Joshi Mugdha, Melo Diana Patricia, Ouyang David, Slomka Piotr J, Williams Michelle C, Dey Damini
Department of Medicine, Stanford Healthcare, Palo Alto, CA, USA.
Division of Cardiovascular Medicine, Stanford Healthcare, Palo Alto, CA, USA.
Curr Cardiol Rep. 2023 Mar;25(3):109-117. doi: 10.1007/s11886-022-01837-8. Epub 2023 Jan 28.
In this review, we aim to summarize state-of-the-art artificial intelligence (AI) approaches applied to cardiovascular CT and their future implications.
Recent studies have shown that deep learning networks can be applied for rapid automated segmentation of coronary plaque from coronary CT angiography, with AI-enabled measurement of total plaque volume predicting future heart attack. AI has also been applied to automate assessment of coronary artery calcium on cardiac and ungated chest CT and to automate the measurement of epicardial fat. Additionally, AI-based prediction models integrating clinical and imaging parameters have been shown to improve prediction of cardiac events compared to traditional risk scores. Artificial intelligence applications have been applied in all aspects of cardiovascular CT - in image acquisition, reconstruction and denoising, segmentation and quantitative analysis, diagnosis and decision assistance and to integrate prognostic risk from clinical data and images. Further incorporation of artificial intelligence in cardiovascular imaging holds important promise to enhance cardiovascular CT as a precision medicine tool.
在本综述中,我们旨在总结应用于心血管CT的最新人工智能(AI)方法及其未来影响。
最近的研究表明,深度学习网络可用于从冠状动脉CT血管造影中快速自动分割冠状动脉斑块,通过人工智能测量总斑块体积可预测未来心脏病发作。人工智能还被应用于在心脏和非门控胸部CT上自动评估冠状动脉钙化以及自动测量心外膜脂肪。此外,与传统风险评分相比,整合临床和影像参数的基于人工智能的预测模型已被证明可改善心脏事件的预测。人工智能应用已应用于心血管CT的各个方面——图像采集、重建与去噪、分割与定量分析、诊断与决策辅助以及整合临床数据和图像的预后风险。进一步将人工智能纳入心血管成像有望显著提升心血管CT作为精准医学工具的作用。