Automatic blood glucose prediction with confidence using recurrent neural networks
Authors: John Martinsson, Alexander Schliep, Björn Eliasson, Christian Meijner, Simon Persson, Olof Mogren
Published in: CEUR Workshop Proceedings
Year: 2018
Location:
Abstract
Low-cost sensors continuously measuring blood glucose levels in intervals of a few minutes and mobile platforms combined with machine-learning (ML) solutions enable personalized precision health and disease management. ML solutions must be adapted to different sensor technologies, analysis tasks and individuals. This raises the issue of scale for creating such adapted ML solutions. We present an approach for predicting blood glucose levels for diabetics up to one hour into the future. The approach is based on recurrent neural networks trained in an end-to-end fashion, requiring nothing but the glucose level history for the patient. The model outputs the prediction along with an estimate of its certainty, helping users to interpret the predicted levels. The approach needs no feature engineering or data pre-processing, and is computationally inexpensive.
BibTeX
@inproceedings{Martinsson2018a, author = {Martinsson, John and Schliep, Alexander and Eliasson, Bj{\"{o}}rn and Meijner, Christian and Persson, Simon and Mogren, Olof}, title = {Automatic blood glucose prediction with confidence using recurrent neural networks}, booktitle = {CEUR Workshop Proceedings}, year = {2018}, volume = {2148}, pages = {64--68}, url = {https://ceur-ws.org/Vol-2148/paper10.pdf} }