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A framework for offline evaluation and optimization of real-time algorithms for use in neurofeedback, demonstrated on an instantaneous proxy for correlations

机译:用于NeurofeBack的实时算法的离线评估和优化框架,在相关的相关性代表上展示了

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摘要

Interest in real-time fMRI neurofeedback has grown exponentially over the past few years, both for use as a basic science research tool, and as part of the search for novel clinical interventions for neurological and psychiatric illnesses. In order to expand the range of questions which can be addressed with this tool however, new neurofeedback methods must be developed, going beyond feedback of activations in a single region. These new methods, several of which have already been proposed, are by their nature complex, involving many possible parameters. Here we suggest a framework for evaluating and optimizing algorithms for use in a real-time setting, before beginning the neurofeedback experiment, by offline simulations of algorithm output using a previously collected dataset. We demonstrate the application of this framework on the instantaneous proxy for correlations which we developed for training connectivity between different network nodes, identify the optimal parameters for use with this algorithm, and compare it to more traditional correlation methods. We also examine the effects of advanced imaging techniques, such as multi-echo acquisition, and the integration of these into the real-time processing stream.
机译:在过去几年中,实时FMRI神经融合的兴趣在过去几年中呈指数级增长,这两者都是基本的科学研究工具,作为寻找神经和精神疾病的新型临床干预的一部分。为了扩展可以通过此工具解决的问题范围,必须开发新的神经融合方法,超越了单个区域中激活的反馈。这些新方法,其中一些已经提出,是他们的自然复杂,涉及许多可能的参数。在这里,我们建议使用先前收集的数据集的算法输出的离线模拟在开始神经融合实验之前评估和优化用于实时设置的算法的框架。我们展示了该框架在瞬时代理上的应用,我们开发用于在不同网络节点之间进行训练连接,识别与该算法一起使用的最佳参数,并将其与更传统的相关方法进行比较。我们还研究了先进的成像技术的影响,例如多回声采集,以及将其集成到实时处理流中。

著录项

  • 来源
    《NeuroImage》 |2019年第2019期|共13页
  • 作者单位

    NIMH Lab Brain &

    Cognit NIH Bethesda MD 20892 USA;

    NIMH Sect Funct Imaging Methods NIH Bethesda MD 20892 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 诊断学;
  • 关键词

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