Artificial Intelligence based fractional flow reserve.

Adrian Bednarek, Paweł Gąsior, Miłosz Jaguszewski, Piotr P Buszman, Krzysztof Milewski, Michał Hawranek, Robert Gil, Wojciech Wojakowski, Janusz Kochman, Mariusz Tomaniak
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Abstract

Fractional flow reserve (FFR) - a physiological indicator of coronary stenosis significance - has now become a widely used parameter also in the guidance of percutaneous coronary intervention (PCI). Several studies have shown the superiority of FFR compared to visual assessment, contributing to the reduction in clinical endpoints. However, the current approach to FFR assessment requires coronary instrumentation with a dedicated pressure wire and thus increasing invasiveness, cost, and duration of the procedure. Alternative, noninvasive methods of FFR assessment based on computational fluid dynamics are being widely tested; these approaches are generally not fully automated and may sometimes require substantial computational power. Nowadays, one of the most rapidly expanding fields in medicine is the use of artificial intelligence (AI) in therapy optimization, diagnosis, treatment, and risk stratification. AI usage contributes to the development of more sophisticated methods of imaging analysis and allows for the derivation of clinically important parameters in a faster and more accurate way. Over the recent years, AI utility in deriving FFR in a noninvasive manner has been increasingly reported. In this review, we critically summarize current knowledge in the field of AI-derived FFR based on data from computed tomography angiography, invasive angiography, optical coherence tomography, and intravascular ultrasound. Available solutions, possible future directions in optimizing cathlab performance, including the use of mixed reality, as well as current limitations standing behind the wide adoption of these techniques, are overviewed.

基于人工智能的分流储备。
血流储备分数(Fractional flow reserve, FFR)是反映冠状动脉狭窄程度的重要生理指标,目前已成为指导经皮冠状动脉介入治疗(PCI)的重要参数。几项研究表明FFR优于目测评估,有助于减少临床终点。然而,目前评估FFR的方法需要冠脉内固定专用压力线,因此增加了侵入性、成本和手术时间。基于计算流体动力学的FFR评估的非侵入性替代方法正在广泛测试;这些方法通常不是完全自动化的,有时可能需要大量的计算能力。如今,医学领域发展最为迅速的领域之一是人工智能(AI)在治疗优化、诊断、治疗和风险分层方面的应用。人工智能的使用有助于开发更复杂的成像分析方法,并允许以更快、更准确的方式推导临床重要参数。近年来,人工智能在非侵入性提取FFR方面的应用越来越多。在这篇综述中,我们批判性地总结了基于计算机断层血管造影、侵入性血管造影、光学相干断层扫描和血管内超声数据的人工智能衍生FFR领域的现有知识。概述了现有的解决方案,优化实验室性能的可能未来方向,包括混合现实的使用,以及这些技术广泛采用背后的当前限制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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