Early stage diabetes likelihood prediction using artificial neural networks
College
Gokongwei College of Engineering
Department/Unit
Electronics And Communications Engg
Document Type
Conference Proceeding
Source Title
IEEE International Conference on Humanoid Nanotechnology Information Technology Communication and Control Environment and Management
Publication Date
2020
Abstract
Diabetes is a disease which chronic in nature, which is caused by an elevated blood sugar (or blood glucose) level. The metabolic disease is linked to several potential serious organ complications including nerves, kidneys, eyes, blood vessels, and the heart. According to the International Diabetes Federation, in 2019, about 2 million deaths were recorded worldwide due to diabetes. Furthermore, according to Philippine Statistics Authority (PSA), Diabetes Mellitus is considered as the fifth main cause of in the Philippines in the past years and in a 2015 study, about 1.7 million Filipinos are still undiagnosed of diabetes. Therefore, several machine learning-based techniques were developed for diabetes risk prediction. However, these works have yet to utilize artificial neural networks using the symptom information of suspected diabetic patients. This research paper demonstrated an ANN-based diabetes risk classification based on the symptom information of patients. The scaled conjugate gradient backpropagation technique was utilized for neural network training process. The classification system showed 99.2% overall correctness in determining the likelihood of diabetes.
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Digitial Object Identifier (DOI)
10.1109/HNICEM51456.2020.9400075
Recommended Citation
Gamara, R. C., Bandala, A. A., Loresco, P. M., & Vicerra, R. P. (2020). Early stage diabetes likelihood prediction using artificial neural networks. IEEE International Conference on Humanoid Nanotechnology Information Technology Communication and Control Environment and Management https://doi.org/10.1109/HNICEM51456.2020.9400075
Disciplines
Engineering
Keywords
Neural networks (Computer science); Diabetes
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