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Dual-Tree Complex Wavelet Transform and Twin Support Vector Machine for Pathological Brain Detection

机译:病态脑检测的双树复小波变换和双支持向量机

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( Aim ) Classification of brain images as pathological or healthy case is a key pre-clinical step for potential patients. Manual classification is irreproducible and unreliable. In this study, we aim to develop an automatic classification system of brain images in magnetic resonance imaging (MRI). ( Method ) Three datasets were downloaded from the Internet. Those images are of T2-weighted along axial plane with size of 256 × 256. We utilized an s -level decomposition on the basis of dual-tree complex wavelet transform (DTCWT), in order to obtain 12 s “variance and entropy (VE)” features from each subband. Afterwards, we used support vector machine (SVM) and its two variants: the generalized eigenvalue proximal SVM (GEPSVM) and the twin SVM (TSVM), as the classifiers. In all, we proposed three novel approaches: DTCWT + VE + SVM, DTCWT + VE + GEPSVM, and DTCWT + VE + TSVM. ( Results ) The results showed that our “DTCWT + VE + TSVM” obtained an average accuracy of 99.57%, which was not only better than the two other proposed methods, but also superior to 12 state-of-the-art approaches. In addition, parameter estimation showed the classification accuracy achieved the largest when the decomposition level s was assigned with a value of 1. Further, we used 100 slices from real subjects, and we found our proposed method was superior to human reports from neuroradiologists. ( Conclusions ) This proposed system is effective and feasible.
机译:(目的)将脑图像分类为病理或健康病例是潜在患者的关键临床前步骤。手动分类是不可复制且不可靠的。在这项研究中,我们旨在开发磁共振成像(MRI)中的大脑图像自动分类系统。 (方法)从互联网上下载了三个数据集。这些图像沿轴平面经过T2加权,尺寸为256×256。我们在对偶树复小波变换(DTCWT)的基础上利用s级分解,以获得12 s的“方差和熵(VE )”来自每个子带的功能。之后,我们使用支持向量机(SVM)及其两个变体:广义特征值近端SVM(GEPSVM)和孪生SVM(TSVM)作为分类器。总之,我们提出了三种新颖的方法:DTCWT + VE + SVM,DTCWT + VE + GEPSVM和DTCWT + VE + TSVM。 (结果)结果表明,我们的“ DTCWT + VE + TSVM”的平均准确度为99.57%,不仅优于其他两种建议的方法,而且优于12种最新方法。此外,参数估计表明,当将分解级别s分配为1时,分类精度达到了最大。此外,我们使用了来自真实受试者的100个切片,我们发现所提出的方法优于神经放射学家的人类报告。 (结论)该系统是有效可行的。

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