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Journal : Indonesian Journal of Electrical Engineering and Computer Science

Utilizing deep neural network for web-based blood glucose level prediction system Ganjar Alfian; Yuris Mulya Saputra; Lukman Subekti; Ananda Dwi Rahmawati; Fransiskus Tatas Dwi Atmaji; Jongtae Rhee
Indonesian Journal of Electrical Engineering and Computer Science Vol 30, No 3: June 2023
Publisher : Institute of Advanced Engineering and Science

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.11591/ijeecs.v30.i3.pp1829-1837

Abstract

Machine learning algorithms can be used to forecast future blood glucose (BG) levels for diabetes patients, according to recent studies. In this study, dataset from continuous glucose monitoring (CGM) system was used as the sole input for the machine learning models. To forecast blood glucose levels 15, 30, and 45 minutes in the future, we suggested deep neural network (DNN) and tested it on 7 patients with type 1 diabetes (T1D). The suggested prediction model was evaluated against a variety of machine learning models, such as k-nearest neighbor (KNN), support vector regression (SVR), decision tree (DT), adaptive boosting (AdaBoost), random forest (RF), and eXtreme gradient boosting (XGBoost). The experimental findings demonstrated that the proposed DNN model outperformed all other models, with average root mean square errors (RMSEs) of 17.295, 25.940, and 35.146 mg/dL over prediction horizons (PHs) of 15, 30, and 45 minutes, respectively. Additionally, we have included the suggested prediction model in web-based blood glucose level prediction tools. By using this web-based system, patients may readily acquire their future blood glucose levels, allowing for the generation of preventative alarms prior to crucial hypoglycemia or hyperglycemic situations.
Co-Authors Achmad Rizaldi Utomo Adi Riyanto Afiva, Wirda Hamro Agus Kusnayat Aji Pamoso Aldi Bastian Amelia Kurniawati Anak Agung Ngurah Ananda Dwi Rahmawati Anggreani, Riska Anna Annida Noviyanti Annisa Prias Maysarah Anselvi Mega Lestari Arvindha Ramaditya Ati, Laras Aulia, Valinouski Bambang Tejo Kusumo Bina Wiraty Hasibuan Citra Andriyadi Dena Aprima Diputra Diastyono, Irfan Akmal Dida Diah Damayanti Dio Taqiy Asyrof Donni Arisugewo Donny Verryrianto Sidabutar Endang Budiasih Evan Suryatyasto Sujatman Fajar Asyiraq Tilammura Fathnin, Nisrina Fididio Agoeng Pamboedi Ganjar Alfian Gita Ayu Dinar Pramesti Gondosubroto, Renaldi Harits Dzulyaddain Harwinvania Fauzia Herlambang Prasetyo Nugroho Hidayat, Diansah Husni Amani I Gede Oka Mahendra Ida Bagus Wasudewa Ida Bagus Yoga Samkhyaita Ilham Meiriza Indira Kusuma Wardani Jasmine Raisya Salsabila Jayaningrum, Cahya Wulan Jongtae Rhee Judi Alhilman Judi Alhilman Judi Alhilman Judi Alhilman Judi Alhilman Judi Alhilman, Judi Khairuddin, Sheikh Muhamad Hizam Sheikh Lalu Galeh Inggil Fatristya Lellyta Nurani P Lestari Atika Putri Liza Nafiah Maulidina Liza Nafiah Maulidina Lukman Subekti Marina Yustiana Lubis Maulidina, Liza Nafiah Merlina, Astri Muhammad Bangkit Hidayanto Muhammad Irfan Syahputra Hadiyat Muhammad Kamal Fikri Muhammad Siddiq Muthi Maisa Zulfatri Nadzri, Firdaus Hilmi Navi`a, Isna Jihan Nisrina Fathnin Nopendi, Nopendi Nopendri Nopendri Noviyanti, Anna Annida Noviyanti, Anna Annida Nurdinintya Athari Supratman Nurul Sholihah Ekowati Oktaria Tyas Pambayun Pradipta, Sandy Argya Pratya Poeri Suryadhini Putra Fajar Alam Putri Rahma Muliawati Rachmatul Baety Rayinda Pramuditya Soesanto Rd. Rohmat Saedudin Redi Ahmad Putra Nuranto Riztan Anggitya Sihombing Salsabila, Jasmine Raisya Sarashvati, Made Shanti Shabrina Zatalini Kuswardani Sheila Amalia Salma Sheila Sekar Soka Sugani, Sandika Lafaldi Syavira Ramadianti Tegar Tri Nugraha Triana Suryani Utama Putra (Telkom University), Anak Agung Ngurah Nanda Valinouski Aulia Widia Juliani Wirda Hamro Afiva Wirda Hamro Afiva Yuris Mulya Saputra Zhafran Ega