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Detection of resting-state brain activity in magnetic resonance images through wavelet feature cluster analysis

机译:通过小波特征聚类分析检测磁共振图像中静态谐振图像中的静态大脑活动

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Magnetic resonance imaging studies of the resting brain have recently revealed the existence of low-frequency fluctuations of the cerebral hemodynamics. It has been suggested that these fluctuations are linked to baseline neural activity, organized in functional networks. This paper presents a novel method for the detection of these resting-state networks from blood-oxygen level dependent signals, through their wavelet representation in the appropriate frequency range. A valley-seeking clustering principle is employed, requiring no a priori knowledge of the number of functional networks. The technique is applied to a data set acquired at rest and is shown to retrieve a number of identifiable functional networks. The method is proposed as an alternative to e.g. independent component analysis and exhibits an enhanced network separation capability and stability against noise.
机译:静脑磁共振成像研究最近揭示了脑血流动力学的低频波动的存在。有人建议,这些波动与在功能网络中组织的基线神经活动相关联。本文介绍了一种新的方法,用于通过适当的频率范围内的小波表示来检测从血氧水平相关信号的这些静态网络从血氧级相关信号检测的新方法。采用谷寻求聚类原则,要求无需先验的功能网络数量。该技术应用于休息时获取的数据集,并示出了检索多个可识别的功能网络。该方法被提出为例如替代方案。独立分量分析,并展示了增强的网络分离能力和噪声稳定性。

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