2021
DOI: 10.3389/fphys.2021.709485
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Machine Learning Identification of Pro-arrhythmic Structures in Cardiac Fibrosis

Abstract: Cardiac fibrosis and other scarring of the heart, arising from conditions ranging from myocardial infarction to ageing, promotes dangerous arrhythmias by blocking the healthy propagation of cardiac excitation. Owing to the complexity of the dynamics of electrical signalling in the heart, however, the connection between different arrangements of blockage and various arrhythmic consequences remains poorly understood. Where a mechanism defies traditional understanding, machine learning can be invaluable for enabl… Show more

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Cited by 3 publications
(3 citation statements)
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“…AI application in clinical environments is exponentially increasing and leading toward new diagnostic and treatment techniques ( Feeny et al, 2020 ; Sánchez de la Nava et al, 2021 ). This trend has also been implemented in the electrophysiology field ( Muffoletto et al, 2021 ; Siontis and Friedman, 2021 ), in which the use of algorithms has been used for detecting or evaluating proarrhythmicity ( Shao et al, 2018 ; Halfar et al, 2021 ), classifying different rhythms ( Wasserlauf et al, 2019 ) or automatizing tasks as segmentation ( Yang et al, 2017 ). Moreover, its use in safety pharmacology could be applied to analyze all the data produced by in silico simulations.…”
Section: Discussionmentioning
confidence: 99%
“…AI application in clinical environments is exponentially increasing and leading toward new diagnostic and treatment techniques ( Feeny et al, 2020 ; Sánchez de la Nava et al, 2021 ). This trend has also been implemented in the electrophysiology field ( Muffoletto et al, 2021 ; Siontis and Friedman, 2021 ), in which the use of algorithms has been used for detecting or evaluating proarrhythmicity ( Shao et al, 2018 ; Halfar et al, 2021 ), classifying different rhythms ( Wasserlauf et al, 2019 ) or automatizing tasks as segmentation ( Yang et al, 2017 ). Moreover, its use in safety pharmacology could be applied to analyze all the data produced by in silico simulations.…”
Section: Discussionmentioning
confidence: 99%
“…IMS remains pertinent to current research with new studies endeavoring to find new treatments 17 and improve identification, 18 underscoring the ongoing research interest in advancing our understanding of IMS. At the same time, CMR imaging has sustained its relevance in cardiovascular research, with the prevalence of recent studies demonstrating continued research interest in advancing the diagnostic capabilities and roles of CMR imaging for heart conditions 19 , 20…”
Section: Related Workmentioning
confidence: 99%
“…AI application on clinical environments is exponentially increasing and leading towards new diagnostic and treatment techniques (Feeny et al, 2020;. This trend has also been implemented in the electrophysiology field (Muffoletto et al, 2021;Siontis and Friedman, 2021), in which the use of algorithms has been used for detecting or evaluating proarrhythmicity (Shao et al, 2018;Halfar et al, 2021), classifying different rhythms (Wasserlauf et al, 2019) or automatizing tasks as segmentation (Yang et al, 2017). Moreover, its use in safety pharmacology could be applied to analyze all the data produced by in silico simulations.…”
Section: Artificial Intelligence Algorithms For Arrhythmia Maintenancementioning
confidence: 99%