Short Term Blood Glucose Prediction based on Continuous Glucose
Monitoring Data
- URL: http://arxiv.org/abs/2002.02805v2
- Date: Wed, 15 Jul 2020 20:18:33 GMT
- Title: Short Term Blood Glucose Prediction based on Continuous Glucose
Monitoring Data
- Authors: Ali Mohebbi, Alexander R. Johansen, Nicklas Hansen, Peter E.
Christensen, Jens M. Tarp, Morten L. Jensen, Henrik Bengtsson and Morten
M{\o}rup
- Abstract summary: This study explores the use of Continuous Glucose Monitoring (CGM) data as input for digital decision support tools.
We investigate how Recurrent Neural Networks (RNNs) can be used for Short Term Blood Glucose (STBG) prediction.
- Score: 53.01543207478818
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Continuous Glucose Monitoring (CGM) has enabled important opportunities for
diabetes management. This study explores the use of CGM data as input for
digital decision support tools. We investigate how Recurrent Neural Networks
(RNNs) can be used for Short Term Blood Glucose (STBG) prediction and compare
the RNNs to conventional time-series forecasting using Autoregressive
Integrated Moving Average (ARIMA). A prediction horizon up to 90 min into the
future is considered. In this context, we evaluate both population-based and
patient-specific RNNs and contrast them to patient-specific ARIMA models and a
simple baseline predicting future observations as the last observed. We find
that the population-based RNN model is the best performing model across the
considered prediction horizons without the need of patient-specific data. This
demonstrates the potential of RNNs for STBG prediction in diabetes patients
towards detecting/mitigating severe events in the STBG, in particular
hypoglycemic events. However, further studies are needed in regards to the
robustness and practical use of the investigated STBG prediction models.
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