Tian Xing, Huber David E
Department of Psychology, University of Maryland, College Park, MD 20742, USA.
Brain Topogr. 2008 Spring;20(3):131-41. doi: 10.1007/s10548-007-0040-3. Epub 2007 Dec 13.
Sensor selection is typically used in magnetoencephalography (MEG) and scalp electroencephalography (EEG) studies, but this practice cannot differentiate between changes in the distribution of neural sources versus changes in the magnitude of neural sources. This problem is further complicated by (1) subject averaging despite sizable individual anatomical differences and (2) experimental designs that produce overlapping waveforms due to short latencies between stimuli. Using data from the entire spatial array of sensors, we present simple multivariate measures that (1) normalize against individual differences by comparison with each individual's standard response; (2) compare the similarity of spatial patterns in different conditions (angle test) to ascertain whether the distribution of neural sources is different; and (3) compare the response magnitude between conditions which are sufficiently similar (projection test). These claims are supported by applying the reported techniques to a short-term word priming paradigm as measured with MEG, revealing more reliable results as compared to traditional sensor selection methodology. Although precise cortical localization remains intractable, these techniques are easy to calculate, relatively assumption free, and yield the important psychological measures of similarity and response magnitude.
传感器选择通常用于脑磁图(MEG)和头皮脑电图(EEG)研究,但这种做法无法区分神经源分布的变化与神经源大小的变化。由于(1)尽管个体解剖结构存在相当大的差异,但仍进行受试者平均,以及(2)实验设计因刺激之间的潜伏期短而产生重叠波形,这个问题变得更加复杂。利用来自整个传感器空间阵列的数据,我们提出了简单的多变量测量方法,这些方法(1)通过与每个个体的标准反应进行比较来针对个体差异进行归一化;(2)比较不同条件下空间模式的相似性(角度测试),以确定神经源的分布是否不同;(3)比较足够相似的条件之间的反应幅度(投影测试)。通过将所报道的技术应用于用MEG测量的短期单词启动范式,这些说法得到了支持,与传统的传感器选择方法相比,揭示了更可靠的结果。尽管精确的皮层定位仍然难以解决,但这些技术易于计算,相对无需假设,并产生了相似性和反应幅度等重要的心理学测量指标。