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Toward a New Application of Real-Time Electrophysiology: Online Optimization of Cognitive Neurosciences Hypothesis Testing

机译:走向实时电生理学的新应用:认知神经科学假设测试的在线优化

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摘要

Brain-computer interfaces (BCIs) mostly rely on electrophysiological brain signals. Methodological and technical progress has largely solved the challenge of processing these signals online. The main issue that remains, however, is the identification of a reliable mapping between electrophysiological measures and relevant states of mind. This is why BCIs are highly dependent upon advances in cognitive neuroscience and neuroimaging research. Recently, psychological theories became more biologically plausible, leading to more realistic generative models of psychophysiological observations. Such complex interpretations of empirical data call for efficient and robust computational approaches that can deal with statistical model comparison, such as approximate Bayesian inference schemes. Importantly, the latter enable the optimization of a model selection error rate with respect to experimental control variables, yielding maximally powerful designs. In this paper, we use a Bayesian decision theoretic approach to cast model comparison in an online adaptive design optimization procedure. We show how to maximize design efficiency for individual healthy subjects or patients. Using simulated data, we demonstrate the face- and construct-validity of this approach and illustrate its extension to electrophysiology and multiple hypothesis testing based on recent psychophysiological models of perception. Finally, we discuss its implications for basic neuroscience and BCI itself.
机译:脑机接口(BCI)主要依靠脑电生理信号。方法和技术上的进步已在很大程度上解决了在线处理这些信号的挑战。但是,仍然存在的主要问题是在电生理措施和相关心理状态之间确定可靠的映射。这就是为什么BCI高度依赖认知神经科学和神经影像学研究进展的原因。最近,心理学理论在生物学上变得更加合理,从而产生了更为现实的心理生理观察生成模型。对经验数据的这种复杂解释要求有效且鲁棒的计算方法,该方法可以处理统计模型比较,例如近似贝叶斯推理方案。重要的是,后者使模型选择错误率相对于实验控制变量的优化成为可能,从而产生了功能强大的设计。在本文中,我们使用贝叶斯决策理论方法在在线自适应设计优化程序中进行模型比较。我们展示了如何为单个健康受试者或患者最大化设计效率。使用模拟的数据,我们证明了这种方法的面子和构造有效性,并说明了该方法扩展到基于最近的心理生理模型的电生理学和多种假设检验。最后,我们讨论其对基础神经科学和BCI本身的影响。

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