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Journal : Journal of Electronics, Electromedical Engineering, and Medical Informatics

Comparison of Machine Learning Algorithm For Urine Glucose Level Classification Using Side-Polished Fiber Sensor Riky Tri Yunardi; Retna Apsari; Moh Yasin
Journal of Electronics, Electromedical Engineering, and Medical Informatics Vol 2 No 2 (2020): July
Publisher : Department of Electromedical Engineering, POLTEKKES KEMENKES SURABAYA and IKATEMI

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.35882/jeeemi.v2i2.1

Abstract

Urine glucose levels can be used to determine if glucose levels in the human body are too high, which may be a sign of diabetes. A non-invasive urine glucose classification model was conducted by using of the color of urine after benedict reaction to measure the level of glucose. The aim of this study is to classification urine glucose levels from a side-polished fiber sensor performed by using machine learning algorithms to get the best algorithm performance. By removing the coating and cladding this sensor is made of a polymer optical fiber. The measurement is focused on changes in the cladding refractive index which affects the amount of light transmitted. The machine learning system has been implemented using the Naïve Bayes Classifier, k-Nearest Neighbor Classifier, Logistic Regression, Random Forest, Artificial Neural Networks and Support Vector Machine. The measurement data on samples were collected from previous studies of a total of 120 urine samples for testing in this study. The results of the experiments performed with k-fold cross validation show that the neural network gets the accuracy results of 96.7%, the value of precision 0.967, recall 0.967, and F1-Measure 0.967. With cross validation leave-one-out, the experimental results show the classification algorithm with the best accuracy value that is at the random forest and artificial neural networks 0.975, precision 0.975, recall 0975, and F1-Measure 0.975. While the ANN algorithm is superior in achieving an accuracy value of 98.6%. Therefore, artificial neural networks are the best method for classifying glucose levels in the human body for fasting and postprandial urine tests.
Co-Authors Abdilah, Waldi Ananta Sari, Feby Anita Yuliati Antik Widi Anugrah ARI SETIAWAN Ari Setiawan Arya Dwi Kustiawan Asti Meizarini Athari, Muhammad Hafizh Atho'illah Assakandary , Achmad Awalin, Lilik Jamilatul Azka Zakiyyatuddin Constella Anastasya Firdauz, Grace Cristian, Yeremia Budi Delima Ayu S, Delima Ayu Dwi Cahyono, Heru Fadhilah , Marwan Farabi, Haikal Fatmawati Fatmawati Firdauz, Grace Constella Anastasya Franky Arisgraha, Franky Hendra Susanto Herlan Darmawan Herlan Darmawan Herri Trilaksana Heru Dwi Cahyono Imam Suyanto Irwan Meilano irwan meilano Irzaman, Irzaman Jemon, Khairunadwa Kormil Saputra Listya Rhomdoni, Ardan M Yasin Maria Evita Maria Evita Masruroh MASRUROH Mitra Djamal Mitra Djamal Moh Yasin Mohammad Ghani Mohammad Yasin Mubarok, Muhammad Syahril Muhammad Rafi Nabil Arsalan Muhammad Syahril Mubarok Na'imah, Syahidatun Nayu Nurrohma Hidayah Na’imah, Syahidatun Nina Siti Aminah Nina Siti Aminah Noriah Bidin Nugraha, Yoga Uta NUrina Fitriani, NUrina Nurrohma Hidayah, Nayu P. Perdinan Palmasih, Anastasia Alin Prasetyo, Vania Griselda Prihartini Widiyanti Prisma Megantoro Pujiyanto Pujiyanto Pujiyanto Pujiyanto Pujiyanto Putra, Heriansyah Raden Joko Kuncoroningrat Susilo Rafi Nabil Arsalan , Muhammad Raka Buana Putra, Dimas Rania Khadijah, Alyssa Rizki Putra Prastio Sajidah, Elma Sakinatus Samian Sensius Seno Siswanto Siswanto Sri Endah Nurhidayati Suhailah Hayaza Supadi Supadi Supadi Supadi Suryanto, Wiwit Syahril Mubarok, Muhammad Tahta Amrillah Trisnaningsih Trisnaningsih Umi Salamah Uta Nugraha, Yoga W. Harun, Sulaiman Wahyu Puri Wardhani Wahyu Srigutomo Wahyu Srigutomo Wahyudi Wahyudi Wahyudi Wahyudi Widianti, Imanda Yhun Yhuana, Yhosep Gita Yoga Uta Nugraha Yunardi, Riky Tri Zulkarnaen, M