Literature DB >> 31945995

LSTMs and Neural Attention Models for Blood Glucose Prediction: Comparative Experiments on Real and Synthetic Data.

Sadegh Mirshekarian, Hui Shen, Razvan Bunescu, Cindy Marling.   

Abstract

We have shown in previous work that LSTM networks are effective at predicting blood glucose levels in patients with type I diabetes, outperforming human experts and an SVR model trained with features computed by manually engineered physiological models. In this paper we present the results of a much larger set of experiments on real and synthetic datasets in what-if, agnostic, and inertial scenarios. Experiments on a more recent real-patient dataset, which we are releasing to the research community, demonstrate that LSTMs are robust to noise and can easily incorporate additional features, such as skin temperature, heart rate and skin conductance, without any change in the architecture. A neural attention module that we designed specifically for time series prediction improves prediction performance on synthetic data; however, the improvements do not transfer to real data. Conversely, using time of day as an additional input feature consistently improves the LSTM performance on real data but not on synthetic data. These and other differences show that behavior on synthetic data cannot be assumed to always transfer to real data, highlighting the importance of evaluating physiological models on data from real patients.

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Year:  2019        PMID: 31945995     DOI: 10.1109/EMBC.2019.8856940

Source DB:  PubMed          Journal:  Annu Int Conf IEEE Eng Med Biol Soc        ISSN: 2375-7477


  7 in total

1.  Comparing Machine Learning Techniques for Blood Glucose Forecasting Using Free-living and Patient Generated Data.

Authors:  Hadia Hameed; Samantha Kleinberg
Journal:  Proc Mach Learn Res       Date:  2020-08

2.  The OhioT1DM Dataset for Blood Glucose Level Prediction: Update 2020.

Authors:  Cindy Marling; Razvan Bunescu
Journal:  CEUR Workshop Proc       Date:  2020-09

Review 3.  The Potential of Current Noninvasive Wearable Technology for the Monitoring of Physiological Signals in the Management of Type 1 Diabetes: Literature Survey.

Authors:  Elena Daskalaki; Anne Parkinson; Nicola Brew-Sam; Md Zakir Hossain; David O'Neal; Christopher J Nolan; Hanna Suominen
Journal:  J Med Internet Res       Date:  2022-04-08       Impact factor: 7.076

4.  Stacked LSTM based deep recurrent neural network with kalman smoothing for blood glucose prediction.

Authors:  Md Fazle Rabby; Yazhou Tu; Md Imran Hossen; Insup Lee; Anthony S Maida; Xiali Hei
Journal:  BMC Med Inform Decis Mak       Date:  2021-03-16       Impact factor: 2.796

5.  LSTMs and Deep Residual Networks for Carbohydrate and Bolus Recommendations in Type 1 Diabetes Management.

Authors:  Jeremy Beauchamp; Razvan Bunescu; Cindy Marling; Zhongen Li; Chang Liu
Journal:  Sensors (Basel)       Date:  2021-05-10       Impact factor: 3.576

6.  An Insulin Bolus Advisor for Type 1 Diabetes Using Deep Reinforcement Learning.

Authors:  Taiyu Zhu; Kezhi Li; Lei Kuang; Pau Herrero; Pantelis Georgiou
Journal:  Sensors (Basel)       Date:  2020-09-06       Impact factor: 3.576

7.  A Deep Learning Framework for Automatic Meal Detection and Estimation in Artificial Pancreas Systems.

Authors:  John Daniels; Pau Herrero; Pantelis Georgiou
Journal:  Sensors (Basel)       Date:  2022-01-08       Impact factor: 3.576

  7 in total

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