Abstract
This article presents a real-time, cloud-integrated cardiac monitoring
system developed using a portable ECG device that communicates via
HTTPS and REST API protocols. The raw ECG signals are transmitted
in JSON format to a secure cloud server, where Symlet4 wavelet
transform is employed to denoise the signals in real time. This process
enables the accurate extraction of key cardiac features, including HRV,
QRS complex, RR interval, QT interval, PR interval, ST segment, P
wave, and T wave. These features are processed and stored for
subsequent analysis. Arrhythmia classification is initially performed
using rule-based clinical logic derived from these parameters, while a
structured dataset is concurrently generated to support the development
and training of machine learning models for future diagnostic
applications. Additionally, HRV data is visualized in real time through
a responsive frontend interface, facilitating remote cardiac health
monitoring by healthcare professionals. The system was validated
using ECG recordings from 98 patients of varying ages to assess
performance, reliability, and scalability across diverse clinical and
home care scenarios. This article highlights a novel implementation of
wavelet-based ECG signal filtering integrated with cloud computing
within a complete IoT-based healthcare architecture.
Authors
Mamirov Xudoyberdi Xomidjonovich
Tashkent University of Information Technologies, Uzbekistan
Keywords
Portable ECG, Cloud-Based Monitoring, Symlet4 Wavelet, Arrhythmia Detection, Real-Time ECG, REST API, Wearable Health Device