Advances in Bioscience and Biotechnology

Advances in Bioscience and Biotechnology

ISSN Print: 2156-8456
ISSN Online: 2156-8502
www.scirp.org/journal/abb
E-mail: abb@scirp.org
"Electrocardiogram Feature Extraction and Pattern Recognition Using a Novel Windowing Algorithm"
written by Muhammad Umer, Bilal Ahmed Bhatti, Muhammad Hammad Tariq, Muhammad Zia-ul-Hassan, Muhammad Yaqub Khan, Tahir Zaidi,
published by Advances in Bioscience and Biotechnology, Vol.5 No.11, 2014
has been cited by the following article(s):
  • Google Scholar
  • CrossRef
[1] A Novel Low-Latency and Energy-Efficient Task Scheduling Framework for Internet of Medical Things in an Edge Fog Cloud System
Sensors, 2022
[2] Human Identification Using Electrocardiogram Signal as a Biometric Trait
Mageid, N Nada… - International Journal of …, 2022
[3] The predictive value of electrocardiographic polarization parameters on appropriate ICD shock in primary prevention heart failure patients
Journal of …, 2022
[4] Industrial quality healthcare services using Internet of Things and fog computing approach
Measurement …, 2022
[5] Electrocardiogram Abnormal Classification Based on Abnormality Signal Feature
JURNAL NASIONAL TEKNIK ELEKTRO, 2021
[6] Application of Machine Learning to Analyse Biomedical Signals for Medical Diagnosis
2021
[7] Machine learning-data mining integrated approach for premature ventricular contraction prediction
2021
[8] QoS in Health care through IoT and Fog Computing
2021
[9] Analysis of Sleep Apnea Considering Biosignals from Peripheral Capillary Oxygen Saturation Level and Electrocardiogram Data
2021
[10] ECG Image Classification Using Deep Learning Approach
2021
[11] Stages-Based ECG Signal Analysis from Traditional Signal Processing to Machine Learning Approaches: A Survey
2020
[12] ECG Based Expert System for Helping Doctors to Diagnosis Heart Abnormalities
2020
[13] SEGMENTASI FITUR SINYAL EKG BERDASARKAN DISCRETE WAVELET TRANSFORM DAN WINDOWED ANALYSIS UNTUK PERHITUNGAN QT CORRECTION …
2019
[14] A Portable Vital Sign Device with Liquid Crystal Display TFT Touchscreen
2019
[15] R Peak Detection with Diagnosis of Arrhythmia using Adaptive Filter and Hilbert Transform
2019
[16] Wavelet-based arrhythmia detection of ECG signal and performance measurement using diverse classifiers
2019
[17] Combining deep neural networks and engineered features for cardiac arrhythmia detection from ECG recordings
2019
[18] Matlab Based GUI for ECG Arrhythmia Detection Using Pan-Tompkin Algorithm
2018
[19] Computer-Aided Model for Abnormality Detection in Biomedical ECG Signals
Journal of Advanced Research in Computing and Applications, 2018
[20] A unique feature extraction using MRDWT for automatic classification of abnormal heartbeat from ECG big data with Multilayered Probabilistic Neural Network …
Applied Soft Computing, 2018
[21] Programmatic Approach to Real-Time Monitoring and Analysis of Electrocardiogram Signals in Zebrafish
2018
[22] Recognizing Real Time ECG Anomalies Using Arduino, AD8232 and Java
Advances in Computing and Data Sciences, 2018
[23] Remote monitoring of cardiac activity using a flexible loop antenna
International Journal of RF and Microwave Computer‐Aided Engineering, 2018
[24] Cloud-based analytics for monitoring and classification of arrhythmias
2018
[25] Highly secure and efficient architectural model for IoT based health care systems
2017
[26] ECG Feature Extraction and Parameter Evaluation for Detection of Heart Arrhythmias
i-Manager's Journal on Digital Signal Processing, 2017
[27] Real-Time Monitoring and Analysis of Zebrafish Electrocardiogram with Anomaly Detection
Sensors, 2017
[28] ENCASE: An ENsemble ClASsifiEr for ECG classification using expert features and deep neural networks
2017
[29] The Peak of the PQRST and the Trajectory Path of Each Cycle of the ECG 12-Lead Wave
2016
Free SCIRP Newsletters
Copyright © 2006-2024 Scientific Research Publishing Inc. All Rights Reserved.
Top