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  5. Long-Term Glucose Forecasting for Open-Source Automated Insulin Delivery Systems: A Machine Learning Study with Real-World Variability Analysis
 
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Long-Term Glucose Forecasting for Open-Source Automated Insulin Delivery Systems: A Machine Learning Study with Real-World Variability Analysis

Author(s)
Zafar, Ahtsham  
Lewis, Dana  
Shahid, Arsalan  
Uri
http://hdl.handle.net/10197/24375
Date Issued
2023-03-07
Date Available
2023-04-28T16:23:04Z
Abstract
Glucose forecasting serves as a backbone for several healthcare applications, including real-time insulin dosing in people with diabetes and physical activity optimization. This paper presents a study on the use of machine learning (ML) and deep learning (DL) methods for predicting glucose variability (GV) in individuals with open-source automated insulin delivery systems (AID). A three-stage experimental framework is employed in this work to systematically implement and evaluate ML/DL methods on a large-scale diabetes dataset collected from individuals with open-source AID. The first stage involves data collection, the second stage involves data preparation and exploratory analysis, and the third stage involves developing, fine-tuning, and evaluating ML/DL models. The performance and resource costs of the models are evaluated alongside relative and proportional errors for 17 GV metrics. Evaluation of fine-tuned ML/DL models shows considerable accuracy in glucose forecasting and variability analysis up to 48 h in advance. The average MAE ranges from 2.50 mg/dL for long short-term memory models (LSTM) to 4.94 mg/dL for autoregressive integrated moving average (ARIMA) models, and the RMSE ranges from 3.7 mg/dL for LSTM to 7.67 mg/dL for ARIMA. Model execution time is proportional to the amount of data used for training, with long short-term memory models having the lowest execution time but the highest memory consumption compared to other models. This work successfully incorporates the use of appropriate programming frameworks, concurrency-enhancing tools, and resource and storage cost estimators to encourage the sustainable use of ML/DL in real-world AID systems.
Sponsorship
European Commission Horizon 2020
Other Sponsorship
Marie Skłodowska-Curie Action Research and Innovation Staff Exchange (RISE)
Type of Material
Journal Article
Publisher
MDPI
Journal
Healthcare
Volume
11
Issue
6
Start Page
1
End Page
21
Copyright (Published Version)
2023 The Authors
Subjects

Glucose forecasting

Automated insulin del...

Glucose variability

Glycemic variability

Closed loop

OpenAPS

Large-scale diabetes ...

AID

DOI
10.3390/healthcare11060779
Language
English
Status of Item
Peer reviewed
ISSN
2227-9032
This item is made available under a Creative Commons License
https://creativecommons.org/licenses/by/3.0/ie/
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Long-Term Glucose Forecasting for Open-Source Automated Insulin Delivery Systems A Machine Learning Study with Real-World Va.pdf

Size

2.17 MB

Format

Adobe PDF

Checksum (MD5)

e9128a78dc3cb5b86f66c4cee1730126

Owning collection
Sociology Research Collection
Mapped collections
Computer Science Research Collection

Item descriptive metadata is released under a CC-0 (public domain) license: https://creativecommons.org/public-domain/cc0/.
All other content is subject to copyright.

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