Kim Do-Hyun, Kim Sun-Hwa, Chu Hyun-Wook, Kang Si-Hyuck, Yoon Chang-Hwan, Youn Tae-Jin, Chae In-Ho
Cardiovascular Center, Seoul National University Bundang Hospital, Seongnam-si, Korea.
Department of Internal Medicine, Kangdong Sacred Heart Hospital, Hallym University College of Medicine, Seoul, Korea.
Digit Health. 2024 Dec 18;10:20552076241306937. doi: 10.1177/20552076241306937. eCollection 2024 Jan-Dec.
Coronary angiography is fundamental for the diagnosis and treatment of coronary artery disease. Manual quantitative coronary angiography (QCA) is accurate and reproducible; however, it is time-consuming and labor-intensive. However, recent advancements in artificial intelligence (AI) have enabled automated and rapid analysis of medical images, addressing the need for real-time quantitative coronary analysis.
This study aimed to evaluate the accuracy of AI-based QCA (AI-QCA) compared with that via manual QCA and clinician acceptance.
This retrospective, single-center study was conducted in two phases. Phase 1 was a pilot study comparing AI-QCA with manual QCA and visual estimation. It involved 15 patients who underwent coronary angiography at Seoul National University Bundang Hospital between September 2011 and July 2021. Phase 2 included a larger cohort of 762 patients, with 1002 coronary angiograms analyzed between May 2020 and April 2021.
In phase 1, AI-QCA and manual QCA consistency varied among the observers, with AI-QCA showing superior consistency compared with visual estimation. However, a strong correlation between AI-QCA and manual-QCA was found in phase 2. AI-QCA accurately identified and quantitatively analyzed multiple lesions in the major vessels, providing results comparable with those of manual QCA.
AI-QCA demonstrated high concordance with manual QCA, offering real-time analysis and reduced workload. Therefore, AI-QCA has the potential to be a valuable tool for diagnosing and treating coronary artery disease, necessitating further studies for clinical validation.
冠状动脉造影术是冠心病诊断和治疗的基础。手动定量冠状动脉造影术(QCA)准确且可重复;然而,它耗时且费力。然而,人工智能(AI)的最新进展使得能够对医学图像进行自动化快速分析,满足了实时定量冠状动脉分析的需求。
本研究旨在评估基于人工智能的QCA(AI-QCA)与手动QCA相比的准确性以及临床医生的接受度。
这项回顾性单中心研究分两个阶段进行。第一阶段是一项试点研究,比较AI-QCA与手动QCA及视觉估计。该阶段纳入了2011年9月至2021年7月在首尔国立大学盆唐医院接受冠状动脉造影的15名患者。第二阶段纳入了762名患者的更大队列,在2020年5月至2021年4月期间分析了1002张冠状动脉造影图像。
在第一阶段,AI-QCA与手动QCA的一致性在观察者之间有所不同,与视觉估计相比,AI-QCA显示出更高的一致性。然而,在第二阶段发现AI-QCA与手动QCA之间存在强相关性。AI-QCA能够准确识别并定量分析主要血管中的多个病变,其结果与手动QCA相当。
AI-QCA与手动QCA显示出高度一致性,可提供实时分析并减少工作量。因此,AI-QCA有潜力成为诊断和治疗冠心病的有价值工具,需要进一步研究进行临床验证。