Design and Development of an Android-based Remote Cardiac Monitoring Device for Continuous Real-time ECG Signal Acquisition, Transmission, and Analysis

Olawuni Adeolu, Babalola Abayomi
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Abstract

Cardiovascular diseases (CVDs) are a leading cause of mortality worldwide, necessitating innovative solutions for early detection and continuous monitoring. This research aims to develop an Android-based remote cardiac monitoring device for real-time electrocardiogram (ECG) signal acquisition, transmission, and analysis. The system comprises hardware for acquiring ECG signals, algorithms for processing and machine learning models for anomaly classification. The hardware unit captures ECG data using electrodes and sensors. The signals are filtered, processed, and transmitted to the cloud infrastructure enabling real-time monitoring and analysis. Machine learning models including support vector machines, ensemble methods and Artificial neural networks are trained on ECG datasets to classify signals and detect cardiac abnormalities. Comprehensive testing validates the system's capabilities in real-time signal acquisition, processing, anomaly detection and data transmission. The integration of hardware, algorithms and machine learning enables round-the-clock monitoring of cardiac activity, facilitating prompt interventions and improved patient outcomes. This affordable and user-friendly system demonstrates potential for enhanced accessibility and effectiveness of preventive cardiac care.
设计和开发基于 Android 的远程心脏监护设备,用于连续实时心电信号采集、传输和分析
心血管疾病(CVDs)是导致全球死亡的主要原因,因此需要创新的解决方案来进行早期检测和持续监测。本研究旨在开发一种基于安卓系统的远程心脏监测设备,用于实时心电图(ECG)信号的采集、传输和分析。该系统包括用于采集心电信号的硬件、用于处理的算法和用于异常分类的机器学习模型。硬件单元使用电极和传感器采集心电图数据。信号经过过滤、处理后传输到云基础设施,实现实时监控和分析。在心电图数据集上训练包括支持向量机、集合方法和人工神经网络在内的机器学习模型,以对信号进行分类并检测心脏异常。综合测试验证了系统在实时信号采集、处理、异常检测和数据传输方面的能力。硬件、算法和机器学习的整合实现了对心脏活动的全天候监测,有助于及时干预和改善患者预后。这种经济实惠、用户友好的系统展示了提高预防性心脏护理的可及性和有效性的潜力。
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