Machine learning for non‐invasive sensing of hypoglycaemia while driving in people with diabetes

V Lehmann, T Zueger, M Maritsch… - Diabetes, Obesity …, 2023 - Wiley Online Library
V Lehmann, T Zueger, M Maritsch, M Kraus, C Albrecht, C Bérubé, S Feuerriegel
Diabetes, Obesity and Metabolism, 2023Wiley Online Library
Aim To develop and evaluate the concept of a non‐invasive machine learning (ML)
approach for detecting hypoglycaemia based exclusively on combined driving (CAN) and
eye tracking (ET) data. Materials and Methods We first developed and tested our ML
approach in pronounced hypoglycaemia, and then we applied it to mild hypoglycaemia to
evaluate its early warning potential. For this, we conducted two consecutive, interventional
studies in individuals with type 1 diabetes. In study 1 (n= 18), we collected CAN and ET data …
Aim
To develop and evaluate the concept of a non‐invasive machine learning (ML) approach for detecting hypoglycaemia based exclusively on combined driving (CAN) and eye tracking (ET) data.
Materials and Methods
We first developed and tested our ML approach in pronounced hypoglycaemia, and then we applied it to mild hypoglycaemia to evaluate its early warning potential. For this, we conducted two consecutive, interventional studies in individuals with type 1 diabetes. In study 1 (n = 18), we collected CAN and ET data in a driving simulator during euglycaemia and pronounced hypoglycaemia (blood glucose [BG] 2.0‐2.5 mmol L−1). In study 2 (n = 9), we collected CAN and ET data in the same simulator but in euglycaemia and mild hypoglycaemia (BG 3.0‐3.5 mmol L−1).
Results
Here, we show that our ML approach detects pronounced and mild hypoglycaemia with high accuracy (area under the receiver operating characteristics curve 0.88 ± 0.10 and 0.83 ± 0.11, respectively).
Conclusions
Our findings suggest that an ML approach based on CAN and ET data, exclusively, enables detection of hypoglycaemia while driving. This provides a promising concept for alternative and non‐invasive detection of hypoglycaemia.
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