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Real-time independent component analysis of fMRI time-series.

机译:功能磁共振成像时间序列的实时独立成分分析。

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摘要

Real-time functional magnetic resonance imaging (fMRI) enables one to monitor a subject's brain activity during an ongoing session. The availability of online information about brain activity is essential for developing and refining interactive fMRI paradigms in research and clinical trials and for neurofeedback applications. Data analysis for real-time fMRI has traditionally been based on hypothesis-driven processing methods. Off-line data analysis, conversely, may be usefully complemented by data-driven approaches, such as independent component analysis (ICA), which can identify brain activity without a priori temporal assumptions on brain activity. However, ICA is commonly considered a time-consuming procedure and thus unsuitable to process the high flux of fMRI data while they are acquired. Here, by specific choices regarding the implementation, we exported the ICA framework and implemented it into real-time fMRI data analysis. We show that, reducing the ICA input to a few points within a time-series in a sliding-window approach, computational times become compatible with real-time settings. Our technique produced accurate dynamic readouts of brain activity as well as a precise spatiotemporal history of quasistationary patterns in the form of cumulative activation maps and time courses. Results from real and simulated motor activation data show comparable performances for the proposed ICA implementation and standard linear regression analysis applied either in a sliding-window or in a cumulative mode. Furthermore, we demonstrate the possibility of monitoring transient or unexpected neural activities and suggest that real-time ICA may provide the fMRI researcher with a better understanding and control of subjects' behaviors and performances.
机译:实时功能磁共振成像(fMRI)使人们能够在进行中的会话期间监视受试者的大脑活动。关于大脑活动的在线信息的可用性对于在研究和临床试验中以及在神经反馈应用中开发和完善交互式功能磁共振成像范例至关重要。实时功能磁共振成像的数据分析传统上是基于假设驱动的处理方法。相反,离线数据分析可以通过数据驱动的方法(例如独立成分分析(ICA))进行有用的补充,该方法可以识别大脑活动,而无需事先对大脑活动进行时间假设。但是,ICA通常被认为是一项耗时的过程,因此不适合在获取fMRI数据时对其进行处理。在这里,通过有关实现的特定选择,我们导出了ICA框架并将其实现到实时fMRI数据分析中。我们表明,以滑动窗口方式将ICA输入减少到时间序列内的几个点,计算时间变得与实时设置兼容。我们的技术以累积激活图和时程的形式产生了精确的大脑活动动态读数以及准静止模式的精确时空历史记录。真实和模拟的电动机激活数据的结果表明,对于拟议的ICA实施和以滑动窗口或累积模式应用的标准线性回归分析,其性能均相当。此外,我们证明了监视瞬时或意外神经活动的可能性,并建议实时ICA可以为fMRI研究人员提供对受试者行为和表现的更好理解和控制。

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