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Toward an Open Data Repository and Meta-Analysis of Cognitive Data Using fNIRS Studies of Emotion

机译:使用fNIRS情绪研究建立开放数据存储库并进行认知数据的荟萃分析

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HCI research has increasingly incorporated the use of neurophysi-ological sensors to identify users' cognitive and affective states. However, a persistent problem in machine learning on cognitive data is generalizability across participants. A proposed solution has been aggregating cognitive and survey data across studies to generate higher sample populations for machine learning and statistical analyses to converge in stable, generalizable results. In this paper, I argue that large data-sharing projects can facilitate the aggregation of results of brain imaging studies to address these issues, by smoothing noise in high-dimensional datasets. This paper contributes a small step towards large cognitive data sharing systems-design by proposing methods that facilitate the merging of currently incompatible fNIRS and FMRI datasets through term-based metadata analysis. To that end, I analyze 20 fNIRS studies of emotion using content analysis for: (1) synonym terms and definitions for 'emotion,' (2) the experimental stimuli, and (3) the use or non-use of self-report surveys. Results suggest that fNIRS studies of emotion have stable synonymy, using technical and folk conceptualizations of affective terms within and between publications to refer to emotion. The studies use different stimuli to elicit emotion but also show commonalities between shared use of standardized stimuli materials and self-report surveys. These similarities in conceptual synonymy and standardized experiment materials indicate promise for neu-roimaging communities to establish open-data repositories based on metadata term-based analyses. This work contributes to efforts toward merging datasets across studies and between labs, unifying new modalities in neuroimaging such as fNIRS with fMRI datasets, increasing generalizability of machine learning models, and promoting the acceleration of science through open data-sharing infrastructure.
机译:HCI研究越来越多地使用神经生理传感器来识别用户的认知和情感状态。然而,认知数据机器学习中的一个持久性问题是参与者之间的普遍性。一项已提出的解决方案是汇总研究之间的认知和调查数据,以生成更高的样本群体,以进行机器学习和统计分析,以收敛于稳定,可概括的结果。在本文中,我认为大型数据共享项目可以通过平滑高维数据集中的噪声来促进脑成像研究结果的聚合,以解决这些问题。本文通过提出通过基于术语的元数据分析促进当前不兼容的fNIRS和FMRI数据集合并的方法,为大型认知数据共享系统的设计迈出了一小步。为此,我使用内容分析来分析20项fNIRS情感研究,这些内容包括:(1)“情感”的同义词术语和定义,(2)实验性刺激,以及(3)使用或不使用自我报告调查。结果表明,fNIRS情感研究具有稳定的同义词,使用出版物内部或出版物之间的情感术语的技术和民间概念化来指代情感。这些研究使用不同的刺激来激发情绪,但也显示了标准化刺激材料的共享使用与自我报告调查之间的共性。概念同义词和标准化实验材料中的这些相似之处表明,神经成像社区有望基于基于元数据术语的分析建立开放数据存储库。这项工作有助于在研究之间和实验室之间合并数据集,将神经成像(如fNIRS)与fMRI数据集统一起来,提高机器学习模型的通用性,并通过开放的数据共享基础设施促进科学发展。

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