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首页> 外文期刊>IEEE transactions on biomedical circuits and systems >Real-Time Ultra-Low Power ECG Anomaly Detection Using an Event-Driven Neuromorphic Processor
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Real-Time Ultra-Low Power ECG Anomaly Detection Using an Event-Driven Neuromorphic Processor

机译:使用事件驱动的神经形式处理器实时超低功率ECG异常检测

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Accurate detection of pathological conditions in human subjects can be achieved through off-line analysis of recorded biological signals such as electrocardiograms (ECGs). However, human diagnosis is time-consuming and expensive, as it requires the time of medical professionals. This is especially inefficient when indicative patterns in the biological signals are infrequent. Moreover, patients with suspected pathologies are often monitored for extended periods, requiring the storage and examination of large amounts of non-pathological data, and entailing a difficult visual search task for diagnosing professionals. In this work we propose a compact and sub-mW low power neural processing system that can be used to perform on-line and real-time preliminary diagnosis of pathological conditions, to raise warnings for the existence of possible pathological conditions, or to trigger an off-line data recording system for further analysis by a medical professional. We apply the system to real-time classification of ECG data for distinguishing between healthy heartbeats and pathological rhythms. Multi-channel analog ECG traces are encoded as asynchronous streams of binary events and processed using a spiking recurrent neural network operated in a reservoir computing paradigm. An event-driven neuron output layer is then trained to recognize one of several pathologies. Finally, the filtered activity of this output layer is used to generate a binary trigger signal indicating the presence or absence of a pathological pattern. We validate the approach proposed using a Dynamic Neuromorphic Asynchronous Processor (DYNAP) chip, implemented using a standard 180nm CMOS VLSI process, and present experimental results measured from the chip.
机译:通过对诸如心电图(ECG)的记录生物信号的离线分析,可以通过脱线分析来实现人体受试者病理条件的精确检测。然而,人类诊断是耗时和昂贵的,因为它需要医疗专业人员的时间。当生物信号中的指示模式不频繁时,这尤其低效。此外,涉及疑似病症的患者通常监测延长的时间,要求储存和检查大量的非病理数据,并为诊断专业人士而留下困难的视觉搜索任务。在这项工作中,我们提出了一种紧凑型和亚MW低功率神经处理系统,可用于在线和实时初步诊断病理条件,提高可能的病理条件的存在,或者触发警告离线数据记录系统,用于通过医疗专业人员进行进一步分析。我们将系统应用于ECG数据的实时分类,以区分健康心跳和病理节奏。多通道模拟ECG迹线被编码为二进制事件的异步流,并使用在储库计算范例中操作的尖峰复制神经网络进行处理。然后训练事件驱动的神经元输出层以识别几种病理中的一种。最后,该输出层的过滤活动用于生成指示存在或不存在病理模式的二进制触发信号。我们验证使用使用标准180nm CMOS VLSI工艺实现的动态神经形态异步处理器(DYNAP)芯片所提出的方法,并呈现从芯片测量的实验结果。

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