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首页> 外文期刊>IEEE transactions on biomedical circuits and systems >Real-Time Event-Driven Classification Technique for Early Detection and Prevention of Myocardial Infarction on Wearable Systems
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Real-Time Event-Driven Classification Technique for Early Detection and Prevention of Myocardial Infarction on Wearable Systems

机译:实时事件驱动分类技术可在可穿戴系统上早期检测和预防心肌梗塞

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摘要

A considerable portion of government health-care spending is allocated to the continuous monitoring of patients suffering from cardiovascular diseases, particularly myocardial infarction (MI). Wearable devices present a cost-effective means of monitoring patients' vital signs in ambulatory settings. A major challenge is to design such ultra-low energy devices for long-term patient monitoring. In this paper, we present a real-time event-driven classification technique based on the random forest classification scheme, which uses a confidence-related decision-making process. The main goal of this technique is to maintain a high classification accuracy while reducing the complexity of the classification algorithm. We validate our approach on a well-established and complete MI database (Physiobank, PTB Diagnostic ECG database [1]). Our experimental evaluation demonstrates that our real-time classification scheme outperforms the existing approaches in terms of energy consumption and battery lifetime by a factor of 2.60, with no classification quality loss.
机译:政府医疗保健支出中有相当一部分用于持续监测患有心血管疾病(尤其是心肌梗塞)的患者。可穿戴设备是一种在非卧床环境中监视患者生命体征的经济有效的方法。一个主要的挑战是设计用于长期患者监护的超低能量设备。在本文中,我们提出了一种基于随机森林分类方案的实时事件驱动分类技术,该技术使用了与置信度有关的决策过程。该技术的主要目标是保持较高的分类精度,同时降低分类算法的复杂性。我们在一个完善且完整的MI数据库(Physiobank,PTB Diagnostic ECG数据库[1])上验证了我们的方法。我们的实验评估表明,我们的实时分类方案在能耗和电池寿命方面比现有方法高出2.60倍,并且没有分类质量损失。

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