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Wavelet-entropy based detection of pathological brain in MRI scanning

机译:基于小波熵的MRI扫描病理脑检测

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An accurate diagnosis is important for the medical treatment of patients suffering from brain diseases. Nuclear Magnetic Resonance (NMR) images are commonly used by technicians to assist the pre-clinical diagnosis, rating them by visual evaluations. The classification of NMR images of normal and pathological brains pose a challenge from technological point of view, since NMR imaging generates a large information set that reflects the conditions of the brain. In this work, we present a computer assisted diagnosis method based on a wavelet-entropy of the feature space approach and the Support Vector Machine (SVM) classification method for improving the brain diagnosis accuracy by means of NMR images. The most relevant image feature is selected as the wavelet entropy and is used to train the SVM classifier. The results for over 64 images show that the sensitivity of the classifier is as high as 87.5%, the specificity is 100%, and the overall accuracy is 89.5%. It is easily observed from the data that the proposed classifier can detect abnormality in the brain from the normal controls within excellent performance ranges, which is competitive with latest existing methods.
机译:准确的诊断对于患有脑病的患者的医疗是重要的。核磁共振(NMR)图像通常由技术人员使用,以协助临床前诊断,通过视觉评估评定它们。正常和病理学大脑的NMR图像分类从技术角度造成挑战,因为NMR成像产生了反映大脑条件的大型信息集。在这项工作中,我们介绍了一种基于特征空间方法的小波熵的计算机辅助诊断方法和支持向量机(SVM)分类方法,用于通过NMR图像提高大脑诊断精度。选择最相关的图像功能作为小波熵,用于培训SVM分类器。超过64图像的结果表明,分类器的灵敏度高达87.5%,特异性为100%,总体精度为89.5%。从拟议的分类器可以在优异的性能范围内从正常控制中检测大脑中的异常的数据很容易观察到,这是具有最新现有方法的竞争力。

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