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Analysis of Alzheimer Condition in T1-Weighted MR Images Using Texture Features and K-NN Classifier

机译:使用纹理特征和K-NN分类器分析T1加权MR图像中的阿尔茨海默病状况

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(AD) Alzheimer's disease is widely recognized as a disorder of the mental processes initiated by brain disease which a□ects more than 35 million individuals around the world. Structural Magnetic Resonance (MR) imaging strategies noninvasive tool and it assumes a significant part in analyzing Structural brain changes in subjects with neurodegenerative infections. Magnetic resonance imaging which delineates the pathology of brain structures and enhances the finding of the AD. This paper gives an analysis of Alzheimer Condition in Tl-Weighted MR Images using Texture Features and k-NN Classifier. Texture features are extracted utilizing GLCM to identify the AD and the Normal Control (NC). With a specific end goal to assess the proposed technique, performed assessments on the MRI securing from the OASIS database. The proposed strategy yields a normal testing exactness of 74.73% which demonstrates that the proposed technique can separate AD and NC agreeably.
机译:(AD)阿尔茨海默氏病被广泛认为是由脑病引发的精神过程疾病,全世界有3500万以上的人受到影响。结构磁共振(MR)成像策略是一种非侵入性工具,在分析神经退行性感染受试者的结构性脑部变化中起着重要作用。磁共振成像描绘了大脑结构的病理状况,并增强了对AD的发现。本文使用纹理特征和k-NN分类器对Tl加权MR图像中的Alzheimer条件进行了分析。利用GLCM提取纹理特征以识别AD和正常控制(NC)。为了评估所提出的技术的特定最终目标,对来自OASIS数据库的MRI安全性进行了评估。所提出的策略产生了74.73%的正常测试准确度,这表明所提出的技术可以很好地分离AD和NC。

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