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首页> 外文期刊>Magma: Magnetic resonance materials in physics, biology, and medicine >Dimensionality reduction of fMRI time series data using locally linear embedding
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Dimensionality reduction of fMRI time series data using locally linear embedding

机译:使用局部线性嵌入的fMRI时间序列数据降维

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摘要

Objective: Data-driven methods for fMRI analysis are useful, for example, when an a priori model of signal variations is unavailable. However, activation sources are typically assumed to be linearly mixed, although non-linear properties of fMRI data, including resting-state data, have been observed. In this work, the non-linear locally linear embedding (LLE) algorithm is introduced for dimensionality reduction of fMRI time series data. Materials and methods: LLE performance was optimised and tested using simulated and volunteer data for task-evoked responses. LLE was compared with principal component analysis (PCA) as a preprocessing step to independent component analysis (ICA). Using an example data set with known non-linear properties, LLE-ICA was compared with PCA-ICA and non-linear PCA-ICA. A resting-state data set was analysed to compare LLE-ICA and PCA-ICA with respect to identifying resting-state networks. Results: LLE consistently found task-related components as well as known resting-state networks, and the algorithm compared well to PCA. The non-linear example data set demonstrated that LLE, unlike PCA, can separate non-linearly modulated sources in a low-dimensional subspace. Given the same target dimensionality, LLE also performed better than non-linear PCA. Conclusion: LLE is promising for fMRI data analysis and has potential advantages compared with PCA in terms of its ability to find non-linear relationships.
机译:目的:例如,当无法获得信号变化的先验模型时,数据驱动的fMRI分析方法很有用。然而,尽管已观察到fMRI数据(包括静止状态数据)的非线性属性,但通常假定激活源是线性混合的。在这项工作中,非线性局部线性嵌入(LLE)算法被引入以减少fMRI时间序列数据的维数。材料和方法:优化LLE的性能,并使用模拟数据和自愿数据对任务诱发的反应进行测试。将LLE与主成分分析(PCA)进行比较,作为独立成分分析(ICA)的预处理步骤。使用具有已知非线性属性的示例数据集,将LLE-ICA与PCA-ICA和非线性PCA-ICA进行了比较。分析了静止状态数据集以比较LLE-ICA和PCA-ICA在识别静止状态网络方面的作用。结果:LLE始终发现与任务相关的组件以及已知的静止状态网络,并且该算法与PCA相比具有很好的优势。非线性示例数据集证明,与PCA不同,LLE可以在低维子空间中分离非线性调制源。给定相同的目标尺寸,LLE的性能也优于非线性PCA。结论:LLE在功能磁共振成像数据分析方面很有前途,并且在发现非线性关系方面,与PCA相比具有潜在的优势。

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