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Rethinking multiscale cardiac electrophysiology with machine learning and predictive modelling
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1-s2.0-S0010482518303147-main.pdf | Published version | 1.71 MB | Adobe PDF | View/Open |
Title: | Rethinking multiscale cardiac electrophysiology with machine learning and predictive modelling |
Authors: | Cantwell, C Mohamied, Y Tzortzis, K Garasto, S Houston, C Chowdhury, R Ng, F Bharath, A Peters, N |
Item Type: | Journal Article |
Abstract: | We review some of the latest approaches to analysing cardiac electrophysiology data using machine learning and predictive modelling. Cardiac arrhythmias, particularly atrial fibrillation, are a major global healthcare challenge. Treatment is often through catheter ablation, which involves the targeted localised destruction of regions of the myocardium responsible for initiating or perpetuating the arrhythmia. Ablation targets are either anatomically defined, or identified based on their functional properties as determined through the analysis of contact intracardiac electrograms acquired with increasing spatial density by modern electroanatomic mapping systems. While numerous quantitative approaches have been investigated over the past decades for identifying these critical curative sites, few have provided a reliable and reproducible advance in success rates. Machine learning techniques, including recent deep-learning approaches, offer a potential route to gaining new insight from this wealth of highly complex spatio-temporal information that existing methods struggle to analyse. Coupled with predictive modelling, these techniques offer exciting opportunities to advance the field and produce more accurate diagnoses and robust personalised treatment. We outline some of these methods and illustrate their use in making predictions from the contact electrogram and augmenting predictive modelling tools, both by more rapidly predicting future states of the system and by inferring the parameters of these models from experimental observations. |
Issue Date: | 9-Oct-2018 |
Date of Acceptance: | 14-Oct-2018 |
URI: | http://hdl.handle.net/10044/1/63445 |
DOI: | https://dx.doi.org/10.1016/j.compbiomed.2018.10.015 |
ISSN: | 0010-4825 |
Publisher: | Elsevier |
Start Page: | 339 |
End Page: | 351 |
Journal / Book Title: | Computers in Biology and Medicine |
Volume: | 104 |
Copyright Statement: | © 2018 The Authors. Published by Elsevier Ltd. This is an open access article under the CC BY license (http://creativecommons.org/licenses/BY/4.0/). |
Sponsor/Funder: | British Heart Foundation British Heart Foundation British Heart Foundation Rosetrees Trust |
Funder's Grant Number: | PG/15/59/31621 PG/16/17/32069 PG/16/17/32069 A1173/ M577 |
Keywords: | Cardiac arrhythmia Cardiac electrophysiology Deep learning Electrogram Machine learning Predictive modelling cs.LG math.DS q-bio.TO stat.ML 08 Information And Computing Sciences 11 Medical And Health Sciences 17 Psychology And Cognitive Sciences Biomedical Engineering |
Publication Status: | Published |
Online Publication Date: | 2018-10-18 |
Appears in Collections: | Bioengineering National Heart and Lung Institute Aeronautics |