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Data Based Prediction of Blood Glucose Concentrations Using Evolutionary Methods. | LitMetric

Data Based Prediction of Blood Glucose Concentrations Using Evolutionary Methods.

J Med Syst

Adaptive and Bioinspired System Group, School of Informatics, Universidad Complutense de Madrid, C/ Profesor José García Santesmases 9, 28040, Madrid, Spain.

Published: August 2017

AI Article Synopsis

  • Predicting glucose levels is essential for people with diabetes to prevent complications, and machine learning techniques show promise for improving this task.
  • Several methods, including genetic programming and random forests, are employed to model glucose concentration based on continuous monitoring data, carbohydrate intakes, and insulin injections.
  • The study indicates that while 90% of predictions are accurate, there's still a margin for error, with some serious inaccuracies remaining in the best methods used.

Article Abstract

Predicting glucose values on the basis of insulin and food intakes is a difficult task that people with diabetes need to do daily. This is necessary as it is important to maintain glucose levels at appropriate values to avoid not only short-term, but also long-term complications of the illness. Artificial intelligence in general and machine learning techniques in particular have already lead to promising results in modeling and predicting glucose concentrations. In this work, several machine learning techniques are used for the modeling and prediction of glucose concentrations using as inputs the values measured by a continuous monitoring glucose system as well as also previous and estimated future carbohydrate intakes and insulin injections. In particular, we use the following four techniques: genetic programming, random forests, k-nearest neighbors, and grammatical evolution. We propose two new enhanced modeling algorithms for glucose prediction, namely (i) a variant of grammatical evolution which uses an optimized grammar, and (ii) a variant of tree-based genetic programming which uses a three-compartment model for carbohydrate and insulin dynamics. The predictors were trained and tested using data of ten patients from a public hospital in Spain. We analyze our experimental results using the Clarke error grid metric and see that 90% of the forecasts are correct (i.e., Clarke error categories A and B), but still even the best methods produce 5 to 10% of serious errors (category D) and approximately 0.5% of very serious errors (category E). We also propose an enhanced genetic programming algorithm that incorporates a three-compartment model into symbolic regression models to create smoothed time series of the original carbohydrate and insulin time series.

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Source
http://dx.doi.org/10.1007/s10916-017-0788-2DOI Listing

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