Publication | Open Access
Developing an Individual Glucose Prediction Model Using Recurrent Neural Network
41
Citations
32
References
2020
Year
EngineeringMachine LearningArtificial PancreasRecurrent Neural NetworkData ScienceAi HealthcareStatisticsPrediction ModellingDiabetes ManagementMachine Learning ModelInsulin ManagementPredictive AnalyticsForecastingDeep LearningGlucose PredictionDiabetesBlood Glucose MonitoringMedicineHealth Informatics
In this study, we propose a personalized glucose prediction model using deep learning for hospitalized patients who experience Type-2 diabetes. We aim for our model to assist the medical personnel who check the blood glucose and control the amount of insulin doses. Herein, we employed a deep learning algorithm, especially a recurrent neural network (RNN), that consists of a sequence processing layer and a classification layer for the glucose prediction. We tested a simple RNN, gated recurrent unit (GRU), and long-short term memory (LSTM) and varied the architectures to determine the one with the best performance. For that, we collected data for a week using a continuous glucose monitoring device. Type-2 inpatients are usually experiencing bad health conditions and have a high variability of glucose level. However, there are few studies on the Type-2 glucose prediction model while many studies performed on Type-1 glucose prediction. This work has a contribution in that the proposed model exhibits a comparative performance to previous works on Type-1 patients. For 20 in-hospital patients, we achieved an average root mean squared error (RMSE) of 21.5 and an Mean absolute percentage error (MAPE) of 11.1%. The GRU with a single RNN layer and two dense layers was found to be sufficient to predict the glucose level. Moreover, to build a personalized model, at most, 50% of data are required for training.
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