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A Comparison of Strategies for Incorporating Nuisance Variables into Predictive Neuroimaging Models

机译:将滋扰变量纳入预测性神经影像模型的策略比较

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In this paper we compare two different methods for dealing with so-called nuisance variables (NV) when training models to predict clinical/psychometric scales from neuroimaging data. In the first approach, the NV are used to adjust the imaging data by 'regressing out' their contribution to the image features. In the second approach, the NV are included as additional predictors in the model with a separate kernel that controls their contribution to the prediction function. We evaluate these methods using data from an fMRI and a structural MRI study, and discuss the results and interpretation of the two modelling approaches.
机译:在本文中,当训练模型以从神经影像数据预测临床/心理测量尺度时,我们比较了两种不同的方法来处理所谓的讨厌变量(NV)。在第一种方法中,NV用于通过“回归”它们对图像特征的贡献来调整成像数据。在第二种方法中,NV作为模型中的其他预测变量包含在一个单独的内核中,该内核控制它们对预测函数的贡献。我们使用来自fMRI和结构MRI研究的数据评估这些方法,并讨论两种建模方法的结果和解释。

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