Smart feeding: the role of artificial intelligence and integrated nutrition platforms in the ICU.
Authors
Affiliations (3)
Affiliations (3)
- Institute of Nutrition Research, General intensive Care Department, Beilinson Hospital, Rabin Medical Center, Petah Tikva.
- ICU, Herzliya Medical Center, and Reichman University School of Medicine, Herzliya.
- Industrial Engineering and Management, Ariel University, Ariel, Isarel.
Abstract
Tremendous improvement in the use of artificial intelligence has opened new opportunities to analyze the data obtained from electronic health records and imaging. New technologies have tried to overcome obstacles to implement guidelines and recommendations. This review aims to describe the recent progress in the use of machine learning and new technologies in the field of nutrition of the critically ill. Increase in data availability, ability to extract these data and analyze them using machine learning has allowed data scientists together with ICU specialists to improve nutritional screening and assessment and to predict occurrence of obstacles like enteral feeding intolerance or refeeding hypophosphatemia. In addition, new technologies can ensure nasogastric tube positioning and enteral feeding efficacy. Integrated platforms can integrate nutritional needs with most adequate prescriptions and modulate the nutritional administration according to the patient's tolerance and requirements. Analysis of continuous recording of imaging obtained from ultrasound can also predict gastric intolerance. Using machine learning, numerous algorithms and nomograms have been suggested to predict enteral feeding intolerance but validation of these predictions is still required. New technologies integrating energy requirements and delivery of the optimal enteral feeding are very promising.