Method for predicting a user's future glycemic state
First Claim
1. A method for predicting a user'"'"'s future glycemic state using a continuous glucose sensor, the method comprising:
- measuring a user'"'"'s glucose concentration with the continuous glucose sensor at intervals over a predetermined time duration, thereby generating a plurality of glucose concentrations as a function of time;
deriving a first glucose prediction equation that is a fit to the plurality of glucose concentrations as a function of time, the fit being based on a first mathematical model;
deriving a second glucose prediction equation that is a fit to the plurality of glucose concentrations as a function of time, the fit being based on a second mathematical model;
calculating a first predicted glucose concentration g1(tf) at a predetermined future time (tf) using the first glucose prediction equation;
calculating a second predicted glucose concentration g2(tf) at the predetermined future time (tf) using the second glucose prediction equation;
calculating an average predicted glucose concentration and a merit index M based on the first and second predicted glucose calculations;
wherein the merit index M is calculated using the following algorithms;
M=g2(tf)−
g1(tf)/g2(tf), if g2(tf)≧
g1(tf)
M=g1(tf)−
g2(tf)/g1(tf), if g2(tf)<
g1(tf);
inputting the plurality of glucose concentrations as a function of time, the average predicted glucose concentration and the merit index into a trained model that outputs a set of glucose concentration probabilities, andpredicting the user'"'"'s future glycemic state based on the set of glucose concentration probabilities, wherein the first mathematical model and the second mathematical model are non-identical to one another.
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Abstract
A method for predicting a user'"'"'s future glycemic state includes measuring a user'"'"'s glucose concentration at intervals over a time duration, thereby generating a plurality of glucose concentrations as a function of time. First and second glucose prediction equations that are fits to the plurality of glucose concentrations based on first and second non-identical mathematical models, respectively, are then derived. The method also includes calculating first and second predicted glucose concentrations at a future time using the first and second glucose prediction equations, respectively. Thereafter, an average predicted glucose concentration and a merit index are calculated based on the first and second predicted glucose calculations. The plurality of glucose concentrations as a function of time, the merit index and average predicted glucose concentration are input into a trained model (for example, a Hidden Markov Model) that outputs a set of glucose concentration probabilities. The user'"'"'s future glycemic state is then predicted based on the set of glucose concentration probabilities.
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Citations
7 Claims
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1. A method for predicting a user'"'"'s future glycemic state using a continuous glucose sensor, the method comprising:
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measuring a user'"'"'s glucose concentration with the continuous glucose sensor at intervals over a predetermined time duration, thereby generating a plurality of glucose concentrations as a function of time; deriving a first glucose prediction equation that is a fit to the plurality of glucose concentrations as a function of time, the fit being based on a first mathematical model; deriving a second glucose prediction equation that is a fit to the plurality of glucose concentrations as a function of time, the fit being based on a second mathematical model; calculating a first predicted glucose concentration g1(tf) at a predetermined future time (tf) using the first glucose prediction equation; calculating a second predicted glucose concentration g2(tf) at the predetermined future time (tf) using the second glucose prediction equation; calculating an average predicted glucose concentration and a merit index M based on the first and second predicted glucose calculations; wherein the merit index M is calculated using the following algorithms;
M=g2(tf)−
g1(tf)/g2(tf), if g2(tf)≧
g1(tf)
M=g1(tf)−
g2(tf)/g1(tf), if g2(tf)<
g1(tf);inputting the plurality of glucose concentrations as a function of time, the average predicted glucose concentration and the merit index into a trained model that outputs a set of glucose concentration probabilities, and predicting the user'"'"'s future glycemic state based on the set of glucose concentration probabilities, wherein the first mathematical model and the second mathematical model are non-identical to one another. - View Dependent Claims (2, 3, 4, 5, 6, 7)
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Specification