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首页> 外文期刊>Journal of biomedical informatics. >Model-free functional MRI analysis based on unsupervised clustering.
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Model-free functional MRI analysis based on unsupervised clustering.

机译:基于无监督聚类的无模型功能MRI分析。

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摘要

Conventional model-based or statistical analysis methods for functional MRI (fMRI) are easy to implement, and are effective in analyzing data with simple paradigms. However, they are not applicable in situations in which patterns of neural response are complicated and when fMRI response is unknown. In this paper the "neural gas" network is adapted and rigourosly studied for analyzing fMRI data. The algorithm supports spatial connectivity aiding in the identification of activation sites in functional brain imaging. A comparison of this new method with Kohonen's self-organizing map and with a fuzzy clustering scheme based on deterministic annealing is done in a systematic fMRI study showing comparative quantitative evaluations. The most important findings in this paper are: (1) both "neural gas" and the fuzzy clustering technique outperform Kohonen's map in terms of identifying signal components with high correlation to the fMRI stimulus, (2) the "neural gas" outperforms the two other methods with respect to the quantization error, and (3) Kohonen's map outperforms the two other methods in terms of computational expense. The applicability of the new algorithm is demonstrated on experimental data.
机译:基于常规的基于模型或功能性MRI(fMRI)的统计分析方法易于实施,并且可以有效地使用简单的范式分析数据。但是,它们不适用于神经反应模式复杂且fMRI反应未知的情况。在本文中,对“神经气体”网络进行了调整并进行了严格的研究,以分析功能磁共振成像数据。该算法支持空间连通性,有助于识别功能性脑成像中的激活部位。这项新方法与Kohonen的自组织图以及基于确定性退火的模糊聚类方案进行了比较,在一项系统的fMRI研究中进行了比较,显示了定量比较的评估结果。本文最重要的发现是:(1)在识别与fMRI刺激高度相关的信号分量方面,“神经气体”和模糊聚类技术均优于Kohonen的图,(2)“神经气体”优于两者关于量化误差的其他方法,以及(3)Kohonen映射在计算费用方面优于其他两种方法。实验数据证明了新算法的适用性。

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