Matsubara Teppei, Stufflebeam Steven, Khan Sheraz, Ahveninen Jyrki, Hämäläinen Matti, Goto Yoshinobu, Maekawa Toshihiko, Tobimatsu Shozo, Kishida Kuniharu
Athinoula A. Martinos Center for Biomedical Imaging, Massachusetts General Hospital, Charlestown, MA, United States.
Harvard Medical School, Boston, MA, United States.
Front Neurol. 2022 Feb 25;13:762497. doi: 10.3389/fneur.2022.762497. eCollection 2022.
The mismatch response (MMR) is thought to be a neurophysiological measure of novel auditory detection that could serve as a translational biomarker of various neurological diseases. When recorded with electroencephalography (EEG) or magnetoencephalography (MEG), the MMR is traditionally extracted by subtracting the event-related potential/field (ERP/ERF) elicited in response to "deviant" sounds that occur randomly within a train of repetitive "standard" sounds. However, there are several problems with such a subtraction, which include increased noise and the neural adaptation problem. On the basis of the original theory underlying MMR (i.e., the memory-comparison process), the MMR should be present only in deviant epochs. Therefore, we proposed a novel method called weighted- , which uses only the deviant response to derive the MMR. Deviant concatenation and weight assignment are the primary procedures of weighted- , which maximize the benefits of time-delayed correlation. We hypothesized that this novel weighted- method highlights responses related to the detection of the deviant stimulus and is more sensitive than independent component analysis (ICA). To test this hypothesis and the validity and efficacy of the weighted- in comparison with ICA (infomax), we evaluated the methods in 12 healthy adults. Auditory stimuli were presented at a constant rate of 2 Hz. Frequency MMRs at a sensor level were obtained from the bilateral temporal lobes with the subtraction approach at 96-276 ms (the MMR time range), defined based on spatio-temporal cluster permutation analysis. In the application of the weighted- , the deviant responses were given a constant weight using a rectangular window on the MMR time range. The ERF elicited by the weighted deviant responses demonstrated one or a few dominant components representing the MMR that fitted well with that of the sensor space analysis using the conventional subtraction approach. In contrast, infomax or weighted-infomax revealed many minor or pseudo components as constituents of the MMR. Our single-trial, contrast-free approach may assist in using the MMR in basic and clinical research, and it opens a new and potentially useful way to analyze event-related MEG/EEG data.
失配反应(MMR)被认为是一种用于检测新异听觉的神经生理学指标,可作为多种神经系统疾病的转化生物标志物。当通过脑电图(EEG)或脑磁图(MEG)进行记录时,传统上通过从对在一系列重复的“标准”声音中随机出现的“偏差”声音做出反应所诱发的事件相关电位/场(ERP/ERF)中减去来提取MMR。然而,这种减法存在几个问题,包括噪声增加和神经适应问题。基于MMR的原始理论(即记忆比较过程),MMR应该只出现在偏差时段。因此,我们提出了一种名为加权连接的新方法,该方法仅使用偏差反应来推导MMR。偏差连接和权重分配是加权连接的主要步骤,它们最大化了时间延迟相关性的益处。我们假设这种新的加权连接方法突出了与偏差刺激检测相关的反应,并且比独立成分分析(ICA)更敏感。为了检验这一假设以及加权连接与ICA(信息最大化)相比的有效性和效能,我们在12名健康成年人中对这些方法进行了评估。听觉刺激以2Hz的恒定速率呈现。在96 - 276毫秒(MMR时间范围,基于时空聚类置换分析定义),通过减法方法从双侧颞叶获得传感器水平的频率MMR。在加权连接的应用中,使用MMR时间范围内的矩形窗口为偏差反应赋予恒定权重。加权偏差反应诱发的ERF显示出一个或几个代表MMR的主要成分,与使用传统减法方法的传感器空间分析的成分非常吻合。相比之下,信息最大化或加权信息最大化揭示了许多次要或伪成分作为MMR的组成部分。我们的单试次、无对比方法可能有助于在基础和临床研究中使用MMR,并且它为分析事件相关的MEG/EEG数据开辟了一条新的、可能有用的途径。