Mazumder Oishee, Banerjee Rohan, Roy Dibyendu, Mukherjee Ayan, Ghose Avik, Khandelwal Sundeep, Sinha Aniruddha
TCS Research, Tata Consultancy Services, Kolkata, India.
Front Physiol. 2021 Dec 10;12:787180. doi: 10.3389/fphys.2021.787180. eCollection 2021.
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 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.
可穿戴式心脏复律除颤器(WCD)是一种挽救生命的、可穿戴的无创治疗设备,可防止导致心源性猝死(SCD)的致命性室性心律失常传播。WCD通常被开给那些被认为心律失常风险高但潜在病理状况可能可逆的患者,或者那些正在等待植入式心脏复律除颤器的患者。WCD被编程以检测适当的心律失常事件,并产生能够使心肌去极化从而重新启动窦性心律的高能电击。WCD指南规定了非常高的可靠性和准确性,以便及时提供最佳治疗。基于计算模型的过程验证可以验证设备性能并根据个性化需求对设备设置进行基准测试。在本文中,我们提出了一种用于WCD验证的计算流程,包括电击分类和电击优化两个方面。对于分类,我们提出了一种基于卷积神经网络-长短期记忆网络(CNN-LSTM)的深度神经架构,用于对可电击心律(如心室颤动(VF)、室性心动过速(VT))与其他不可电击心律进行分类。所提出的架构已在两个开放获取的心电图数据库上进行了评估,所达到的分类准确率符合美国心脏协会对WCD的标准。为研究最佳电治疗反应而开发的计算模型是一个整合了心脏血流动力学功能的心脏模型和一个包含生物物理模拟以计算电击电压对心肌电位分布影响的三维容积导体模型。针对不同的电击电极配置模拟除颤效果,以评估在心肌损伤最小的情况下最佳的除颤器结果。虽然生物物理模拟通过有限元建模在除颤过程中提供场分布,但血流动力学模块捕捉心律失常事件期间左心室功能的变化。所开发的计算模型除了作为设备验证试验台外,还可根据特定个体的解剖结构和病理状况用于个性化WCD背心的设计和开发。