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用于对多普勒超声血流信号进行建模的专家混合网络结构。

A mixture of experts network structure for modelling Doppler ultrasound blood flow signals.

作者信息

Güler Inan, Ubeyl Elif Derya

机构信息

Department of Electronics and Computer Education, Faculty of Technical Education, Gazi University, 06500 Teknikokullar, Ankara, Turkey.

出版信息

Comput Biol Med. 2005 Oct;35(7):565-82. doi: 10.1016/j.compbiomed.2004.04.001.

Abstract

Mixture of experts (ME) is a modular neural network architecture for supervised learning. This paper illustrates the use of ME network structure to guide modelling Doppler ultrasound blood flow signals. Expectation-Maximization (EM) algorithm was used for training the ME so that the learning process is decoupled in a manner that fits well with the modular structure. The ophthalmic and internal carotid arterial Doppler signals were decomposed into time-frequency representations using discrete wavelet transform and statistical features were calculated to depict their distribution. The ME network structures were implemented for diagnosis of ophthalmic and internal carotid arterial disorders using the statistical features as inputs. To improve diagnostic accuracy, the outputs of expert networks were combined by a gating network simultaneously trained in order to stochastically select the expert that is performing the best at solving the problem. The ME network structure achieved accuracy rates which were higher than that of the stand-alone neural network models.

摘要

专家混合模型(ME)是一种用于监督学习的模块化神经网络架构。本文阐述了使用ME网络结构来指导对多普勒超声血流信号进行建模。期望最大化(EM)算法用于训练ME,以便学习过程以一种与模块化结构非常契合的方式解耦。使用离散小波变换将眼科和颈内动脉多普勒信号分解为时频表示,并计算统计特征以描述其分布。以这些统计特征作为输入,实现了ME网络结构用于诊断眼科和颈内动脉疾病。为提高诊断准确性,专家网络的输出由一个同时训练的门控网络进行组合,以便随机选择在解决问题方面表现最佳的专家。ME网络结构实现的准确率高于独立神经网络模型。

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