Skip to main content
  • Company
    • About Us
    • Projects
    • Startup Lab
    • AI Solutions
    • Security Expertise
    • Contact
  • Knowledge
    • Blog
    • Research
hello@horizon-dynamics.tech
Horizon Dynamics
  1. Home
  2. Research
  3. Ecg arrhythmia icyberphys 2024
Company
  • About Us
  • Projects
  • Startup Lab
  • AI Solutions
  • Security Expertise
  • Contact
Contact Ushello@horizon-dynamics.tech
Horizon Dynamics
© 2013 - 2026 Horizon Dynamics LLC — All rights reserved.

Right Solution For True Ideas

Publications/2024
Conference Papers2024

ECG Arrhythmia Classification and Interpretation using Convolutional Networks for Intelligent IoT Healthcare System

Pavlo Radiuk, Oleksii Kovalchuk, Olexander Barmak, Iurii Krak

ICyberPhyS 2024

ECGArrhythmiaCNNIoTHealthcareSmart Systems

Abstract

This paper presents an ECG arrhythmia classification and interpretation system using convolutional networks for intelligent IoT healthcare applications.

Citation

Pavlo Radiuk, Oleksii Kovalchuk, Olexander Barmak, Iurii Krak. "ECG Arrhythmia Classification and Interpretation using Convolutional Networks for Intelligent IoT Healthcare System". ICyberPhyS 2024, 2024.

Related Publications

2025Journal Articles

Towards Transparent AI in Medicine: ECG-Based Arrhythmia Detection with Explainable Deep Learning

Pavlo Radiuk, Liliana Klymenko, Iurii Krak

Technologies
2024Conference Papers

Robust R-peak Detection using Deep Learning based on Integrating Domain Knowledge

Pavlo Radiuk, Oleksander Barmak, Iurii Krak

IEEE IDAACS 2023
All Publications