Design and Development of Diabetes Management System Using Machine Learning

Author:

Sowah Robert A.1ORCID,Bampoe-Addo Adelaide A.1,Armoo Stephen K.1,Saalia Firibu K.2,Gatsi Francis3,Sarkodie-Mensah Baffour1

Affiliation:

1. Department of Computer Engineering, University of Ghana, P.O. Box LG 77, Legon, Accra-, Ghana

2. Department of Food Process Engineering, And Department of Nutrition and Food Science, University of Ghana, P.O. Box LG 77, Legon, Accra-, Ghana

3. Department of Engineering and Computer Science, Ashesi University, Berekuso, Eastern Region, Ghana

Abstract

This paper describes the design and implementation of a software system to improve the management of diabetes using a machine learning approach and to demonstrate and evaluate its effectiveness in controlling diabetes. The proposed approach for this management system handles the various factors that affect the health of people with diabetes by combining multiple artificial intelligence algorithms. The proposed framework factors the diabetes management problem into subgoals: building a Tensorflow neural network model for food classification; thus, it allows users to upload an image to determine if a meal is recommended for consumption; implementing K-Nearest Neighbour (KNN) algorithm to recommend meals; using cognitive sciences to build a diabetes question and answer chatbot; tracking user activity, user geolocation, and generating pdfs of logged blood sugar readings. The food recognition model was evaluated with cross-entropy metrics that support validation using Neural networks with a backpropagation algorithm. The model learned features of the images fed from local Ghanaian dishes with specific nutritional value and essence in managing diabetics and provided accurate image classification with given labels and corresponding accuracy. The model achieved specified goals by predicting with high accuracy, labels of new images. The food recognition and classification model achieved over 95% accuracy levels for specific calorie intakes. The performance of the meal recommender model and question and answer chatbot was tested with a designed cross-platform user-friendly interface using Cordova and Ionic Frameworks for software development for both mobile and web applications. The system recommended meals to meet the calorific needs of users successfully using KNN (with k=5) and answered questions asked in a human-like way. The implemented system would solve the problem of managing activity, dieting recommendations, and medication notification of diabetics.

Publisher

Hindawi Limited

Subject

Health Information Management,Computer Networks and Communications,Health Informatics,Medicine (miscellaneous)

Cited by 29 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Smartphone Based Food Classification: Applications, Challenges, and Future Prospects for Diabetics;2023 IEEE 20th International Conference on Smart Communities: Improving Quality of Life using AI, Robotics and IoT (HONET);2023-12-04

2. Internet of Things and Machine Learning–based Diabetes Management System;2023 International Conference on IT and Industrial Technologies (ICIT);2023-10-09

3. Timely Detection of Diabetes with Support Vector Machines, Neural Networks and Deep Neural Networks;WSEAS TRANSACTIONS ON COMPUTER RESEARCH;2023-09-07

4. A systematic literature review for understanding the effectiveness of advanced techniques in diabetes self-care management;Alexandria Engineering Journal;2023-09

5. Machine learning accurately predicts food exchange list and the exchangeable portion;Frontiers in Nutrition;2023-08-10

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