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Classification-based deep neural network vs mixture density network models for insulin sensitivity prediction problem

Balázs Benyó, Béla Paláncz, Ákos Szlávecz, Bálint Szabó, Katalin J. Kovács, J. Geoffrey Chase

2023Computer Methods and Programs in Biomedicine11 citationsDOIOpen Access PDF

Abstract

Model-based glycemic control (GC) protocols are used to treat stress-induced hyperglycaemia in intensive care units (ICUs). The STAR (Stochastic-TARgeted) glycemic control protocol - used in clinical practice in several ICUs in New Zealand, Hungary, Belgium, and Malaysia - is a model-based GC protocol using a patient-specific, model-based insulin sensitivity to describe the patient's actual state. Two neural network based methods are defined in this study to predict the patient's insulin sensitivity parameter: a classification deep neural network and a Mixture Density Network based method. Treatment data from three different patient cohorts are used to train the network models. Accuracy of neural network predictions are compared with the current model- based predictions used to guide care. The prediction accuracy was found to be the same or better than the reference. The authors suggest that these methods may be a promising alternative in model-based clinical treatment for patient state prediction. Still, more research is needed to validate these findings, including in-silico simulations and clinical validation trials.

Topics & Concepts

Artificial neural networkGlycemicComputer scienceProtocol (science)Sensitivity (control systems)Artificial intelligenceIntensive careMachine learningClinical trialData miningInsulinMedicineIntensive care medicineEngineeringInternal medicineElectronic engineeringPathologyAlternative medicineHyperglycemia and glycemic control in critically ill and hospitalized patientsDiabetes Management and ResearchSepsis Diagnosis and Treatment
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