人工智能驱动的软件在评估静脉支架优化方面优于介入心脏病专家。

IF 1.9 Q3 CARDIAC & CARDIOVASCULAR SYSTEMS
Pablo M Rubio, Hector M Garcia-Garcia, Jason Galo, Abhishek Chaturvedi, Brian C Case, Gary S Mintz, Itsik Ben-Dor, Hayder Hashim, Ron Waksman
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引用次数: 0

摘要

背景:血管内超声(IVUS)评估的最佳支架部署与经皮冠状动脉介入治疗(PCI)后预后的改善有关。然而,由于IVUS的分析耗时且依赖于操作人员的专业知识,因此仍未得到充分利用。AVVIGO™+是fda批准的人工智能(AI)软件,可提供自动病变评估,但其在支架评估方面的性能尚未得到彻底研究。目的:为了评估人工智能驱动的软件(AVVIGO™+)是否在静脉支架扩张指数(支架扩张% =最小支架面积(MSA) /远端参考管腔面积)和地理遗漏(即支架边缘> 50%斑块负担- PB -)方面优于目前由介入性心脏病专家(IC)执行的金标准方法,定义为由介入性心脏病专家逐帧视觉评估。根据专家意见,在支架边缘5mm范围内选择最大管腔面积的MSA和参考框架。方法:本回顾性研究包括60例(47,997 IVUS框架)接受IVUS引导的PCI,通过IC和AVVIGO™+独立分析。评估包括最小支架面积(MSA)、支架扩张指数、近端和远端参考节段的PB。对于扩展,使用80%的阈值来定义次优结果。记录两种方法展开分析所需的时间。评价一致性、绝对差异和相对差异。结果:AVVIGO™+的平均膨胀率(70.3%)与IC(91.2%)一致,(p 2, p = 0.0053)。这导致了25例不一致的病例,其中AVVIGO™+报告了次优扩张,而IC将结果归类为适当。与IC相比,AVVIGO™+的分析时间显著缩短(0.76±0.39分钟)(1.89±0.62分钟)(p)。结论:与介入性心脏病专家相比,AVVIGO™+在检测次优支架扩张和地理遗漏方面表现出改进,同时也显著缩短了分析时间。这些发现表明,基于人工智能的平台可能为ivus引导的支架优化提供更可靠和有效的方法,具有增强临床实践一致性的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial intelligence-powered software outperforms interventional cardiologists in assessment of IVUS-based stent optimization.

Background: Optimal stent deployment assessed by intravascular ultrasound (IVUS) is associated with improved outcomes after percutaneous coronary intervention (PCI). However, IVUS remains underutilized due to its time-consuming analysis and reliance on operator expertise. AVVIGO™+, an FDA-approved artificial intelligence (AI) software, offers automated lesion assessment, but its performance for stent evaluation has not been thoroughly investigated.

Aim: To assess whether an artificial intelligence-powered software (AVVIGO™+) provides a superior evaluation of IVUS-based stent expansion index (%Stent expansion = Minimum Stent Area (MSA) / Distal reference lumen area) and geographic miss (i.e. >50 % plaque burden - PB - at stent edges) compared to the current gold standard method performed by interventional cardiologists (IC), defined as frame-by-frame visual assessment by interventional cardiologists, selecting the MSA and the reference frame with the largest lumen area within 5 mm of the stent edge, following expert consensus.

Methods: This retrospective study included 60 patients (47,997 IVUS frames) who underwent IVUS guided PCI, independently analyzed by IC and AVVIGO™+. Assessments included minimum stent area (MSA), stent expansion index, and PB at proximal and distal reference segments. For expansion, a threshold of 80 % was used to define suboptimal results. The time required for expansion analysis was recorded for both methods. Concordance, absolute and relative differences were evaluated.

Results: AVVIGO™ + consistently identified lower mean expansion (70.3 %) vs. IC (91.2 %), (p < 0.0001), primarily due to detecting frames with smaller MSA values (5.94 vs. 7.19 mm2, p = 0.0053). This led to 25 discordant cases in which AVVIGO™ + reported suboptimal expansion while IC classified the result as adequate. The analysis time was significantly shorter with AVVIGO™ + (0.76 ± 0.39 min) vs IC (1.89 ± 0.62 min) (p < 0.0001), representing a 59.7 % reduction. For geographic miss, AVVIGO™ + reported higher PB than IC at both distal (51.8 % vs. 43.0 %, p < 0.0001) and proximal (50.0 % vs. 43.0 %, p = 0.0083) segments. When applying the 50 % PB threshold, AVVIGO™ + identified PB ≥50 % not seen by IC in 12 cases (6 distal, 6 proximal).

Conclusion: AVVIGO™ + demonstrated improved detection of suboptimal stent expansion and geographic miss compared to interventional cardiologists, while also significantly reducing analysis time. These findings suggest that AI-based platforms may offer a more reliable and efficient approach to IVUS-guided stent optimization, with potential to enhance consistency in clinical practice.

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来源期刊
Cardiovascular Revascularization Medicine
Cardiovascular Revascularization Medicine CARDIAC & CARDIOVASCULAR SYSTEMS-
CiteScore
3.30
自引率
5.90%
发文量
687
审稿时长
36 days
期刊介绍: Cardiovascular Revascularization Medicine (CRM) is an international and multidisciplinary journal that publishes original laboratory and clinical investigations related to revascularization therapies in cardiovascular medicine. Cardiovascular Revascularization Medicine publishes articles related to preclinical work and molecular interventions, including angiogenesis, cell therapy, pharmacological interventions, restenosis management, and prevention, including experiments conducted in human subjects, in laboratory animals, and in vitro. Specific areas of interest include percutaneous angioplasty in coronary and peripheral arteries, intervention in structural heart disease, cardiovascular surgery, etc.
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