Non-invasive localization of post-infarct ventricular tachycardia exit sites to guide ablation planning: a computational deep learning platform utilizing the 12-lead electrocardiogram and intracardiac electrograms from implanted devices

Author:

Monaci Sofia1ORCID,Qian Shuang1ORCID,Gillette Karli2ORCID,Puyol-Antón Esther1ORCID,Mukherjee Rahul13ORCID,Elliott Mark K13ORCID,Whitaker John13ORCID,Rajani Ronak13ORCID,O’Neill Mark1ORCID,Rinaldi Christopher A13ORCID,Plank Gernot2ORCID,King Andrew P1ORCID,Bishop Martin J1ORCID

Affiliation:

1. Biomedical Engineering & Imaging Sciences, King’s College London , London SE1 7EH , United Kingdom

2. Medical University of Graz , Graz 8036 , Austria

3. Guy’s and St Thomas’ Hospital , London SE1 7EH , United Kingdom

Abstract

AbstractAimsExisting strategies that identify post-infarct ventricular tachycardia (VT) ablation target either employ invasive electrophysiological (EP) mapping or non-invasive modalities utilizing the electrocardiogram (ECG). Their success relies on localizing sites critical to the maintenance of the clinical arrhythmia, not always recorded on the 12-lead ECG. Targeting the clinical VT by utilizing electrograms (EGM) recordings stored in implanted devices may aid ablation planning, enhancing safety and speed and potentially reducing the need of VT induction. In this context, we aim to develop a non-invasive computational-deep learning (DL) platform to localize VT exit sites from surface ECGs and implanted device intracardiac EGMs.Methods and resultsA library of ECGs and EGMs from simulated paced beats and representative post-infarct VTs was generated across five torso models. Traces were used to train DL algorithms to localize VT sites of earliest systolic activation; first tested on simulated data and then on a clinically induced VT to show applicability of our platform in clinical settings. Localization performance was estimated via localization errors (LEs) against known VT exit sites from simulations or clinical ablation targets. Surface ECGs successfully localized post-infarct VTs from simulated data with mean LE = 9.61 ± 2.61 mm across torsos. VT localization was successfully achieved from implanted device intracardiac EGMs with mean LE = 13.10 ± 2.36 mm. Finally, the clinically induced VT localization was in agreement with the clinical ablation volume.ConclusionThe proposed framework may be utilized for direct localization of post-infarct VTs from surface ECGs and/or implanted device EGMs, or in conjunction with efficient, patient-specific modelling, enhancing safety and speed of ablation planning.

Funder

National Institute for Health Research Biomedical Research Centre

St. Thomas’ Trust and King’s College

Centre of Excellence in Medical Engineering

Wellcome Trust

Engineering and Physical Sciences Research Council

Medical Research Council New Investigator

Publisher

Oxford University Press (OUP)

Subject

Physiology (medical),Cardiology and Cardiovascular Medicine

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