Automatically accounting for physical activity in insulin dosing for type 1 diabetes

Basak Ozaslan, Stephen D Patek, Chiara Fabris, Marc D Breton, Basak Ozaslan, Stephen D Patek, Chiara Fabris, Marc D Breton

Abstract

Background and objective: Type 1 diabetes is a disease characterized by lifelong insulin administration to compensate for the autoimmune destruction of insulin-producing pancreatic beta-cells. Optimal insulin dosing presents a challenge for individuals with type 1 diabetes, as the amount of insulin needed for optimal blood glucose control depends on each subject's varying needs. In this context, physical activity represents one of the main factors altering insulin requirements and complicating treatment decisions. This work aims to develop and test in simulation a data-driven method to automatically incorporate physical activity into daily treatment decisions to optimize mealtime glycemic control in individuals with type 1 diabetes.

Methods: We leveraged glucose, insulin, meal and physical activity data collected from twenty-three individuals to develop a method that (i) tracks and quantifies the accumulated glycemic impact from daily physical activity in real-time, (ii) extracts an individualized routine physical activity profile, and (iii) adjusts insulin doses according to the prolonged changes in insulin needs due to deviations in daily physical activity in a personalized manner. We used the data replay simulation framework developed at the University of Virginia to "re-simulate" the clinical data and estimate the performances of the new decision support system for physical activity informed insulin dosing against standard insulin dosing. The paired t-test is used to compare the performances of dosing methods with p < 0.05 as the significance threshold.

Results: Simulation results show that, compared with standard dosing, the proposed physical-activity informed insulin dosing could result in significantly less time spent in hypoglycemia (15.3± 8% vs. 11.1± 4%, p = 0.007) and higher time spent in the target glycemic range (66.1± 11.7% vs. 69.6± 12.2%, p < 0.01) and no significant difference in the time spent above the target range(26.6± 1.4 vs. 27.4± 0.1, p = 0.5).

Conclusions: Integrating daily physical activity, as measured by the step count, into insulin dose calculations has the potential to improve blood glucose control in daily life with type 1 diabetes.

Keywords: Activity on board; Diabetes; Insulin dosing; Physical activity.

Conflict of interest statement

Declaration of Competing Interest None.

Copyright © 2020. Published by Elsevier B.V.

Figures

Figure 1—
Figure 1—
(A) Observed average change in glucose uptake, as a result of a 45-minutes (nine five-minute time intervals) bout of moderate-intensity PA extracted from and (B) AOBcurve representing the evolution of the percent of glycemic impact left from the performed PA -obtained from (A) using Equation (4). The x-axis is time index in both panels (A) and (B), depicting 13.5 hours in 162 5-minute intervals.
Figure 2—
Figure 2—
Comparison of BG traces resulting from the standard vs. PA informed dinner boluses (standard bolus parameters: CR = 7g/unit; PA informed bolus parameters: CR* = 8.6 g/unit AF1 = 1171 and AF2 = 2657).

Source: PubMed

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