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DIAS-NIDDM和DIAS因果概率网络中的动态更新。

Dynamic updating in DIAS-NIDDM and DIAS causal probabilistic networks.

作者信息

Hovorka R, Tudor R S, Southerden D, Meeking D R, Andreassen S, Hejlesen O K, Cavan D A

机构信息

Metabolic Modeling Group, Centre for Measurement and Information in Medicine, City University, London, U.K.

出版信息

IEEE Trans Biomed Eng. 1999 Feb;46(2):158-68. doi: 10.1109/10.740878.

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 CPN's 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.

摘要

糖尿病咨询系统(DIAS)是一种决策支持系统,旨在为胰岛素依赖型糖尿病(IDDM)患者提供胰岛素注射量的建议。DIAS采用时间因果概率网络(CPN)来实现碳水化合物代谢的随机模型。最近,CPN网络已扩展到为非胰岛素依赖型糖尿病(NIDDM)患者提供建议。然而,由于扩展后的CPN的复杂性和规模增加,计算变得不可行。因此,对CPN网络进行了简化,并采用了一种新颖的方法来生成条件概率表。采用了动态CPN的原理,并结合条件、学习和预测方法,以高效利用时间和内存的方式得以实现。利用实验数据进行了一项评估,以比较采用IDDM患者收集的数据的原始DIAS实现和修订后的DIAS实现,并评估NIDDM患者模型参数的后验可识别性。

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