Optimizing type 2 diabetes management: AI-enhanced time series analysis of continuous glucose monitoring data for personalized dietary intervention

被引:0
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作者
Anjum M. [1 ]
Saher R. [1 ]
Saeed M.N. [2 ]
机构
[1] Department of Computer Engineering College of Computer Science and IT, King Faisal University, Alahsa
[2] E-Learning Center, Jazan University, Jazan
关键词
Artificial Intelligence; Artificial intelligence; Data Mining and Machine Learning; Diabetes; Diet plan; Digital health; Disease management; Forecasting; Medical informatics; Neural Networks; Subjects Algorithms and Analysis of Algorithms; Time series; Wearables; Wellness;
D O I
10.7717/PEERJ-CS.1971
中图分类号
学科分类号
摘要
Despite advanced health facilities in many developed countries, diabetic patients face multifold health challenges. Type 2 diabetes mellitus (T2DM) go along with conspicuous symptoms due to frequent peaks, hypoglycemia <=70 mg/dL (while fasting), or hyperglycemia >=180 mg/dL two hours postprandial, according to the American Diabetes Association (ADA)). The worse effects of Type 2 diabetes mellitus are precisely associated with the poor lifestyle adopted by patients. In particular, a healthy diet and nutritious food are the key to success for such patients. This study was done to help T2DM patients improve their health by developing a favorable lifestyle under an Ai-assisted Continuous glucose monitoring (CGM) digital system. This study aims to reduce the blood glucose level fluctuations of such patients by rectifying their daily diet and maintaining their exertion vs. food consumption records. In this study, a well-precise prediction is obtained by training the ML model on a dataset recorded from CGM sensor devices attached to T2DM patients under observation. As the data obtained from the CGM sensor is time series, to predict blood glucose levels, the time series analysis and forecasting are done with XGBoost, SARIMA, and Prophet. The results of different Models are then compared based on performance metrics. This helped in monitoring various trends, specifically irregular patterns of the patient’s glucose data, collected by the CGM sensor. Later, keeping track of these trends and seasonality, the diet is adjusted accordingly by adding or removing particular food and keeping track of its nutrients with the intervention of a commercially available all-in-one AI solution for food recognition. This created an interactive assistive system, where the predicted results are compared to food contents to bring the blood glucose levels within the normal range for maintaining a healthy lifestyle and to alert about blood glucose fluctuations before the time that are going to occur sooner. This study will help T2DM patients get in managing diabetes and ultimately bring HbAlc within the normal range (<= 5.7%) for diabetic and pre-diabetic patients, three months after the intervention. © 2024 Anjum et al. Distributed under Creative Commons CC-BY 4.0. All Rights Reserved.
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