Department of Radiology, Azienda Ospedaliero-Universitaria (A.O.U.), di Cagliari-Polo di Monserrato, Cagliari, Italy.
University of Cagliari, School of Medicine and Surgery, Cagliari, Italy.
Eur J Radiol. 2024 Jul;176:111497. doi: 10.1016/j.ejrad.2024.111497. Epub 2024 May 6.
Carotid atherosclerosis plays a substantial role in cardiovascular morbidity and mortality. Given the multifaceted impact of this disease, there has been increasing interest in harnessing artificial intelligence (AI) and radiomics as complementary tools for the quantitative analysis of medical imaging data. This integrated approach holds promise not only in refining medical imaging data analysis but also in optimizing the utilization of radiologists' expertise. By automating time consuming tasks, AI allows radiologists to focus on more pertinent responsibilities. Simultaneously, the capacity of AI in radiomics to extract nuanced patterns from raw data enhances the exploration of carotid atherosclerosis, advancing efforts in terms of (1) early detection and diagnosis, (2) risk stratification and predictive modeling, (3) improving workflow efficiency, and (4) contributing to advancements in research. This review provides an overview of general concepts related to radiomics and AI, along with their application in the field of carotid vulnerable plaque. It also offers insights into various research studies conducted on this topic across different imaging techniques.
颈动脉粥样硬化在心血管发病率和死亡率中起着重要作用。鉴于这种疾病的多方面影响,人们越来越感兴趣地利用人工智能(AI)和放射组学作为医学影像学数据定量分析的补充工具。这种综合方法不仅有望改进医学影像学数据分析,还优化了放射科医生专业知识的利用。通过自动化耗时的任务,人工智能使放射科医生能够专注于更相关的职责。同时,人工智能在放射组学中从原始数据中提取细微模式的能力增强了对颈动脉粥样硬化的探索,在以下方面推动了研究进展:(1)早期检测和诊断,(2)风险分层和预测建模,(3)提高工作流程效率,以及(4)促进研究进展。这篇综述概述了与放射组学和人工智能相关的一般概念,以及它们在颈动脉易损斑块领域的应用。它还深入探讨了不同成像技术在该主题上开展的各种研究。