DEC 20, 2023 6:12 AM PST

The Role of AI in Basal Insulin Titration in Patients with Type 2 Diabetes Mellitus

WRITTEN BY: Greta Anne

Diabetes, affecting millions worldwide, poses a significant challenge to the healthcare system due to the complexity of therapy and difficulty to adequately control the disease. Particularly, patients with Type 2 diabetes often struggle with achieving glycemic control, facing barriers such as limited access to education on the disease state, multiple lines of failed therapies, and lack of timely dose adjustments. A groundbreaking study conducted at Stanford University with results published in the Journal of the American Medical Association explored the potential of a voice-based conversational artificial intelligence (VBAI) application in autonomously managing basal insulin titration. 

The Managing Insulin with Voice AI (MIVA) trial involved 32 adults with type 2 diabetes requiring initiation or adjustment of once-daily basal insulin. The participants were randomized in a 1:1 ratio to receive basal insulin management with the VBAI application or standard care. 

One of the study’s most striking findings was the significant reduction in the time required to achieve optimal insulin dosing for the VBAI group compared to the standard care group. The median time to optimal insulin dose was a mere 15 days for the VBAI group, while the standard care group exceeded 56 days, showcasing the efficiency of the VBAI intervention. Additionally, Insulin adherence is a critical factor in diabetes management. The VBAI group demonstrated substantially better adherence (82.9%) than the standard care group (50.2%). 

Patients in the VBAI group experienced a decrease in diabetes-related emotional distress, as indicated by the PAID-5 survey. In contrast, the standard care group exhibited an increase in distress. Attitudes toward health technology also showed a positive trend in the VBAI group, emphasizing the potential psychological benefits of incorporating AI into diabetes management.

Achieving glycemic control is a primary goal in diabetes management. The VBAI group outperformed the standard care group, with 81.3% of participants achieving glycemic control compared to 25% in the standard care group. The mean fasting blood glucose level in the VBAI group decreased significantly by 45.9 mg/dL, whereas the standard care group showed an increase of 23.0 mg/dL.

The MIVA trial unveils a promising future for AI-driven solutions in type 2 diabetes management. The VBAI application showcased clinical efficacy in achieving rapid glycemic control and improvements in patient adherence and emotional well-being. As the field of digital health continues to evolve, the study sets the stage for further innovations in AI-driven interventions, ushering in a new era in personalized and patient-centric diabetes care. 

 

Sources: Mayo ClinicJournal of the American Medical Association

About the Author
Bachelor's (BA/BS/Other)
Greta is currently a writer at Labroots and a 3rd year Doctor of Pharmacy student, with a Bachelor of Science degree in Physiology and Neurobiology. Innovation is her passion, especially when it comes to pharma, entrepreneurship, science, and art. She is hoping to pursue a career in pharma while also fostering her creative initiatives.
You May Also Like
Loading Comments...