Abstract

<p class="0abstract">The electrocardiograph (ECG) signal is an essential biomedical human body signal that shows heart activity and can diagnose cardiovascular diseases. Many researchers investigate heartbeats detection and classification based on ECG to achieve a high-performance method. The main problem with improving performance is increasing the computation, such as in many existing methods. In this paper, a new artificial neural network (ANN) method named Selective-Mask Artificial Neural Network (SMANN) is proposed to improve the performance with low computational processes. Furthermore, A new mixture of features from reused the QRS-detection stage features and the others features from the RR-interval and between-RR are used to decrease the computation for features extraction. The proposed method performance evaluation is based on the MIT-BIH Arrhythmia Database using MATLAB program for software evaluation moreover a hardware implementation. The proposed method’s promising results show high accuracy of 99.9224 %, and the total classification errors for the SMANN are 80 comparing with the 583 errors for the same data with traditional ANN. The method with low error assists the clinical decision-maker in diagnosing the long-time ECG signals or the real-time monitoring. It was implemented as a prototype wearable system using Node-MCU with the internet of things (IoT). The system can operate online patient monitoring and offline for heartbeats detection and classification.</p>

Highlights

  • The major diseases that cause death are cardiovascular, with 31 % of all worldwide deaths, almost eighteen million deaths caused by cardiovascular diseases

  • Selective-Mask Artificial Neural Network (SMANN) does not consist of multi-layers like deep learning, high multiplication processes like convolutional, or tree with artificial neural network (ANN) used multi-design networks for each tree branch

  • The MIT-BIH arrhythmia database is widely used because it consists of a variable ECG signal that is suffered from different types of noise

Read more

Summary

A Wearable Heartbeats Classification System Based on A New Method

Many researchers investigate heartbeats detection and classification based on ECG to achieve a high-performance method. The main problem with improving performance is increasing the computation, such as in many existing methods. A new artificial neural network (ANN) method named Selective-Mask Artificial Neural Network (SMANN) is proposed to improve the performance with low computational processes. The proposed method performance evaluation is based on the MIT-BIH Arrhythmia Database using MATLAB program for software evaluation a hardware implementation. The method with low error assists the clinical decision-maker in diagnosing the long-time ECG signals or the real-time monitoring. It was implemented as a prototype wearable system using Node-MCU with the internet of things (IoT).

Introduction
The Proposed Method
QRS-Detection
The Features Extractions
Classification
The ANN and SMANN Evaluation
Software Evaluation
Device Hardware Implementation
Conclusion
Findings
Authors
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call