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Embedded System Based on an ARM Microcontroller to Analyze Heart Rate Variability in Real Time Using Wavelets

机译:基于ARM单片机的嵌入式系统小波实时分析心率变异性。

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The analyses of electrocardiogram (ECG) and heart rate variability (HRV) are of primordial interest for cardiovascular diseases. The algorithm used for the detection of the QRS complex is the basis for HRV analysis and HRV quality will depend strongly on it. The aim of this paper is to implement HRV analysis in real time on an ARM microcontroller (MCU). Thus, there is no need to send raw data to a cloud server for real time HRV monitoring and, consequently, the communication requirements and the power consumption of the local sensor node would be far lower. The system would facilitate the integration into edge computing, for instance, in small local networks, such as hospitals. A QRS detector based on wavelets is proposed, which is able to autonomously select the coefficients the QRS complex will be detected with. To validate it, the MITBIH and NSRDB databases were used. This detector was implemented in real time using an MCU. Subsequently HRV analysis was implemented in the time, frequency, and nonlinear domains. When evaluating the QRS detector with the MITBIH database, 99.61% positive prediction (PP), 99.3% sensitivity (SE), and a prediction error rate (DER) of 1.12% were obtained. For the NSRDB database the results were a PP of 99.95%, an SE of 99.98%, and a DER of 0.0006%. The execution of the QRS detector in the MCU took 52 milliseconds. On the other hand, the time required to calculate the HRV depends on the data size, but it took only a few seconds to analyze several thousands of interbeat intervals. The results obtained for the detector were superior to 99%, so it is expected that the HRV is reliable. It has also been shown that the detection of QRS complex can be done in real time using advanced processing techniques such as wavelets.
机译:心电图(ECG)和心率变异性(HRV)的分析对于心血管疾病具有重要意义。用于检测QRS复合体的算法是HRV分析的基础,HRV的质量在很大程度上取决于它。本文的目的是在ARM微控制器(MCU)上实时实施HRV分析。因此,不需要将原始数据发送到云服务器以进行实时HRV监视,因此,通信要求和本地传感器节点的功耗将大大降低。该系统将有助于集成到边缘计算中,例如在小型本地网络(如医院)中。提出了一种基于小波的QRS检测器,该检测器能够自主选择检测QRS波群的系数。为了验证它,使用了MITBIH和NSRDB数据库。该检测器是使用MCU实时实现的。随后,在时域,频域和非线性域中实施了HRV分析。当使用MITBIH数据库评估QRS检测器时,获得了99.61%的阳性预测(PP),99.3%的灵敏度(SE)和1.12%的预测错误率(DER)。对于NSRDB数据库,结果是PP为99.95%,SE为99.98%和DER为0.0006%。 MCU中QRS检测器的执行耗时52毫秒。另一方面,计算HRV所需的时间取决于数据大小,但分析几千个心跳间隔仅花费了几秒钟。检测器获得的结果优于99%,因此可以预期HRV是可靠的。还显示了可以使用高级处理技术(例如小波)实时完成QRS复杂度的检测。

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