A Priori Classification of Type 2 Diabetes Patients to Determine the Needed Therapy Option

  • Pavlo Tkachenko
  • , Florian Reiterer
  • , Merete B. Christensen
  • , Kirsten Norgaard
  • , Luigi Del Re

Research output: Contribution to journalArticlepeer-review

Abstract

Introduction: T2D patients represent the majority of diabetes patients, and a large and increasing proportion is on insulin, with a huge impact on health care costs. For some a certain degree of automation of insulin dosing and/or regimen adjustment is required. The aim here is to define a priori the automation level required and beneficial for the individual patient. Methods: Data from an outpatient study of 14 T2D patients currently unsuccessfully using MDI therapy were used as a baseline and different optimized insulin therapy options were tested in simulation. Among them 9 were able to reach their therapeutic goals (defined here as HbA1c < 7% and time in hypoglycemia < 2%) with CSII therapy, while 5 needed an Artificial Pancreas (AP) system. In a next step it was attempted to correlate the simulation outcomes with patient features to check whether it is possible to define the preferred therapy option before implementation by classifying those patients into AP or CSII group based on features that could be available beforehand. Results: Coefficient of variation (CV) computed from 14 days of CGM data at baseline MDI therapy and HbA1c have been found to be suitable features for an a priori classification via Naïve Bayes or Classification Tree (CT) algorithm which results in a perfect separation of classes. Conclusion: It was found that it seems possible to predict which subgroup of T2D patients has an additional benefit of using an AP.
Original languageEnglish
Number of pages1
JournalDiabetes
Volume68
DOIs
Publication statusPublished - Jun 2019

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 3 - Good Health and Well-being
    SDG 3 Good Health and Well-being

Fields of science

  • 206002 Electro-medical engineering
  • 207109 Pollutant emission
  • 202 Electrical Engineering, Electronics, Information Engineering
  • 202027 Mechatronics
  • 202034 Control engineering
  • 203027 Internal combustion engines
  • 206001 Biomedical engineering

JKU Focus areas

  • Digital Transformation
  • Sustainable Development: Responsible Technologies and Management

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