System to reduce the rate of patients not-adherence to medical treatment for diabetes using Machine Learning

Authors

  • Nicole Vasquez Silva Universidad Peruana De Ciencias Aplicadas - (Pe), Perú
  • Joao Alejandro Arroyo Solis Universidad Peruana De Ciencias Aplicadas - (Pe), Perú
  • Esther Aliaga Cerna Universidad Peruana De Ciencias Aplicadas - (Pe), Perú

DOI:

https://doi.org/10.18687/LACCEI2025.1.1.457

Keywords:

mobile solutions, machine learning, adherence, diabetes, endocrinology

Abstract

Measuring adherence to medical treatment in diabetic patients can be a costly and time-consuming process, with commonly used methods including pill counts, self-report questionnaires, and daily reminder phone calls. Based on this, we propose a mobile system that utilizes a supervised predictive Machine Learning algorithm. This system reduces the analysis period while identifying the probability of non-compliance with medical treatment. Furthermore, it permits physicians to monitor and control their patients conveniently and intuitively. Our proposal underwent validation with diabetes care and prevention experts, as well as patients. The study findings indicated that 72% of adult diabetes patients were able to enhance their adherence to prescribed treatments through utilizing the mobile application.

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Published

2025-04-09

How to Cite

System to reduce the rate of patients not-adherence to medical treatment for diabetes using Machine Learning. (2025). LACCEI, 1(12). https://doi.org/10.18687/LACCEI2025.1.1.457

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