Development of a neural network model for predicting glucose levels in a surgical critical care setting

Patient Saf Surg. 2010 Sep 9;4(1):15. doi: 10.1186/1754-9493-4-15.

Abstract

Development of neural network models for the prediction of glucose levels in critically ill patients through the application of continuous glucose monitoring may provide enhanced patient outcomes. Here we demonstrate the utilization of a predictive model in real-time bedside monitoring. Such modeling may provide intelligent/directed therapy recommendations, guidance, and ultimately automation, in the near future as a means of providing optimal patient safety and care in the provision of insulin drips to prevent hyperglycemia and hypoglycemia.