Suppr超能文献

脑电图分类实验中分组设计的风险与陷阱

The Perils and Pitfalls of Block Design for EEG Classification Experiments.

作者信息

Li Ren, Johansen Jared S, Ahmed Hamad, Ilyevsky Thomas V, Wilbur Ronnie B, Bharadwaj Hari M, Siskind Jeffrey Mark

出版信息

IEEE Trans Pattern Anal Mach Intell. 2020 Nov 19;PP. doi: 10.1109/TPAMI.2020.2973153.

Abstract

A recent paper [31] claims to classify brain processing evoked in subjects watching ImageNet stimuli as measured with EEG and to employ a representation derived from this processing to construct a novel object classifier. That paper, together with a series of subsequent papers [11, 18, 20, 24, 25, 30, 34], claims to achieve successful results on a wide variety of computer-vision tasks, including object classification, transfer learning, and generation of images depicting human perception and thought using brain-derived representations measured through EEG. Our novel experiments and analyses demonstrate that their results crucially depend on the block design that they employ, where all stimuli of a given class are presented together, and fail with a rapid-event design, where stimuli of different classes are randomly intermixed. The block design leads to classification of arbitrary brain states based on block-level temporal correlations that are known to exist in all EEG data, rather than stimulus-related activity. Because every trial in their test sets comes from the same block as many trials in the corresponding training sets, their block design thus leads to classifying arbitrary temporal artifacts of the data instead of stimulus-related activity. This invalidates all subsequent analyses performed on this data in multiple published papers and calls into question all of the reported results. We further show that a novel object classifier constructed with a random codebook performs as well as or better than a novel object classifier constructed with the representation extracted from EEG data, suggesting that the performance of their classifier constructed with a representation extracted from EEG data does not benefit from the brain-derived representation. Together, our results illustrate the far-reaching implications of the temporal autocorrelations that exist in all neuroimaging data for classification experiments. Further, our results calibrate the underlying difficulty of the tasks involved and caution against overly optimistic, but incorrect, claims to the contrary.

摘要

最近的一篇论文[31]声称,通过脑电图(EEG)测量,对观看ImageNet刺激的受试者诱发的大脑处理过程进行分类,并利用从该处理过程中得出的表征来构建一种新型的物体分类器。该论文以及一系列后续论文[11, 18, 20, 24, 25, 30, 34]声称,在包括物体分类、迁移学习以及使用通过EEG测量的大脑衍生表征生成描绘人类感知和思维的图像等各种计算机视觉任务上取得了成功结果。我们新颖的实验和分析表明,他们的结果关键取决于所采用的块设计,即给定类别的所有刺激一起呈现,而在快速事件设计中则失败,在快速事件设计中不同类别的刺激是随机混合的。块设计导致基于所有EEG数据中已知存在的块级时间相关性对任意大脑状态进行分类,而不是基于与刺激相关的活动。因为他们测试集中的每个试验都与相应训练集中的许多试验来自同一个块,所以他们的块设计因此导致对数据的任意时间伪迹进行分类,而不是与刺激相关的活动。这使得多篇已发表论文中对这些数据进行的所有后续分析无效,并对所有报告的结果提出质疑。我们进一步表明,用随机码本构建的新型物体分类器的性能与用从EEG数据中提取的表征构建的新型物体分类器一样好或更好,这表明用从EEG数据中提取的表征构建的分类器的性能并没有从大脑衍生表征中受益。总之,我们的结果说明了所有神经成像数据中存在的时间自相关对分类实验的深远影响。此外,我们的结果校准了所涉及任务的潜在难度,并告诫不要提出过于乐观但不正确的相反主张。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验