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Using cardiac ionic cell models to interpret clinical data
Author(s) -
Corrado Cesare,
Avezzù Adelisa,
Lee Angela W. C.,
Mendoca Costa Caroline,
Roney Caroline H.,
Strocchi Marina,
Bishop Martin,
Niederer Steven A.
Publication year - 2020
Publication title -
wires mechanisms of disease
Language(s) - English
Resource type - Journals
ISSN - 2692-9368
DOI - 10.1002/wsbm.1508
Subject(s) - cardiac electrophysiology , electrophysiology , clinical electrophysiology , medicine , ventricular tachycardia , neuroscience , computational model , atrial fibrillation , disease , cardiology , computer science , artificial intelligence , biology
For over 100 years cardiac electrophysiology has been measured in the clinic. The electrical signals that can be measured span from noninvasive ECG and body surface potentials measurements through to detailed invasive measurements of local tissue electrophysiology. These electrophysiological measurements form a crucial component of patient diagnosis and monitoring; however, it remains challenging to quantitatively link changes in clinical electrophysiology measurements to biophysical cellular function. Multi‐scale biophysical computational models represent one solution to this problem. These models provide a formal framework for linking cellular function through to emergent whole organ function and routine clinical diagnostic signals. In this review, we describe recent work on the use of computational models to interpret clinical electrophysiology signals. We review the simulation of human cardiac myocyte electrophysiology in the atria and the ventricles and how these models are being used to link organ scale function to patient disease mechanisms and therapy response in patients receiving implanted defibrillators, \cardiac resynchronisation therapy or suffering from atrial fibrillation and ventricular tachycardia. There is a growing use of multi‐scale biophysical models to interpret clinical data. This allows cardiologists to link clinical observations with cellular mechanisms to better understand cardiopathophysiology and identify novel treatment strategies. This article is categorized under: Cardiovascular Diseases > Computational Models Cardiovascular Diseases > Biomedical Engineering Cardiovascular Diseases > Molecular and Cellular Physiology

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