| Literature DB >> 35435570 |
Alessandra Scoccia1, Mariusz Tomaniak1,2, Tara Neleman1, Frederik T W Groenland1, Annemieke C Ziedses des Plantes1, Joost Daemen3.
Abstract
PURPOSE OF REVIEW: Three-dimensional quantitative coronary angiography-based methods of fractional flow reserve (FFR) derivation have emerged as an appealing alternative to conventional pressure-wire-based physiological lesion assessment and have the potential to further extend the use of physiology in general. Here, we summarize the current evidence related to angiography-based FFR and perspectives on future developments. RECENTEntities:
Keywords: Angiography-based FFR; FFRangio; Functional lesion assessment; Percutaneous coronary intervention; Quantitative flow ratio; Vessel FFR
Mesh:
Year: 2022 PMID: 35435570 PMCID: PMC9188492 DOI: 10.1007/s11886-022-01687-4
Source DB: PubMed Journal: Curr Cardiol Rep ISSN: 1523-3782 Impact factor: 3.955
Fig. 1Commercially available software for angiography-based FFR. *Data on file, unpublished data provided by CathWorks. (Photo permissions: FFRangio with permission from CathWorks; QFR with permission from Medis Medical Imaging Systems B.V.; vFFR with permission from Pie Medical Imaging B.V.; and caFFR with permission from RainMed Medical Technology Co., Ltd.)
Major studies investigating the diagnostic performance of Pre-PCI angiography-based fractional flow reserve
| Kornowski et al | FFRangio | 2016 | Prospective | 101 (88) | 88 | 98 | 94 | |||||
| Trobs et al | FFRangio | 2016 | Retrospective | 100 (73) | 0.93 | 79 | 94 | 85 | 92 | 90 | ||
| Pellicano et al | FFRangio | 2017 | Prospective | 203 (184) | 88 | 95 | 93 | |||||
| FAST FFR | FFRangio | 2019 | Prospective | 319 (301) | 94 | 94 | 91 | 89 | 95 | 92 | ||
| Omori et al | FFRangio | 2019 | Prospective | 118 (50) | 92 | 92 | 92 | |||||
| FAVOR pilot study | cQFR | 2016 | Prospective | 84 (73) | 0.92 | 74 | 91 | 80 | 88 | 86 | ||
| FAVOR II China study | QFR | 2017 | Prospective | 332 (308) | 0.96 | 95 | 92 | 86 | 97 | 93 | ||
| Yazaki—Ishii | QFR | 2017 | Retrospective | 151 (142) | 0.93 | 89 | 89 | 77 | 95 | 89 | ||
| The WIFI II study | QFR | 2018 | Substudy | 292 (191) | 86 | 77 | 86 | 75 | 87 | |||
| The FAVOR II Europe-Japan | QFR | 2018 | Prospective | 317 (329) | 0.92 | 87 | 87 | 76 | 93 | 87 | ||
| Choi et al | QFR | 2020 | Registry | 599 (452) | 0.95 | 92 | 91 | 87 | 95 | 91 | ||
| Westra et al | QFR | 2019 | Meta-analysis | 969 (819) | 84 | 88 | 80 | 95 | 87 | |||
| Zuo et al | QFR | 2019 | Meta-analysis | 8213 | 0.92 | 90 | 88 | |||||
| FAST study | vFFR | 2019 | Retrospective | 100 (100) | 0.93 | |||||||
| FAST EXTEND | vFFR | 2020 | Retrospective | 294 (294) | 0.94 | 75 | 94 | 84 | 89 | 88 | ||
| FAST II | vFFR | 2021 | Prospective | 500 (334) | 0.93 | 81 | 95 | 90 | 90 | 90 | ||
| FLASH FFR | caFFR | 2019 | Prospective | 328 | 0.98 | 90 | 99 | 97 | 95 | 95.7 | ||
| Ai et al | caFFR | 2020 | Retrospective | 57 (56) | 0.92 | 86 | 81 | 89 | 77 | 84 | Against IMR 25 | |
| Mejia Renteria et al | QFR | 2018 | Substudy | 115 (104) | IMR < 23 = 88%, IMR ≥ = 76% | |||||||
| Smit et al | QFR | 2019 | Prospective | 320 (259) | 71–69 | 95–91 | 85–74 | 89–88 | 88–85 | |||
| Emori et al | QFR | 2018 | Retrospective | 200 (150) | 87 vs 92 | |||||||
| Tang et al | QFR | 2021 | Retrospective | 185 (177) | QFR ≤ 0.94 predictors of VOCE | |||||||
| Cai et al | QFR | 2021 | Retrospective | 226 (208) | QFR ≤ 0.94 predictors of ISR | |||||||
| Renteira et al | QFR | 2020 | Retrospective | 138 (115) | 0.93–0.97 | 88 | ||||||
| Kleczynski et al | QFR | 2021 | 416 (221) | |||||||||
| Hansen et al | QFR | 2019 | Post hoc | 146 (118) | 0.89 | 92 | 94 | 94 | 91 | |||
| Lauri et al | QFR | 2020 | Retrospective | 91 (88) | 0.91 | 86 | 80 | 78 | 87 | 84 | ||
| Tebaldi et al | QFR | 2020 | Prospective | 184 (116) | 0.96 | 72 | 94 | 81 | 90 | 88 | ||
| Bar et al | QFR | 2021 | Post hoc | 946 (617) | ||||||||
| Milzi | QFR | 2021 | Retrospective | 280 (220) | 0.89 | 84 | 86 | |||||
| Watarai et al | QFR | 2019 | Prospective | 150 | 0.91 | 85 | 83 | 72 | 91 | |||
| Kleczyński et al | QFR | 2021 | Meta-analysis | 110 | 0.87 | 76 | 83 | 80 | ||||
| Hwang et al | QFR | 2019 | Retrospective | 253 (182) | 92 | 90 | 86 | 95 | 91 | |||
Abbreviations: ACS acute coronary syndrome, AUC area under the curve, caFFR computational pressure-flow dynamics derived FFR, FFR fractional flow reserve, iFR instantaneous wave free ratio, MI myocardial infarction, NPV negative predictive value, PPV positive predictive value, QFR quantitative flow ratio, vFFR vessel fractional flow reserve
Summary of the studies investigating the impact of post-PCI angiography-based fractional flow reserve
| HAWKEYE | QFR | 2019 | Prospective | (602) | 0.77* | 60* | 87* | *To predict 2-year VOCE. Cutoff ≤ 0.89 | |||
| Kogame et al | QFR | 2019 | Retrospective | (440) | 0.70* | 65* | 64* | *To predict 2-year VOCE. Cutoff ≤ 0.91 | |||
| FAST POST | vFFR | 2021 | Retrospective | 100 (100) | 0.98 | 80 | 97 | 94 | 88 | To predict FFR values < 0.90 | |
Abbreviations: ACS acute coronary syndrome, AUC area under the curve, caFFR computational pressure-flow dynamics derived FFR, FFR fractional flow reserve, iFR instantaneous wave free ratio, MI myocardial infarction, NPV negative predictive value, PPV positive predictive value, QFR quantitative flow ratio, vFFR vessel fractional flow reserve, VOCE vessel-oriented composite endpoint
*To predict 2-year VOCE