Cristina Jiménez-Jara, Rodrigo Salas, Rienzi Díaz-Navarro, Steren Chabert, Marcelo E Andia, Julián Vega, Jesús Urbina, Sergio Uribe, Tetsuro Sekine, Francesca Raimondi, Julio Sotelo
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引用次数: 0
摘要
心脏磁共振(CMR)成像已成为评估冠状动脉疾病(CAD)继发性心肌损伤的关键工具,可提供心脏形态、功能和组织组成的详细评估。人工智能(AI)的集成,包括机器学习和深度学习技术,通过自动化分割、改进图像解释和加速临床工作流程,增强了CMR的诊断能力。放射组学通过提取定量成像特征,通过揭示与疾病表征相关的亚视觉模式来补充人工智能。本系统综述分析了人工智能在CAD CMR中的应用。在MEDLINE、Web of Science和Scopus中进行结构化检索,检索截止日期为2025年3月17日,检索遵循PRISMA指南并使用CLAIM清单进行质量评估。共纳入106项研究:分类46项,放射组学19项,分割41项。人工智能模型用于对CAD和对照组进行分类,预测主要不良心血管事件(MACE)、心律失常和梗死后重构。放射组学能够区分急性和慢性梗死,并预测微血管阻塞,有时从非对比CMR。分割心肌获得了很高的性能(DSC高达0.95),但疤痕和水肿的描绘更具挑战性。报告的任务表现为中高水平(分类AUC = 0.66-1.00;分割DSC = 0.43-0.97;放射组学AUC = 0.57-0.99)。尽管结果令人鼓舞,但局限性包括数据集小或重叠。总之,人工智能和放射组学通过先进的CMR图像分析为CAD的诊断和预后提供了巨大的潜力。
AI Applied to Cardiac Magnetic Resonance for Precision Medicine in Coronary Artery Disease: A Systematic Review.
Cardiac magnetic resonance (CMR) imaging has become a key tool in evaluating myocardial injury secondary to coronary artery disease (CAD), providing detailed assessments of cardiac morphology, function, and tissue composition. The integration of artificial intelligence (AI), including machine learning and deep learning techniques, has enhanced the diagnostic capabilities of CMR by automating segmentation, improving image interpretation, and accelerating clinical workflows. Radiomics, through the extraction of quantitative imaging features, complements AI by revealing sub-visual patterns relevant to disease characterization. This systematic review analyzed AI applications in CMR for CAD. A structured search was conducted in MEDLINE, Web of Science, and Scopus up to 17 March 2025, following PRISMA guidelines and quality-assessed with the CLAIM checklist. A total of 106 studies were included: 46 on classification, 19 using radiomics, and 41 on segmentation. AI models were used to classify CAD vs. controls, predict major adverse cardiovascular events (MACE), arrhythmias, and post-infarction remodeling. Radiomics enabled differentiation of acute vs. chronic infarction and prediction of microvascular obstruction, sometimes from non-contrast CMR. Segmentation achieved high performance for myocardium (DSC up to 0.95), but scar and edema delineation were more challenging. Reported performance was moderate-to-high across tasks (classification AUC = 0.66-1.00; segmentation DSC = 0.43-0.97; radiomics AUC = 0.57-0.99). Despite promising results, limitations included small or overlapping datasets. In conclusion, AI and radiomics offer substantial potential to support diagnosis and prognosis of CAD through advanced CMR image analysis.