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Grouping a few sets of normally distributed voxels of SPECT volumes in discrimination between Alzheimer dementia and controls

机译:将几组正态分布的SPECT体素分组以区分阿尔茨海默氏痴呆症和对照组

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It is widely accepted and can be easily verified that any specific voxel in a class of brain single photon emission computed tomography (SPECT) volumes is of a univariate normal distribution. In this research, we conjecture that all the voxels in a class of SPECT volumes are also approximately of a multivariate normal (MVN) distribution from which in terms of the Bayes errors of statistics, an optimal classifier can be designed using quadratic discriminant functions (QDFs). However, the number of training volumes needed for deriving the covariance matrix of an MVN distribution increases quadratically with respect to the number of voxels such that practically the MVN distributions cannot be modeled. To overcome this, we selected a reduced number of voxels and put them into groups based on the P values of two-sided t tests or a greedy algorithm of discrimination between two classes of volumes. We also tried the same approach on the 3D Haar wavelet coefficients which were obtained from the discrete wavelet transform of the voxels. Experiments showed that the accuracies of QDFs, linear discriminant functions (LDFs), and support vector machines (SVMs) were not significantly different in discrimination between Alzheimer's and normal controls verifying that the proposed MVNs effectively model the discrimination information. Moreover, the proposed QDF classifier obtained satisfactory performance.
机译:它被广泛接受并且可以容易地验证,一类大脑单光子发射计算机断层扫描(SPECT)体积中的任何特定体素都是单变量正态分布的。在这项研究中,我们推测一类SPECT体中的所有体素也近似为多元正态(MVN)分布,根据统计的贝叶斯误差,可以使用二次判别函数(QDF)设计最佳分类器)。但是,推导MVN分布的协方差矩阵所需的训练量的数量相对于体素的数量呈二次方增加,因此实际上无法对MVN分布进行建模。为了克服这个问题,我们选择了减少数量的体素,并根据双面t检验的P值或区分两类体积的贪婪算法将它们分组。我们还对从体素的离散小波变换获得的3D Haar小波系数尝试了相同的方法。实验表明,QDF,线性判别函数(LDF)和支持向量机(SVM)的准确度在阿尔茨海默氏病和正常对照之间的判别上没有显着差异,证明了拟议的MVN有效地对判别信息进行了建模。此外,提出的QDF分类器获得了令人满意的性能。

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