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A New Approach for Liver Classification Using Ridgelet / Ripplet-II Transforms, Feature Groups and ANN

机译:使用脊/ ripplet-II变换,特征群和ANN的肝分类新方法

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In this study, 68 Liver MR images (28 of them labeled as hemangioma, 40 of them labeled as cyst by specialist radiologists) were classified by using artificial neural network (ANN). Ridgelet transform and its advanced new generation form (called Ripplet-II transform) were applied on these images to compare their effects on liver image classification. Feature vectors were generated by calculating mean, standard deviation, variance, skewness, kurtosis and moment values of coefficient matrices. Firstly, all feature vectors were given as inputs to an ANN and classification process was realized. Then, vectors were seperated into three groups and classified by using three ANNs. This procedure was repeated with two ANNs and two groups of feature vectors. Outputs of the systems which used more than one ANN were evaluated by implementing AND and OR operations seperately. Accuracy, sensitivity and specifity values of obtained results were calculated and compared. The best results were achieved by evaluating the system which used three ANNs and three groups of statistical feature vectors, with AND / OR operations.
机译:在本研究中,通过使用人工神经网络(ANN)为68个肝脏MR图像(标记为血管瘤的血管瘤中标记为囊肿的28个)。在这些图像上应用Ridgelet变换及其先进的新一代形式(称为ripplet-II变换),以比较它们对肝脏图像分类的影响。通过计算系数矩阵的平均值,标准偏差,方差,偏移,峰值和矩值来产生特征载体。首先,所有特征向量都被提供为ANN的输入,并实现了分类过程。然后,将载体分成三组,并通过三个ANN进行分类。使用两个ANN和两组特征向量重复该过程。使用多个ANN的系统的输出通过单独实施和和或操作来评估。计算并比较了获得结果的准确性,灵敏度和指定值。通过评估使用三个ANNS和三组统计特征向量的系统来实现最佳结果,其中包括和/或操作。

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