Fuhrer Julian, Glette Kyrre, Llorens Anaïs, Endestad Tor, Solbakk Anne-Kristin, Blenkmann Alejandro Omar
RITMO Centre for Interdisciplinary Studies in Rhythm, Time and Motion, University of Oslo, Oslo, Norway.
Department of Informatics, University of Oslo, Oslo, Norway.
Front Neuroinform. 2023 May 23;17:1128866. doi: 10.3389/fninf.2023.1128866. eCollection 2023.
Information theory is a viable candidate to advance our understanding of how the brain processes information generated in the internal or external environment. With its universal applicability, information theory enables the analysis of complex data sets, is free of requirements about the data structure, and can help infer the underlying brain mechanisms. Information-theoretical metrics such as Entropy or Mutual Information have been highly beneficial for analyzing neurophysiological recordings. However, a direct comparison of the performance of these methods with well-established metrics, such as the test, is rare. Here, such a comparison is carried out by evaluating the novel method of Encoded Information with Mutual Information, Gaussian Copula Mutual Information, Neural Frequency Tagging, and -test. We do so by applying each method to event-related potentials and event-related activity in different frequency bands originating from intracranial electroencephalography recordings of humans and marmoset monkeys. Encoded Information is a novel procedure that assesses the similarity of brain responses across experimental conditions by compressing the respective signals. Such an information-based encoding is attractive whenever one is interested in detecting where in the brain condition effects are present.
信息论是增进我们对大脑如何处理内部或外部环境中产生的信息理解的一个可行候选方法。凭借其普遍适用性,信息论能够分析复杂数据集,对数据结构没有要求,并且有助于推断潜在的大脑机制。诸如熵或互信息等信息论指标对于分析神经生理学记录非常有益。然而,将这些方法的性能与诸如检验等成熟指标进行直接比较的情况很少见。在此,通过评估具有互信息的编码信息、高斯Copula互信息、神经频率标记和检验等新方法来进行这样的比较。我们通过将每种方法应用于源自人类和狨猴颅内脑电图记录的不同频段的事件相关电位和事件相关活动来做到这一点。编码信息是一种通过压缩各自信号来评估大脑反应在不同实验条件下相似性的新程序。每当人们有兴趣检测大脑中何处存在条件效应时,这种基于信息的编码就很有吸引力。