Computational Medicine: What Electrophysiologists Should Know to Stay Ahead of the Curve
- 20-09-2024
- Artificial Intelligence
- Invasive Electrophysiology and Pacing (EK Heist and S Nedios, Section Editors)
- Authors
- Matthew J. Magoon
- Babak Nazer
- Nazem Akoum
- Patrick M. Boyle
- Published in
- Current Cardiology Reports | Issue 12/2024
Abstract
Purpose of Review
Technology drives the field of cardiac electrophysiology. Recent computational advances will bring exciting changes. To stay ahead of the curve, we recommend electrophysiologists develop a robust appreciation for novel computational techniques, including deterministic, statistical, and hybrid models.
Recent Findings
In clinical applications, deterministic models use biophysically detailed simulations to offer patient-specific insights. Statistical techniques like machine learning and artificial intelligence recognize patterns in data. Emerging clinical tools are exploring avenues to combine all the above methodologies. We review three ways that computational medicine will aid electrophysiologists by: (1) improving personalized risk assessments, (2) weighing treatment options, and (3) guiding ablation procedures. Leveraging clinical data that are often readily available, computational models will offer valuable insights to improve arrhythmia patient care.
Summary
As emerging tools promote personalized medicine, physicians must continue to critically evaluate technology-driven tools they consider using to ensure their appropriate implementation.
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- Title
- Computational Medicine: What Electrophysiologists Should Know to Stay Ahead of the Curve
- Authors
-
Matthew J. Magoon
Babak Nazer
Nazem Akoum
Patrick M. Boyle
- Publication date
- 20-09-2024
- Publisher
- Springer US
- Keywords
-
Artificial Intelligence
Cardiac Resynchronization Therapy
Cardiac Resynchronization Therapy
Cardiac Resynchronization Therapy
Cardiac Resynchronization Therapy
Atrial Fibrillation - Published in
-
Current Cardiology Reports / Issue 12/2024
Print ISSN: 1523-3782
Electronic ISSN: 1534-3170 - DOI
- https://doi.org/10.1007/s11886-024-02136-0
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