Abstract

Wearable cardioverter defibrillator (WCD) is a life saving, wearable, noninvasive therapeutic device that prevents fatal ventricular arrhythmic propagation that leads to sudden cardiac death (SCD). WCD are frequently prescribed to patients deemed to be at high arrhythmic risk but the underlying pathology is potentially reversible or to those who are awaiting an implantable cardioverter-defibrillator. WCD is programmed to detect appropriate arrhythmic events and generate high energy shock capable of depolarizing the myocardium and thus re-initiating the sinus rhythm. WCD guidelines dictate very high reliability and accuracy to deliver timely and optimal therapy. Computational model-based process validation can verify device performance and benchmark the device setting to suit personalized requirements. In this article, we present a computational pipeline for WCD validation, both in terms of shock classification and shock optimization. For classification, we propose a convolutional neural network-“Long Short Term Memory network (LSTM) full form” (Convolutional neural network- Long short term memory network (CNN-LSTM)) based deep neural architecture for classifying shockable rhythms like Ventricular Fibrillation (VF), Ventricular Tachycardia (VT) vs. other kinds of non-shockable rhythms. The proposed architecture has been evaluated on two open access ECG databases and the classification accuracy achieved is in adherence to American Heart Association standards for WCD. The computational model developed to study optimal electrotherapy response is an in-silico cardiac model integrating cardiac hemodynamics functionality and a 3D volume conductor model encompassing biophysical simulation to compute the effect of shock voltage on myocardial potential distribution. Defibrillation efficacy is simulated for different shocking electrode configurations to assess the best defibrillator outcome with minimal myocardial damage. While the biophysical simulation provides the field distribution through Finite Element Modeling during defibrillation, the hemodynamic module captures the changes in left ventricle functionality during an arrhythmic event. The developed computational model, apart from acting as a device validation test-bed, can also be used for the design and development of personalized WCD vests depending on subject-specific anatomy and pathology.

Highlights

  • Sudden cardiac death (SCD) is a sudden and unpredictable event caused due to loss of cardiac functionality

  • Higher voltage gradient leads to greater myocardial damage, we have proposed the error measure reflecting the efficacy of the defibrillation (ED) using weighted KL divergence (KLD) (WKLD) DwKL

  • We present a computational pipeline for wearable cardioverter-defibrillator (WCD) performance validation, both in terms of shockable arrhythmia classification and optimal electrotherapy generation

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Summary

Introduction

Sudden cardiac death (SCD) is a sudden and unpredictable event caused due to loss of cardiac functionality. SCD accounts for the largest cause of natural death in the adult population, causing around 13% of deaths in the overall population and about 36% of deaths in heart failure patients (Smith and Cain., 2006). The leading cause of SCD is primarily attributed to electrical abnormality like ventricular arrhythmia (VA) and ventricular fibrillation (VF) followed by structural cardiac disorders like ischemia. VF is usually lethal within minutes of its inception and if not immediately treated, leads to cardiac arrest (Barraud et al, 2017). Electrical defibrillation through wearable cardioverter-defibrillator (WCD) provides a non-invasive therapeutic option for patients during a period when the risk of SCD is changing or unclear (Poole et al, 2008; Sharma et al, 2017)

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