Explainable Machine Learning for Real-Time Hypoglycemia and Hyperglycemia Prediction and Personalized Control Recommendations.
Christopher DuckworthMatthew J GuyAnitha KumaranAisling Ann O'KaneAmid AyobiAdriane ChapmanPaul MarshallMichael BonifacePublished in: Journal of diabetes science and technology (2022)
Maximizing model performance for glucose risk prediction and management is crucial to reduce the burden of alarm fatigue on CGM users. Machine learning enables more precise and timely predictions in comparison with baseline models. SHAP helps identify what about a CGM user's glucose control has led to predictions of risk which can be used to reduce their long-term risk of complications.