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Improving Accuracy for Diabetes Mellitus Prediction by Using Deepnet
Author(s) -
Riyad Alshammari,
Noorah Atiyah,
Tahani Daghistani,
Abdulwahhab Alshammari
Publication year - 2020
Publication title -
online journal of public health informatics
Language(s) - English
Resource type - Journals
ISSN - 1947-2579
DOI - 10.5210/ojphi.v12i1.10611
Subject(s) - machine learning , decision tree , artificial intelligence , logistic regression , computer science , diabetes mellitus , christian ministry , data mining , medicine , endocrinology , philosophy , theology
Diabetes is a salient issue and a significant health care concern for many nations. The forecast for the prevalence of diabetes is on the rise. Hence, building a prediction machine learning model to assist in the identification of diabetic patients is of great interest. This study aims to create a machine learning model that is capable of predicting diabetes with high performance. The following study used the BigML platform to train four machine learning algorithms, namely, Deepnet, Models (decision tree), Ensemble and Logistic Regression, on data sets collected from the Ministry of National Guard Hospital Affairs (MNGHA) in Saudi Arabia between the years of 2013 and 2015. The comparative evaluation criteria for the four algorithms examined included; Accuracy, Precision, Recall, F-measure and PhiCoefficient. Results show that the Deepnet algorithm achieved higher performance compared to other machine learning algorithms based on various evaluation matrices.

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