Predictors of adherence with self-care guidelines among persons with type 2 diabetes: Results from a logistic regression tree analysis

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Abstract

Type 2 diabetes is known to contribute to health disparities in the U.S. and failure to adhere to recommended self-care behaviors is a contributing factor. Intervention programs face difficulties as a result of patient diversity and limited resources. With data from the 2005 Behavioral Risk Factor Surveillance System, this study employs a logistic regression tree algorithm to identify characteristics of sub-populations with type 2 diabetes according to their reported frequency of adherence to four recommended diabetes self-care behaviors including blood glucose monitoring, foot examination, eye examination and HbA1c testing. Using Andersen's health behavior model, need factors appear to dominate the definition of which sub-groups were at greatest risk for low as well as high adherence. Findings demonstrate the utility of easily interpreted tree diagrams to design specific culturally appropriate intervention programs targeting sub-populations of diabetes patients who need to improve their self-care behaviors. Limitations and contributions of the study are discussed. © Springer Science+Business Media, LLC 2011.

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Yamashita, T., Kart, C. S., & Noe, D. A. (2012). Predictors of adherence with self-care guidelines among persons with type 2 diabetes: Results from a logistic regression tree analysis. Journal of Behavioral Medicine, 35(6), 603–615. https://doi.org/10.1007/s10865-011-9392-y

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