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首页> 外文期刊>IEEJ Transactions on Electrical and Electronic Engineering >Detection of abnormal MR brains based on wavelet entropy and feature selection
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Detection of abnormal MR brains based on wavelet entropy and feature selection

机译:基于小波熵和特征选择的异常MR大脑检测

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摘要

An accurate diagnosis is important for the medical treatment of patients suffering from brain diseases. Magnetic resonance (MR) images are commonly used by technicians to assist preclinical diagnosis. The classification of MR images of normal and pathological brains poses a challenge from the technological point of view, since MR imaging generates a large information set that reflects the conditions of the brain. In this paper, we present a computer-assisted diagnosis method based on wavelet entropy (WE) of the feature space approach and a feed-forward neural network (FNN) classification method for improving the brain diagnosis accuracy by means of MR images. The most relevant image feature is selected as the WE, which is used to train an FNN classifier. The results using tenfold cross validation of 64 images show that the average accuracy attainable is 100.00%. It can be easily seen from the data that the proposed classifier can detect abnormal brains from normal controls with excellent performance, which can compete with the latest methods. (c) 2016 Institute of Electrical Engineers of Japan. Published by John Wiley & Sons, Inc.
机译:准确的诊断对于患有脑部疾病的患者的治疗很重要。技术人员通常使用磁共振(MR)图像来协助临床前诊断。从技术角度来看,正常和病理大脑的MR图像的分类构成了挑战,因为MR成像会产生一个反映大脑条件的大信息集。在本文中,我们提出了一种基于特征空间方法的小波熵(WE)的计算机辅助诊断方法,以及通过MR图像通过MR图像提高大脑诊断准确性的馈送神经网络(FNN)分类方法。最相关的图像功能被选择为WE,用于训练FNN分类器。使用64张图像的十倍交叉验证的结果表明,可实现的平均准确度为100.00%。从所提出的分类器可以从具有出色性能的正常控件中检测出异常大脑的数据可以很容易地看到,这可以与最新方法竞争。 (c)2016年日本电气工程师研究所。由John Wiley&Sons,Inc。出版

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