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A weighted cluster kernel PCA prediction model for multi-subject brain imaging data

机译:多主体脑成像数据的加权聚类核PCA预测模型

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Brain imaging data have shown great promise as a useful predictor for psychiatric conditions, cognitive functions and many other neural-related outcomes. Development of prediction models based on imaging data is challenging due to the high dimensionality of the data, noisy measurements, complex correlation structures among voxels, small sample sizes, and between-subject heterogeneity. Most existing prediction approaches apply a dimension reduction method such as PCA on whole brain images as a preprocessing step. These approaches usually do not take into account the cluster structure among voxels and between-subject differences. We propose a weighted cluster kernel PCA predictive model that addresses the challenges in brain imaging data. We first divide voxels into clusters based on neuroanatomic parcellation or data-driven methods, then extract cluster-specific principal features using kernel PCA and define the prediction model based on the principal features. Finally, we propose a weighted estimation method for the prediction model where each subject is weighted according to the percent of variance explained by the principal features. The proposed method allows assessment of relative importance of various brain regions in prediction; captures nonlinearity in feature space; and helps guard against overfitting for outlying subjects in predictive model building. We evaluate the performance of our method through simulation studies. A real fMRI data example is also used to illustrate the method.
机译:脑成像数据已显示出广阔的前景,可作为预测精神疾病,认知功能和许多其他神经相关结局的有用指标。由于数据的高维度,嘈杂的测量,体素之间的复杂相关结构,较小的样本量以及对象间的异质性,基于成像数据的预测模型的开发具有挑战性。大多数现有的预测方法都将降维方法(例如PCA)应用于整个大脑图像,作为预处理步骤。这些方法通常不考虑体素之间的簇结构和对象间差异。我们提出了一种加权聚类内核PCA预测模型,该模型可解决脑成像数据中的挑战。我们首先基于神经解剖分割或数据驱动方法将体素划分为聚类,然后使用内核PCA提取特定于聚类的主要特征,并基于主要特征定义预测模型。最后,我们为预测模型提出了一种加权估计方法,其中,根据主要特征所解释的方差百分比对每个主题进行加权。所提出的方法可以评估各个大脑区域在预测中的相对重要性。捕获特征空间中的非线性;并有助于防止在预测模型构建过程中对偏远主题进行过度拟合。我们通过仿真研究评估我们方法的性能。真实的fMRI数据示例也用于说明该方法。

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