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Poor glycemic control in patients with type 2 diabetes can be predicted from patient information with the help of AI

diabetes
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The risk for poor glycemic control in patients with type 2 diabetes can be predicted with confidence by using machine learning methods, a new study from Finland finds. The most important factors predicting glycemic control include prior glucose levels, duration of type 2 diabetes, and the patient's existing anti-diabetic medicines.

The researchers examined glycemic control in with type 2 in North Karelia, Finland, over a period of six years. Patients' glycemic control was determined on the basis of long-term blood glucose, HbA1c. Three HbA1c trajectories were identified from the data, and based on these, patients were divided into two groups: patients with adequate glycemic control, and patients with inadequate glycemic control. Using machine learning methods, the researchers examined the association of patients' baseline characteristics, clinical- and treatment-related factors and socio- with glycemic control. The baseline characteristics included more than 200 different variables.

The results showed that by using data on the duration of type 2 diabetes, prior HbA1c levels, fasting blood glucose, existing anti-diabetic medicines and their number, it is possible to reliably identify patients with a persistent risk for hyperglycemia at any point of their disease. In other words, inadequate glycemic control can be predicted from data that is routinely collected as part of diabetes monitoring and management.

The primary objective of treatment in type 2 diabetes is to maintain good glycemic control in order to prevent complications associated with the disease. According to the Finnish Current Care Guidelines for Diabetes, should be followed up annually, making it possible to monitor the long-term trajectory of the disease. Early identification of patients with is of paramount importance in order to target treatment to those in need and to intensify it at the right time. Delayed intensification of treatment increases the risk of complications, which is also reflected in higher costs of care.

The study utilized data from the electronic patient information system of the Joint Municipal Authority for North Karelia Social and Health Services, Siun sote, from registers maintained by the Social Insurance Institution of Finland, as well as from Statistics Finland's open postal code database, Paavo. A total of 9,631 people with type 2 diabetes were selected for the study cohorts.

More information: Piia Lavikainen et al, Data-Driven Identification of Long-Term Glycemia Clusters and Their Individualized Predictors in Finnish Patients with Type 2 Diabetes, Clinical Epidemiology (2023). DOI: 10.2147/CLEP.S380828

Citation: Poor glycemic control in patients with type 2 diabetes can be predicted from patient information with the help of AI (2023, January 5) retrieved 16 April 2024 from https://medicalxpress.com/news/2023-01-poor-glycemic-patients-diabetes-patient.html
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