4. Epub 2024 May 3.
Almost 35 years after its introduction, coronary artery calcium score (CACS) not only survived technological advances but became one of the cornerstones of contemporary cardiovascular imaging. Its simplicity and quantitative nature established it as one of the most robust approaches for atherosclerotic cardiovascular disease risk stratification in primary prevention and a powerful tool to guide therapeutic choices. Groundbreaking advances in computational models and computer power translated into a surge of artificial intelligence (AI)-based approaches directly or indirectly linked to CACS analysis. This review aims to provide essential knowledge on the AI-based techniques currently applied to CACS, setting the stage for a holistic analysis of the use of these techniques in coronary artery calcium imaging. While the focus of the review will be detailing the evidence, strengths, and limitations of end-to-end CACS algorithms in electrocardiography-gated and non-gated scans, the current role of deep-learning image reconstructions, segmentation techniques, and combined applications such as simultaneous coronary artery calcium and pulmonary nodule segmentation, will also be discussed.
在引入近 35 年后,冠状动脉钙评分(CACS)不仅经受住了技术进步的考验,而且成为当代心血管成像的基石之一。其简单性和定量性质使其成为初级预防中动脉粥样硬化性心血管疾病风险分层的最可靠方法之一,也是指导治疗选择的有力工具。计算模型和计算机能力的突破性进展转化为基于人工智能(AI)的方法的激增,这些方法直接或间接地与 CACS 分析相关联。本综述旨在提供当前应用于 CACS 的基于 AI 的技术的必要知识,为全面分析这些技术在冠状动脉钙成像中的应用奠定基础。虽然本综述的重点将详细介绍心电图门控和非门控扫描中端到端 CACS 算法的证据、优势和局限性,但也将讨论深度学习图像重建、分割技术以及同时进行冠状动脉钙和肺结节分割等联合应用的当前作用。