Table 5.
Possible critical care applications of artificial intelligence in diabetes management
|
Potential applications
|
Clinical examples
|
| Blood glucose monitoring and prediction of adverse glycaemic events | Early detection of hypoglycaemia and hyperglycaemias e.g., MD-Logic controller |
| Blood glucose control strategies | Software-based algorithms for insulin dosing e.g., proportional-integral-derivative models, Glucose Regulation for Intensive Care Patients, and Model predictive controls |
| Insulin bolus calculators and advisory systems | CGM regulated insulin infusion system predicting hypoglycaemia and regulating insulin doses |
| Artificial intelligence based artificial pancreas | |
| Risk and patient stratification | Prediction of sepsis and risk of nosocomial infections |
| Risk of renal and cardiac complications like acute kidney injury and myocardial infarction | |
| Need for ICU admission | |
| ICU mortality |
CGM: Continuous glucose monitoring, ICU: Intensive care unit.