Comparison of Machine Learning Models for Predicting Interstitial Glucose Using Smart Watch and Food Log

被引:0
|
作者
Ali, Haider [1 ,2 ]
Niazi, Imran Khan [3 ,4 ,5 ]
White, David [1 ,2 ]
Akhter, Malik Naveed [5 ]
Madanian, Samaneh [1 ]
机构
[1] Auckland Univ Technol, Engn Comp & Math Sci, Auckland 1010, New Zealand
[2] New Zealand Coll Chiropract, Biodesign Lab, Auckland 1010, New Zealand
[3] New Zealand Coll Chiropract, Ctr Chiropract Res, Auckland 1010, New Zealand
[4] Aalborg Univ, Ctr Sensory Motor Interact, Dept Hlth Sci & Technol, DK-9220 Aalborg, Denmark
[5] Auckland Univ Technol, Dept Clin Sci, Aukcland 1010, New Zealand
关键词
wearable sensors; machine learning; interstitial glucose; Empatica E4; METABOLIC SYNDROME; ASSOCIATION;
D O I
10.3390/electronics13163192
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
This study examines the performance of various machine learning (ML) models in predicting Interstitial Glucose (IG) levels using data from wrist-worn wearable sensors. The insights from these predictions can aid in understanding metabolic syndromes and disease states. A public dataset comprising information from the Empatica E4 smart watch, the Dexcom Continuous Glucose Monitor (CGM) measuring IG, and a food log was utilized. The raw data were processed into features, which were then used to train different ML models. This study evaluates the performance of decision tree (DT), support vector machine (SVM), Random Forest (RF), Linear Discriminant Analysis (LDA), K-Nearest Neighbors (KNN), Gaussian Na & iuml;ve Bayes (GNB), lasso cross-validation (LassoCV), Ridge, Elastic Net, and XGBoost models. For classification, IG labels were categorized into high, standard, and low, and the performance of the ML models was assessed using accuracy (40-78%), precision (41-78%), recall (39-77%), F1-score (0.31-0.77), and receiver operating characteristic (ROC) curves. Regression models predicting IG values were evaluated based on R-squared values (-7.84-0.84), mean absolute error (5.54-60.84 mg/dL), root mean square error (9.04-68.07 mg/dL), and visual methods like residual and QQ plots. To assess whether the differences between models were statistically significant, the Friedman test was carried out and was interpreted using the Nemenyi post hoc test. Tree-based models, particularly RF and DT, demonstrated superior accuracy for classification tasks in comparison to other models. For regression, the RF model achieved the lowest RMSE of 9.04 mg/dL with an R-squared value of 0.84, while the GNB model performed the worst, with an RMSE of 68.07 mg/dL. A SHAP analysis identified time from midnight as the most significant predictor. Partial dependence plots revealed complex feature interactions in the RF model, contrasting with the simpler interactions captured by LDA.
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页数:21
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