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Performance evaluation of support vector machine and artificial neural network in the classification of liver cirhosis and hemachromatosis

机译:肝硬化和血管瘤病分类中支持向量机和人工神经网络的性能评估

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Medical image classification scheme has been on the increase in order to help physicians, and medical practitioners in their evaluation and analysis of diseases. Several classification schemes such as Artificial Neural Network (ANN), Bayes Classification, Support Vector Machine (SVM), K-Means Nearest Neighbor have been used. In this paper, we evaluate and compared the performance of ANN and SVM by analyzing Cirrhosis and Hemachromatosis-two major diseases of the liver. Corresponding results showed support vector machine is of better classification strength than neural network by achieving a percentage accuracy of 87.5%, while ANN was 71.25%.
机译:医学图像分类方案一直在增加,以帮助医生,医生在评估和分析疾病中。已经使用了几种分类方案,例如人工神经网络(ANN),贝叶斯分类,支持向量机(SVM),K均值最近邻居。在本文中,我们通过分析肝硬化和血管瘤病 - 肝脏的两种主要疾病来评估和比较ANN和SVM的性能。相应的结果显示支持向量机的分类强度优于神经网络,通过实现87.5%的百分比,而安为71.25%。

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