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Shannon entropy applied to the analysis of event-related fMRI time series.

机译:香农熵应用于事件相关的功能磁共振成像时间序列的分析。

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Event-related functional magnetic resonance imaging (ER-fMRI) refers to the blood oxygen level-dependent (BOLD) signal in response to a short stimulus followed by a long period of rest. These paradigms have become more popular in the last few years due to some advantages over standard block techniques. Most of the analysis of the time series generated in such exams is based on a model of specific hemodynamic response function. In this paper we propose a new method for the analysis of ER-fMRI based in a specific aspect of information theory: the entropy of a signal using the Shannon formulation, which makes no assumption about the shape of the response. The results show the ability to discriminate between activated and resting cerebral regions for motor and visual stimuli. Moreover, the results of simulated data show a more stable pattern of the method, if compared to typical algorithms, when the signal to noise ratio decreases.
机译:事件相关的功能磁共振成像(ER-fMRI)指的是对短时刺激和长时间休息后的血氧水平依赖性(BOLD)信号。由于相对于标准块技术有一些优势,这些范例在最近几年变得越来越流行。在此类检查中生成的时间序列的大多数分析都是基于特定血液动力学响应函数的模型。在本文中,我们提出了一种基于信息论的特定方面分析ER-fMRI的新方法:使用Shannon公式表示信号的熵,它不考虑响应的形状。结果显示了区分运动和视觉刺激的激活和静止大脑区域的能力。此外,如果与典型算法相比,当信噪比降低时,模拟数据的结果显示了该方法的更稳定模式。

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