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  3. Artificial Intelligence in Valvular Heart Disease: Innovations and Future Directions.
 

Artificial Intelligence in Valvular Heart Disease: Innovations and Future Directions.

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BORIS DOI
10.48620/92207
Date of Publication
October 27, 2025
Publication Type
Article
Division/Institute

Clinic of Cardiology

Clinic of Cardiology

Contributor
Maznyczka, Annette
Nuis, Rutger-Jan
Shiri, Isaac
Clinic of Cardiology
Ternacle, Julien
Garot, Philippe
van den Dorpel, Mark M P
Khokhar, Arif A
De Lucia, Raffaele
Orini, Michele
Kutty, Shelby
Grapsa, Julia
Gräni, Christoph
Clinic of Cardiology
Pandey, Ambarish
Becker, Taylor
O'Gallagher, Kevin
Mortier, Peter
Dasi, Lakshmi Prasad
Kofoed, Klaus Fuglsang
Engelhardt, Sandy
Biaggi, Patric
Ahmad, Faraz S
Wang, Dee Dee
Leroux, Lionel
Modine, Thomas
Hahn, Rebecca T
Windecker, Stephan
Clinic of Cardiology
Van Mieghem, Nicolas M
De Backer, Ole
Subject(s)

600 - Technology::610...

Series
JACC: Cardiovascular Interventions
ISSN or ISBN (if monograph)
1876-7605
1936-8798
Publisher
Elsevier
Language
English
Publisher DOI
10.1016/j.jcin.2025.08.031
PubMed ID
41161917
Uncontrolled Keywords

artificial intelligen...

digital twin

fusion imaging

multi-modality imagin...

valvular heart diseas...

Description
Managing valvular heart disease (VHD) requires integrating multimodal data, including demographics, symptoms, biomarkers, electrocardiogram findings, and imaging studies. However, the capacity and processing power of the human mind are limited, particularly in the current era where vast quantities of complex data require rapid processing. Integrating artificial intelligence (AI) into the management of VHD offers an opportunity to enhance diagnostic accuracy, streamline clinical workflows, optimize procedural strategies, and predict outcomes and disease progression. Subsets of AI such as machine learning and deep learning algorithms can uncover the unseen data from routine investigations (eg, electrocardiograms, echocardiography, and computed tomography), providing robust and accurate risk prediction tools to inform personalized treatment strategies. Intraprocedurally, AI-based enhancements in imaging guidance can be leveraged to improve procedural safety and success. Digital twin technology can allow case-specific disease modelling, such as simulating valve designs and predicting adverse events, fostering precision medicine. By using the full potential of AI, clinicians can provide a comprehensive, personalized management strategy for VHD patients, ultimately enhancing clinical outcomes. However, models based on AI algorithms require rigorous validation across multiple centers to ensure their reliability. Concerns about bias, data privacy, and limited transparency challenge the application of AI decision-making to digital health care. This review discusses the applications of AI in the management of patients with VHD, highlights the future directions of AI technologies, and considers the challenges of integrating AI into clinical practice.
Handle
https://boris-portal.unibe.ch/handle/20.500.12422/222464
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File(s)
FileFile TypeFormatSizeLicensePublisher/Copright statementContent
1-s2.0-S1936879825022666-main.pdftextAdobe PDF19.45 MBpublished
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