医学
冠状动脉
血管内超声
冠状动脉疾病
易损斑块
冠状动脉粥样硬化
概化理论
心脏病学
放射科
医学影像学
心脏成像
光学相干层析成像
内科学
动脉
人工智能
计算机科学
心理学
发展心理学
作者
Bernhard Föllmer,Michelle C. Williams,Damini Dey,Armin Arbab‐Zadeh,Pál Maurovich‐Horvat,Rick Volleberg,Daniel Rueckert,Julia A. Schnabel,David E. Newby,Marc R. Dweck,Giulio Guagliumi,Volkmar Falk,Aldo Javier Vázquez Mézquita,Federico Biavati,Ivana Išgum,Marc Dewey
标识
DOI:10.1038/s41569-023-00900-3
摘要
Artificial intelligence (AI) is likely to revolutionize the way medical images are analysed and has the potential to improve the identification and analysis of vulnerable or high-risk atherosclerotic plaques in coronary arteries, leading to advances in the treatment of coronary artery disease. However, coronary plaque analysis is challenging owing to cardiac and respiratory motion, as well as the small size of cardiovascular structures. Moreover, the analysis of coronary imaging data is time-consuming, can be performed only by clinicians with dedicated cardiovascular imaging training, and is subject to considerable interreader and intrareader variability. AI has the potential to improve the assessment of images of vulnerable plaque in coronary arteries, but requires robust development, testing and validation. Combining human expertise with AI might facilitate the reliable and valid interpretation of images obtained using CT, MRI, PET, intravascular ultrasonography and optical coherence tomography. In this Roadmap, we review existing evidence on the application of AI to the imaging of vulnerable plaque in coronary arteries and provide consensus recommendations developed by an interdisciplinary group of experts on AI and non-invasive and invasive coronary imaging. We also outline future requirements of AI technology to address bias, uncertainty, explainability and generalizability, which are all essential for the acceptance of AI and its clinical utility in handling the anticipated growing volume of coronary imaging procedures. In this Roadmap, Föllmer et al. summarize the evidence for the application of artificial intelligence (AI) technology to the imaging of vulnerable plaques in coronary arteries and discuss the current and future approaches to addressing the limitations of AI-guided coronary plaque imaging, such as bias, uncertainty and generalizability.
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