Title of article :
Adherence to Insulin Treatment in Participants with Type 2 Diabetes: Comparison of Logistic Regression and Conditional Tree and Forests to Determine the Effective Factors
Author/Authors :
Mirahmadizadeh, Alireza Shiraz University of Medical Sciences - School of Health - Department of Epidemiology , Sahraian, Sadaf The Russell H. Morgan Department of Radiological Sciences - Division of Neuroradiology , Delam, Hamed Larestan University of Medical Sciences - Student Research Committee , Seif, Mozhgan Shiraz University of Medical Sciences - School of Health - Department of Epidemiology
Abstract :
Background: Type 2 diabetes is the most prevalent chronic
disease in the world. Timely and appropriate control can
significantly reduce the burdens and costs of this disease.
Although insulin injection is the most efficient method to control
type 2 diabetes, patients avoid this method for unknown reasons.
The main aim of the present study is to determine the factors
influential in non-adherence to insulin using tools and models
that have not been applied in this field so far.
Methods: The tendency to insulin injection in 457 patients with
type 2 diabetes was investigated in this cross-sectional study
using the classic logistic regression and new learning algorithms,
including conditional tree, conditional forest, and random forest.
Different fits were compared so that the best model can be
determined to identify the factors in non-adherence to insulin.
Results: Although random forest had the highest accuracy among
the fitted models, all the methods had a relative consensus that
having life insurance, academic education, and insulin injection
experience in immediate family members increase the tendency
to accept insulin therapy. Our results also showed that younger
patients and those who were committed to a specific diet better
approved insulin therapy.Conclusion: The reasons for non-adherence to insulin can besummarized in economic and psychological aspects. Therefore,
the health system policies are recommended to address economic
issues and also raise public awareness about this treatment method.
Keywords :
Type 2 diabetes , Insulin , Decision trees , Forests
Journal title :
Journal of Health Sciences and Surveillance System