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Parcellation of fMRI Datasets with ICA and PLS-A Data Driven Approach

机译:使用ICA和PLS-A数据驱动方法对fMRI数据集进行拆分

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Inter-subject parcellation of functional Magnetic Resonance Imaging (fMRI) data based on a standard General Linear Model (GLM) and spectral clustering was recently proposed as a means to alleviate the issues associated with spatial normalization in fMRI. However, for all its appeal, a GLM-based parcellation approach introduces its own biases, in the form of a priori knowledge about the shape of Hemodynamic Response Function (HRF) and task-related signal changes, or about the subject behaviour during the task.In this paper, we introduce a data-driven version of the spectral clustering parcellation, based on Independent Component Analysis (ICA) and Partial Least Squares (PLS) instead of the GLM. First, a number of independent components are automatically selected. Seed voxels are then obtained from the associated ICA maps and we compute the PLS latent variables between the fMRI signal of the seed voxels (which covers regional variations of the HRF) and the principal components of the signal across all voxels. Finally, we parcellate all subjects data with a spectral clustering of the PLS latent variables.We present results of the application of the proposed method on both single-subject and multi-subject fMRI datasets. Preliminary experimental results, evaluated with intra-parcel variance of GLM t-values and PLS derived t-values, indicate that this data-driven approach offers improvement in terms of parcellation accuracy over GLM based techniques.
机译:最近提出了基于标准通用线性模型(GLM)和频谱聚类的功能性磁共振成像(fMRI)数据的受试者间分割方法,作为缓解与fMRI中的空间标准化相关的问题的一种方法。但是,尽管具有吸引力,但基于GLM的分割方法会引入其自身的偏见,其形式是关于血流动力学响应函数(HRF)的形状和与任务相关的信号变化的先验知识,或者关于任务期间的受试者行为的知识。 。 在本文中,我们基于独立分量分析(ICA)和偏最小二乘(PLS)而不是GLM,介绍了一种数据驱动版本的光谱聚类分解。首先,将自动选择许多独立的组件。然后从相关的ICA映射中获得种子体素,然后我们计算种子体素的fMRI信号(涵盖HRF的区域变化)与所有体素上信号的主要成分之间的PLS潜在变量。最后,我们使用PLS潜在变量的频谱聚类对所有主题数据进行分类。 我们目前提出的方法在单对象和多对象fMRI数据集上的应用结果。初步的实验结果(使用内部批处理的GLM t值和PLS派生的t值进行评估)表明,这种数据驱动方法相对于基于GLM的技术而言,在切碎精度方面有所提高。

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