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http://dx.doi.org/10.7742/jksr.2016.10.6.443

Application of Computer-Aided Diagnosis for the Differential Diagnosis of Fatty Liver in Computed Tomography Image  

Park, Hyong-Hu (Department of Radiological Science, International University of Korea)
Lee, Jin-Soo (Department of Radiology, Inje University Haeundae Paik Hospital)
Publication Information
Journal of the Korean Society of Radiology / v.10, no.6, 2016 , pp. 443-450 More about this Journal
Abstract
In this study, we are using a computer tomography image of the abdomen, as an experimental linear research for the image of the fatty liver patients texture features analysis and computer-aided diagnosis system of implementation using the ROC curve analysis, from the computer tomography image. We tried to provide an objective and reliable diagnostic information of fatty liver to the doctor. Experiments are usually a fatty liver, via the wavelet transform of the abdominal computed tomography images are configured with the experimental image section, shows the results of statistical analysis on six parameters indicating a feature value of the texture. As a result, the entropy, average luminance, strain rate is shown a relatively high recognition rate of 90% or more, the control also, flatness, uniformity showed relatively low recognition rate of about 70%. ROC curve analysis of six parameters are all shown to 0.900 (p = 0.0001) or more, showed meaningful results in the recognition of the disease. Also, to determine the cut-off value for the prediction of disease six parameters. These results are applicable from future abdominal computed tomography images as a preliminary diagnostic article of diseases automatic detection and eventual diagnosis.
Keywords
computed tomography image; fatty liver; texture features analysis; ROC curve;
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