Title :
Dynamic updating in DIAS-NIDDM and DIAS causal probabilistic networks
Author :
Hovorka, Roman ; Tudor, Romulus S. ; Southerden, David ; Meeking, Darryl R. ; Andreassen, Steen ; Hejlesen, Ole K. ; Cavan, David A.
Author_Institution :
Centre for Meas. & Inf. in Med., City Univ., London, UK
Abstract :
Diabetes advisory system (DIAS) is a decision support system, which has been developed to provide advice on the amount of insulin injected by subjects with insulin-dependent diabetes mellitus (IDDM). DIAS employs a temporal causal probabilistic network (CPN) to implement a stochastic model of carbohydrate metabolism. The CPN network has recently been extended to provide also advice to subjects with noninsulin-dependent diabetes mellitus (NIDDM). However, due to increased complexity and size of the extended CPN the calculations became unfeasible. The CPN network was, therefore, simplified and a novel approach employed to generate conditional probability tables. The principles of dynamic CPNs were adopted and, in combination with the method of conditioning, learning, and forecasting, were implemented in a time- and memory-efficient way. An evaluation using experimental data was carried out to compare the original and revised DIAS implementations employing data collected by patients with IDDM, and to assess the a posteriori identifiability of model parameters in patients with NIDDM.
Keywords :
Bayes methods; decision support systems; diseases; medical expert systems; neural nets; parameter estimation; probability; DIAS causal probabilistic network; DIAS-NIDDM; a posteriori identifiability; carbohydrate metabolism; conditional probability tables generation; dynamic updating; insulin injection amount; model parameters; noninsulin-dependent diabetes mellitus; stochastic model; Bayesian methods; Biochemistry; Biomedical informatics; Biomedical measurements; Decision support systems; Diabetes; Hospitals; Insulin; Intelligent networks; Stochastic processes; Adult; Bayes Theorem; Computer Simulation; Decision Support Systems, Clinical; Diabetes Mellitus, Type 2; Female; Humans; Insulin; Male; Middle Aged; Models, Biological; Monte Carlo Method; Neural Networks (Computer); Prognosis; Stochastic Processes; Time Factors;
Journal_Title :
Biomedical Engineering, IEEE Transactions on