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Hierarchical statistical shape analysis and prediction of sub-cortical brain structures.

机译:分层统计形状分析和皮质下大脑结构的预测。

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摘要

In this paper, we describe how two multivariate statistical techniques can be used to investigate how different structures within the brain vary statistically relative to each other. The first of these techniques is canonical correlation analysis which extracts and quantifies correlated behaviour between two sets of vector variables. The second technique is partial least squares regression which determines the best factors within a first set of vector variables for predicting a vector variable from a second set. We applied these techniques to 178 sets of 3D MR images of the brain to quantify and predict correlated behaviour between 18 sub-cortical structures. Pairwise canonical correlation analysis of the structures gave correlation coefficients between 0.51 and 0.67, with adjacent structures possessing the strongest correlations. Pairwise predictions of the structures using partial least squares regression produced an overall sum squared error of 4.26 mm2, compared with an error of 6.75 mm2 produced when using the mean shape as the prediction. We also indicate how the correlation strengths between structures can be used to inform a hierarchical scheme in which partial least squares regression is combined with a model fitting algorithm to further improve prediction accuracy.
机译:在本文中,我们描述了如何使用两种多元统计技术来研究大脑中不同结构之间的统计学差异。这些技术中的第一个是规范相关分析,它提取和量化两组向量变量之间的相关行为。第二种技术是偏最小二乘回归,它确定第一组矢量变量内的最佳因子,以便从第二组预测矢量变量。我们将这些技术应用于178组大脑的3D MR图像,以量化和预测18个皮质下结构之间的相关行为。结构的成对规范相关分析给出相关系数在0.51和0.67之间,相邻结构具有最强的相关性。使用偏最小二乘回归对结构进行成对预测时,总和平方误差为4.26 mm2,而使用平均形状作为预测时,误差为6.75 mm2。我们还指出了如何使用结构之间的相关强度来告知分层方案,在该方案中,偏最小二乘回归与模型拟合算法相结合,可以进一步提高预测准确性。

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