ESC Congress 2022 Imaging Highlights
- PMID: 37405337
- PMCID: PMC10316344
- DOI: 10.15420/ecr.2022.46
ESC Congress 2022 Imaging Highlights
Abstract
Cardiac imaging is an ever-evolving area, with imaging parameters and application in constant re-evaluation. This was reflected in many imaging debates and by the increased number of scientific contributions at the European Society of Cardiology Congress in 2022. While clinical trials tried to answer clinical questions related to the performance of different imaging modalities, many high-quality presentations focused on new imaging biomarkers in different scenarios, such as heart failure with preserved ejection fraction, valvular heart disease or long COVID. This highlights the need for the translation of cardiac imaging technology from research interests towards established measures of clinical practice.
Keywords: COVID-19; Stress cardiac magnetic resonance; artificial intelligence; heart failure with preserved ejection fraction; strain; tricuspid regurgitation; viability.
Copyright © 2023, Radcliffe Cardiology.
Conflict of interest statement
Disclosures: VP has received grants from Bayer and is part of the American College of Cardiology (ACC) PostCOVID and Myocarditis Definition taskforces; and is on the European Cardiology Review editorial board; this did not influence acceptance.
References
-
- Bottcher M. DanNICAD-2 – perfusion scanning with MR or PET after a positive CT coronary angiography. ESC 365. 2022. https://esc365.escardio.org/presentation/255326 (accessed 19 September 2022)
-
- Newby D. The PRE18FFIR trial: coronary plaque activity to predict recurrent events. ESC 365. 2022. https://esc365.escardio.org/presentation/255329 (accessed 19 September 2022)
-
- Perera D. REVIVED – percutaneous revascularisation for ischaemic ventricular dysfunction. ESC 365. 2022. https://esc365.escardio.org/presentation/255284 (accessed 19 September 2022)
-
- Ouyang D. EchoNet-RCT – safety and efficacy study of AI LVEF. ESC 365. 2022. https://esc365.escardio.org/presentation/255290 (accessed 19 September 2022)
-
- Strange G. AI-ENHANCED detection of aortic stenosis. ESC 365. 2022. https://esc365.escardio.org/presentation/255318 (accessed 19 September 2022)
Publication types
LinkOut - more resources
Full Text Sources
