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Personalized Deep Learning for Ventricular Arrhythmias Detection on Medical loT Systems

机译:个性化深度学习用于医疗loT系统上的室性心律失常检测

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Life-threatening ventricular arrhythmias (VA) are the leading cause of sudden cardiac death (SCD), which is the most significant cause of natural death in the US [6]. The implantable cardioverter defibrillator (ICD) is a small device implanted to patients under high risk of SCD as a preventive treatment. The ICD continuously monitors the intracardiac rhythm and delivers shock when detecting the life-threatening VA. Traditional methods detect VA by setting criteria on the detected rhythm. However, those methods suffer from a high inappropriate shock rate and require a regular follow-up to optimize criteria parameters for each ICD recipient. To ameliorate the challenges, we propose the personalized computing framework for deep learning based VA detection on medical IoT systems. The system consists of intracardiac and surface rhythm monitors, and the cloud platform for data uploading, diagnosis, and CNN model personalization. We equip the system with real-time inference on both intracardiac and surface rhythm monitors. To improve the detection accuracy, we enable the monitors to detect VA collaboratively by proposing the cooperative inference. We also introduce the CNN personalization for each patient based on the computing framework to tackle the unlabeled and limited rhythm data problem. When compared with the traditional detection algorithm, the proposed method achieves comparable accuracy on VA rhythm detection and 6.6% reduction in inappropriate shock rate, while the average inference latency is kept at 71ms.
机译:危及生命的室性心律失常(VA)是心脏猝死(SCD)的主要原因,这是美国自然死亡的最重要原因[6]。植入式心脏复律除颤器(ICD)是一种用于预防SCD的高风险患者植入的小型设备。当检测到威胁生命的VA时,ICD会持续监测心内节律并发出电击。传统方法通过在检测到的节奏上设置标准来检测VA。然而,这些方法遭受高不适当的电击率,并且需要定期随访以优化每个ICD接受者的标准参数。为了缓解挑战,我们提出了个性化的计算框架,用于基于深度学习的医疗物联网系统上的VA检测。该系统由心内和表面节律监测器以及用于数据上传,诊断和CNN模型个性化的云平台组成。我们在心内和表面节奏监测器上为系统配备了实时推断功能。为了提高检测准确性,我们通过提出协作推理使监视器能够协作检测VA。我们还基于计算框架为每位患者介绍了CNN个性化设置,以解决无标签和有限的心律数据问题。与传统的检测算法相比,该方法在VA节律检测上具有可比的准确性,不适当的电击率降低了6.6%,而平均推理延迟则保持在71ms。

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