For the 1.5 million individuals in the United States living with type 1 diabetes (T1D) the importance of maintaining near normal glycemic control, typically measured by glycosylated hemoglobin (A1C), to prevent microvascular and macrovascular complications is well established. Despite this, most individuals do not meet their glycemic targets with preteens and adolescents faring far worse than their older and younger counterparts. Insulin pump therapy can improve glycemic control and quality of life, however, unlike younger and older age groups, adolescents show no significant improvement in A1C with insulin pump therapy. Insulin pump therapy is a more physiologic form of insulin delivery than multiple daily injections yet these complex machines rely heavily on individual proficiency, surveillance and self-management behaviors to achieve clinical benefit. Suboptimal pump management and unsafe pump behaviors can lead to a decline in glycemic control and adverse events. Research examining insulin pump self-management is limited. The insulin pump download is a valuable objective measure of insulin pump adherence and utilization, yet it remains underutilized in diabetes research. Many insulin pumps have incorporated cloud based platforms allowing patient insulin pump data to be directly transferred and stored indefinitely providing a fertile source of diabetes self-management ?big data.? Identification of key factors effecting insulin pump self-management and, hence, glycemic control is essential for the development of innovative approaches to improve insulin pump self- management. In this proposed mixed method study, we will (1) analyze current insulin pump management behaviors (e.g., frequency of blood glucose testing, insulin bolus frequency, use of bolus calculator, use of advanced features) among 80 preteens and adolescents with T1D by downloading participant's personal insulin pump; (2) correlate insulin pump download data with measures of glycemic control (e.g., A1C; time in target 70-180mg/dl); and (3) describe the experience of insulin pump self-management, including facilitators and barriers of insulin pump adherence and use, among a subset of preteens/adolescents with good (n=10) and poor (n=10) glycemic control. Bivariate tests, Multiple Linear Regressions and Poisson regression will be used in our analysis of derived insulin pump self-management variables and glycemic control, adjusting for covariates. Further analyses using big data approaches including data visualization will be explored during this research assistantship. The goals of the pre-doctoral research training plan are: 1) Build expertise of adolescent development and behavior; 2) Develop skills in designing and implementing research focused on pre-teen and adolescent chronic disease self-management; 3) Develop skills in `big data' analysis and 4) Develop skills in grantsmanship and research dissemination. This research training proposal is congruent with NINR's mission to support research that models or improves understanding of self-management behaviors as well as cross-cutting alignment in advancing big data analytics for technology to improve health.

Public Health Relevance

Type 1 diabetes is an incredibly complex disease to self-manage especially during adolescence when only 16% of individuals meet their treatment targets even when they use advanced technologies such as insulin pump therapy. The purpose of this research is to examine preteen and adolescent insulin pump self-management by analyzing data (28-days) directly from their personal insulin pumps and conducting in-depth interviews with selected individuals who demonstrate good and poor self-management. Completion of this project will inform development of new innovative approaches to improve insulin pump self-management in this vulnerable age group.

Agency
National Institute of Health (NIH)
Institute
National Institute of Nursing Research (NINR)
Type
Predoctoral Individual National Research Service Award (F31)
Project #
5F31NR017542-02
Application #
9587422
Study Section
National Institute of Nursing Research Initial Review Group (NRRC)
Program Officer
Banks, David
Project Start
2018-01-01
Project End
2020-12-31
Budget Start
2019-01-01
Budget End
2019-12-31
Support Year
2
Fiscal Year
2019
Total Cost
Indirect Cost
Name
Ohio State University
Department
Type
Schools of Nursing
DUNS #
832127323
City
Columbus
State
OH
Country
United States
Zip Code
43210