Article ID Journal Published Year Pages File Type
385888 Expert Systems with Applications 2011 8 Pages PDF
Abstract

In this study, fuzzy clustering complex-valued neural network (FCCVNN) was proposed to classify portal vein Doppler signals recorded from 54 patients with cirrhosis and 36 healthy subjects. This proposed neural network is a new model for biomedical pattern classification. The FCCVNN was composed of three phases: fuzzy clustering, calculation of FFT values and complex-valued neural network (CVNN). In first phase, fuzzy clustering was done to reduce the number of segments in training pattern. After that, FFT values of Doppler signals were calculated for pre-processing and then obtained values, which include real and imaginary components, were used as the inputs of the CVNN for classification of Doppler signals. Classification results of FCCVNN were evaluated by the different performance evaluation criterion in literature. It shows that Doppler signals were classified successfully with 100% correct classification rate using the proposed method. Moreover, the rates of sensitivity and specificity were calculated as 100% using FCCVNN method. These results were seen to be appropriate with the expected results that are derived from physician’s direct diagnosis. This method would be assisted the physician to make the final decision.

Research highlights► This paper focuses on an efficient method to diagnose cirrhosis disease. ► For this aim, Fuzzy Clustering Complex-Valued Neural network is used. ► The proposed method is a new model for biomedical pattern classification. ► The rates of sensitivity and specificity is calculated as 100%.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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