An Arduino Based Heartbeat Detection Device (ArdMob-ECG) for Real-Time ECG Analysis

T. Möller, Martin Voss, Laura Kaltwasser
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引用次数: 2

Abstract

This technical paper provides a tutorial to build a low-cost (10–100 USD) and easy to assemble ECG device (ArdMob-ECG) that can be easily used for a variety of different scientific studies. The advantage of this device is that it automatically stores the data and has a built-in detection algorithm for heartbeats. Compared to a clinical ECG, this device entails a serial interface that can send triggers via USB directly to a computer and software (e.g. Unity, Matlab) with minimal delay due to its architecture. Its software and hardware is open-source and publicly available. The performance of the device regarding sensitivity and specificity is comparable to a professional clinical ECG and is assessed in this paper. Due to the open-source software, a variety of different research questions and individual alterations can be adapted using this ECG. The code as well as the circuit is publicly available and accessible for everyone to promote a better health system in remote areas, Open Science, and to boost scientific progress and the development of new paradigms that ultimately foster innovation.
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基于Arduino的实时心电分析心跳检测设备(ArdMob-ECG
这篇技术论文提供了一个教程来构建一个低成本(10-100美元)和易于组装的心电设备(ArdMob-ECG),可以很容易地用于各种不同的科学研究。这种设备的优点是它会自动存储数据,并有一个内置的心跳检测算法。与临床心电图相比,该设备需要一个串行接口,可以通过USB直接将触发器发送到计算机和软件(例如Unity, Matlab),由于其架构,延迟最小。它的软件和硬件都是开源和公开的。该设备在灵敏度和特异性方面的性能可与专业的临床心电图相媲美,并在本文中进行了评估。由于开源软件,各种不同的研究问题和个人的改变可以适应使用这个ECG。代码和电路是公开的,每个人都可以访问,以促进偏远地区更好的卫生系统和开放科学,并推动科学进步和发展最终促进创新的新范式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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