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Journal : Kinetik: Game Technology, Information System, Computer Network, Computing, Electronics, and Control

Classification of Arrhythmia Electrocardiogram Signals Using Kernel Principal Component Analysis and Naive Bayes Melinda, Melinda; Farhan; Irhamsyah, Muhammad; Miftahujjannah, Rizka; D Acula, Donata; Yunidar, Yunidar
Kinetik: Game Technology, Information System, Computer Network, Computing, Electronics, and Control Vol. 10, No. 3, August 2025
Publisher : Universitas Muhammadiyah Malang

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.22219/kinetik.v10i3.2219

Abstract

Arrhythmia is a cardiovascular disorder commonly detected through electrocardiogram (ECG) signal analysis. However, classifying arrhythmias based on ECG signals remains challenging due to signal complexity and individual variability. This study aims to develop a more accurate and efficient method for arrhythmia classification. The proposed method utilizes Kernel Principal Component Analysis (KPCA) and the naïve Bayes algorithm to classify arrhythmic ECG signals. KPCA is chosen for its ability to reduce data dimensionality, facilitating the processing of complex ECG signal and improving classification accuracy by minimizing noise. The naïve Bayes algorithm is chosen for its simplicity and computational speed, as well as its effective performance, even with limited data. ECG signals are processed using KPCA to reduce data dimensionality and extract relevant features. Subsequently, the naïve Bayes algorithm is then applied to classify the ECG signals into four categories: Premature Atrial Contraction (PAC), Premature Ventricular Contraction (PVC), Left Bundle Branch Block (LBBB), and Right Bundle Branch Block (RBBB).  The model's performance is evaluated using metrics such as accuracy, sensitivity, specificity, precision, and F1-score. The naïve Bayes model achieves an overall accuracy of 97.67%, with the highest performance observed in the RBBB class at 99.33%. Additionally, the F1-scores across all classes range from 96.62% to 98.57%, demonstrating the model's capability in detecting arrhythmias effectively. These results indicate that the combination of KPCA and naïve Bayes is effective for arrhythmic ECG signals classification.
Co-Authors Abriel Ashari Achmad Firdaus Ade Nugraha Ade Sabila Adriansyah, Agung Ahmad Hendra Rofiullah Ahmad, Alief Padlillah Aji Syafa'atul Huda Akbar, Tzazkia Febriyana Akhirul Kahfi Syam Alda Rahmawati Alfan, Muhammad Almaimani, Abdus Salam Andika Yudistira Andriani, Titi Asyifah Fauzah Delfira Bintang Lani Rosita D Acula, Donata Data Fitri Dede Sunarti Deyan Nugraha, Muhammad Raezhard Dia Ovitri Agustin Donna Carollina Dzar Ar Rifai, Abu Erwin, Yulias Fahrauk Faramayuda, Fahrauk Fanesa, Mawar Fatkhullah, Faiz Karim FAUZI Fini Himatul Aliyah Ghazi Mubarok Habib Zainuri Hendi S. Muchtar Hidayat, Raden Aldi Hidayatullah, Muhammad Hudaidah Hudaidah Husnul Hotimah, Husnul Iskandar, Aulia Pratiwi Ismail, Nursafira Khairunnisa Jamil, Muhamad Wildan Jannah, Siti Zahra Ma’watul Jaya , Ahmad Jenta Puspariki Johar, Fikrul Haykal JUAIDAH Juliana Khafi Kirani, Anbiya Rizky Kunto D.A , Himawan Lestari, Intan Fatinah Lokot Muda Harahap, Lokot Muda Lusa, Sofian Madaling Maghfira Melinda Melinda Mian Anita Miftahujjannah, Rizka Mohammad Arief Nur Wahyudien Mualim Wijaya Muh. Risnain Muhaimin Muhammad Irhamsyah Muhammad Raihan Akbar Mutia Mayanda , Alia Najihah Abd Wahid Nova Estu Harsiwi Nurmayanti Nurul Qalbiah, Nurul Puspariki, Jenta Putri, Dhiffa Namira Alifia Raharto, Eko Rahma Rahma Febriyanti Rahman Ako Ramadani, Suci Ramdhani, Muhammad Rizky Rastari Ratnasari, Nuryati Retno Susanti Robitul Abror Ruliansyah, Muhammad Saputri, Marsanda Sopiyani, Nuzula Sri Sulastri Suryapranatha, Dicky swarmi, Ice Swarmi Teddy Ramaditya Teuku Rifai UMMY Wafa Tsamrotul Fuadah Wahyu Agustin, Muhammad Wahyudi, Ikhsan WULANDARI Yunidar Yusria Zessica