A Mixture of Experts Model for the Diagnosis of Liver Cirrhosis by Measuring the Liver Stiffness

The mixture-of-experts (ME) network uses a modular type of neural network architecture optimized for supervised learning. This model has been applied to a variety of areas related to pattern classification and regression. In this research, we applied a ME model to classify hidden subgroups and test...

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Bibliographic Details
Published inHealthcare informatics research Vol. 18; no. 1; pp. 29 - 34
Main Authors Myoung, Sungmin, Chang, Ji Hong, Song, Kijun
Format Journal Article
LanguageEnglish
Published Korea (South) Korean Society of Medical Informatics 01.03.2012
The Korean Society of Medical Informatics
대한의료정보학회
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ISSN2093-3681
2093-369X
2093-369X
DOI10.4258/hir.2012.18.1.29

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Summary:The mixture-of-experts (ME) network uses a modular type of neural network architecture optimized for supervised learning. This model has been applied to a variety of areas related to pattern classification and regression. In this research, we applied a ME model to classify hidden subgroups and test its significance by measuring the stiffness of the liver as associated with the development of liver cirrhosis. The data used in this study was based on transient elastography (Fibroscan) by Kim et al. We enrolled 228 HBsAg-positive patients whose liver stiffness was measured by the Fibroscan system during six months. Statistical analysis was performed by R-2.13.0. A classical logistic regression model together with an expert model was used to describe and classify hidden subgroups. The performance of the proposed model was evaluated in terms of the classification accuracy, and the results confirmed that the proposed ME model has some potential in detecting liver cirrhosis. This method can be used as an important diagnostic decision support mechanism to assist physicians in the diagnosis of liver cirrhosis in patients.
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G704-001070.2012.18.1.010
ISSN:2093-3681
2093-369X
2093-369X
DOI:10.4258/hir.2012.18.1.29