Personalized Low-Energy Defibrillation Through Feedback Based Resynchronization Therapy.

Computing in cardiology Pub Date : 2020-09-01 Epub Date: 2021-02-10 DOI:10.22489/cinc.2020.471
Ilija Uzelac, Flavio H Fenton
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Abstract

Aims: Defibrillation shocks may cause AV node burnout, scar formation, and pain. In this study, we present a real-time feedback-based control of ventricular fibrillation (VF) with a series of low-energy shocks using ventricular electrical activity as the feedback input.

Methods: Isolated rabbit hearts were Langendorff perfused and stained with a fluorescent Vm dye. The ventricular activity was measured with a pair of photodiodes, and processed with a feedback controller to calculate defibrillation shock parameters in real-time. Shock timing was based on desynchronized activation of the left and right ventricles during VF, and the strength was proportional to the amplitude difference of the photodiode signals. Shocks were delivered with a custom-developed arbitrary waveform trans-conductance amplifier.

Results: Feedback based resynchronization therapy converts VT to MT before sinus rhythm is restored with a reduction of defibrillation energy, compared to a single biphasic shock.

Conclusions: Feedback based resynchronization therapy is based on real-time sensing of ventricular activity, while a series of low-energy shocks are delivered, reducing the risk of associated side effects.

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通过基于反馈的再同步疗法实现个性化低能量除颤。
目的:除颤冲击可能会导致房室结烧毁、瘢痕形成和疼痛。在这项研究中,我们利用心室电活动作为反馈输入,通过一系列低能量电击对心室颤动(VF)进行实时反馈控制:方法:对离体兔心进行朗根多夫灌注并用荧光 Vm 染料染色。用一对光电二极管测量心室活动,并用反馈控制器进行处理,以实时计算除颤电击参数。电击时间是根据室颤期间左右心室的非同步激活确定的,强度与光电二极管信号的振幅差成正比。电击使用定制开发的任意波形跨导放大器进行:结果:与单次双相电击相比,基于反馈的再同步疗法可在窦性心律恢复前将 VT 转为 MT,同时降低除颤能量:结论:基于反馈的再同步疗法以实时感知心室活动为基础,同时进行一系列低能量电击,降低了相关副作用的风险。
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