Brouwer Anne-Marie, Zander Thorsten O, van Erp Jan B F, Korteling Johannes E, Bronkhorst Adelbert W
Perceptual and Cognitive Systems, Netherlands Organisation for Applied Scientific Research TNO Soesterberg, Netherlands.
Team PhyPA, Biological Psychology and Neuroergonomics, Technical University Berlin, Germany.
Front Neurosci. 2015 Apr 30;9:136. doi: 10.3389/fnins.2015.00136. eCollection 2015.
Estimating cognitive or affective state from neurophysiological signals and designing applications that make use of this information requires expertise in many disciplines such as neurophysiology, machine learning, experimental psychology, and human factors. This makes it difficult to perform research that is strong in all its aspects as well as to judge a study or application on its merits. On the occasion of the special topic "Using neurophysiological signals that reflect cognitive or affective state" we here summarize often occurring pitfalls and recommendations on how to avoid them, both for authors (researchers) and readers. They relate to defining the state of interest, the neurophysiological processes that are expected to be involved in the state of interest, confounding factors, inadvertently "cheating" with classification analyses, insight on what underlies successful state estimation, and finally, the added value of neurophysiological measures in the context of an application. We hope that this paper will support the community in producing high quality studies and well-validated, useful applications.
从神经生理信号估计认知或情感状态,并设计利用这些信息的应用程序,需要神经生理学、机器学习、实验心理学和人因学等多学科的专业知识。这使得全面开展各个方面都很出色的研究以及根据其优点评判一项研究或应用变得困难。在“使用反映认知或情感状态的神经生理信号”这个专题中,我们在此总结了作者(研究人员)和读者常出现的陷阱以及如何避免这些陷阱的建议。它们涉及定义感兴趣的状态、预期参与感兴趣状态的神经生理过程、混杂因素、在分类分析中无意“作弊”、对成功状态估计背后因素的洞察,以及最后,神经生理测量在应用背景下的附加值。我们希望本文能支持该领域开展高质量的研究以及开发经过充分验证且有用的应用程序。