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A Gaussian discriminant analysis-based generative learning algorithm for the early diagnosis of mild cognitive impairment in Alzheimer's disease

机译:基于高斯判别分析的基于高斯判别分析的生成式学习算法,用于在阿尔茨海默病中早期诊断诊断

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Over the past few years, several approaches have been proposed to assist in the early diagnosis of Alzheimer's disease (AD) and its prodromal stage of mild cognitive impairment (MCI). For solving this high dimensional classification problem, the widely used algorithm remains to be Support Vector Machines (SVM). But due to the high variance of the data, the classification performance of SVM remains unsatisfactory, especially for delineating the MCI group from the cognitively normal control (CN) group. This study introduces a novel algorithm based on the Gaussian discriminant analysis (GDA) for a more effective and accurate classification performance. Subjects considered in this study included 190 CN, 305 MCI, and 133 AD subjects. Using 75% of the data as the training set with a tenfold cross validation, the proposed algorithm achieved an average accuracy of 94.17%, a sensitivity of 93.00%, and a specificity of 95.00% for discriminating AD from CN; and an average accuracy of 84.86%, a sensitivity of 84.78%, and a specificity of 85.00% for discriminating MCI from CN. Then a true test was implemented for the remaining 25% data, for discriminating specifically MCI from CN, resulting in an accuracy of 82.20%, a sensitivity of 83.10%, and a specificity of 80.85%. As revealed through the literature, these results involving the delineation of the MCI group from CN could be considered as the best classification performance obtained so far. This study also shows that by separating left and right hemispheres of the brain into two decision spaces, then combining the results of these two spaces, the classification performance can be improved significantly; an assertion proven in this study.
机译:在过去的几年中,有几种方法已经被提出,以帮助阿尔茨海默氏病(AD)和轻度认知障碍(MCI)的前驱期的早期诊断。为了解决这个高维分类问题,广泛使用的算法还有待支持向量机(SVM)。但由于数据的高方差,SVM的分类性能仍然不能令人满意,特别是用于从认知正常控制(CN)基团划定MCI基。本研究中引入了基于用于更有效和更准确的分类性能高斯判别分析(GDA)一种新颖的算法。在这个研究中考虑的主题包括190 CN,MCI 305和133个AD对象。使用该数据作为训练集与十倍交叉验证的75 %,所提出的算法实现的94.17 %的平均精确度,93.00 %的灵敏度,和95.00的%从CN区分AD特异性;和84.86 %的平均精确度,84.78 %的灵敏度,和85.00的%从CN判别MCI一个特异性。然后一个真正的试验对剩余的25点%的数据实现,从CN特别区分MCI,导致82.20 %,83.10的%的灵敏度,和80.85 %的特异性的精度。通过文献透露,这些结果包括来自CN的MCI组的划分可以被认为是最佳的分类性能得到那么远。这项研究还表明,通过分离大脑的左右半球成两个决策空间,再结合这两个空间的结果,分类性能可显著提高;断言在这项研究中得到证实。

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