Subsequently, the scientists developed a novel machine learning (ML) model capable of automatically and reliably detecting hypoglycemic episodes using only routinely collected driving data and head/gaze motion data.
“This technology could serve as an early warning system in cars and enable drivers to take necessary precautions before hypoglycemic symptoms impair their ability to drive safely,” says Simon Schallmoser, doctoral candidate at the Institute of AI in Management at LMU and one of the contributing researchers.
The newly developed ML model also performed well when only head/gaze motion data was used, which is crucial for future self-driving cars. Professor Stefan Feuerriegel, head of the Institute of AI in Management and project partner, explains, “This study not only showcases the potential for AI to improve individual health outcomes but also its role in improving safety on public roads.”
More information:
Vera Lehmann et al, Machine Learning to Infer a Health State Using Biomedical Signals—Detection of Hypoglycemia in People with Diabetes while Driving Real Cars, NEJM AI (2024). DOI: 10.1056/AIoa2300013
Citation:
AI model provides a hypoglycemia early warning system when driving (2024, February 8)
retrieved 8 February 2024
from https://medicalxpress.com/news/2024-02-ai-hypoglycemia-early.html
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