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首页> 外文期刊>NeuroImage >Application of principal component analysis to distinguish patients with schizophrenia from healthy controls based on fractional anisotropy measurements.
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Application of principal component analysis to distinguish patients with schizophrenia from healthy controls based on fractional anisotropy measurements.

机译:主成分分析在基于分数各向异性测量的基础上将精神分裂症患者与健康对照区分开来的应用。

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Principal component analysis (PCA) is often used to reduce the dimension of data before applying more sophisticated data analysis methods such as non-linear classification algorithms or independent component analysis. This practice is based on selecting components corresponding to the largest eigenvalues. If the ultimate goal is separation of data in two groups, then these set of components need not have the most discriminatory power. We measured the distance between two such populations using Mahalanobis distance and chose the eigenvectors to maximize it, a modified PCA method, which we call the discriminant PCA (DPCA). DPCA was applied to diffusion tensor-based fractional anisotropy images to distinguish age-matched schizophrenia subjects from healthy controls. The performance of the proposed method was evaluated by the one-leave-out method. We show that for this fractional anisotropy data set, the classification error with 60 components was close to the minimum error and that the Mahalanobis distance was twice as large with DPCA, than with PCA. Finally, by masking the discriminant function with the white matter tracts of the Johns Hopkins University atlas, we identified left superior longitudinal fasciculus as the tract which gave the least classification error. In addition, with six optimally chosen tracts the classification error was zero.
机译:主成分分析(PCA)通常在应用更复杂的数据分析方法(例如非线性分类算法或独立成分分析)之前用于减小数据的维数。该实践是基于选择与最大特征值相对应的分量的。如果最终目标是将数据分成两组,则这组组件不必具有最大的区分能力。我们使用马氏距离测量了两个此类种群之间的距离,并选择了特征向量以使其最大化,这是一种改进的PCA方法,我们称之为判别PCA(DPCA)。 DPCA被应用于基于弥散张量的分数各向异性图像,以区分年龄匹配的精神分裂症受试者与健康对照。该方法的性能通过单留法进行了评估。我们表明,对于该分数各向异性数据集,具有60个分量的分类误差接近最小误差,并且DPCA的马氏距离是PCA的两倍。最后,通过用约翰霍普金斯大学地图集的白质谱线掩盖判别函数,我们确定左上纵筋膜束是分类误差最小的谱线。此外,使用六个最佳选择的区域时,分类误差为零。

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