School of Psychology and Institute of Neuroscience, Trinity College Dublin, Dublin, D02 PN40, Ireland.
School of Psychology and Institute of Neuroscience, Trinity College Dublin, Dublin, D02 PN40, Ireland
J Neurosci. 2021 Jun 9;41(23):5069-5079. doi: 10.1523/JNEUROSCI.2231-20.2021. Epub 2021 Apr 29.
In humans, impaired response inhibition is characteristic of a wide range of psychiatric diseases and of normal aging. It is hypothesized that the right inferior frontal cortex (rIFC) plays a key role by inhibiting the motor cortex via the basal ganglia. The electroencephalography (EEG)-derived β-rhythm (15-29 Hz) is thought to reflect communication within this network, with increased right frontal β-power often observed before successful response inhibition. Recent literature suggests that averaging spectral power obscures the transient, burst-like nature of β-activity. There is evidence that the rate of β-bursts following a Stop signal is higher when a motor response is successfully inhibited. However, other characteristics of β-burst events, and their topographical properties, have not yet been examined. Here, we used a large human (male and female) EEG Stop Signal task (SST) dataset ( = 218) to examine averaged normalized β-power, β-burst rate, and β-burst "volume" (which we defined as burst duration × frequency span × amplitude). We first sought to optimize the β-burst detection method. In order to find predictors across the whole scalp, and with high temporal precision, we then used machine learning to (1) classify successful versus failed stopping and to (2) predict individual stop signal reaction time (SSRT). β-burst volume was significantly more predictive of successful and fast stopping than β-burst rate and normalized β-power. The classification model generalized to an external dataset ( = 201). We suggest β-burst volume is a sensitive and reliable measure for investigation of human response inhibition. The electroencephalography (EEG)-derived β-rhythm (15-29 Hz) is associated with the ability to inhibit ongoing actions. In this study, we sought to identify the specific characteristics of β-activity that contribute to successful and fast inhibition. In order to search for the most relevant features of β-activity, across the whole scalp and with high temporal precision, we employed machine learning on two large datasets. Spatial and temporal features of β-burst "volume" (duration × frequency span × amplitude) predicted response inhibition outcomes in our data significantly better than β-burst rate and normalized β-power. These findings suggest that multidimensional measures of β-bursts, such as burst volume, can add to our understanding of human response inhibition.
在人类中,反应抑制受损是广泛的精神疾病和正常衰老的特征。据推测,右侧下额叶皮层(rIFC)通过基底神经节抑制运动皮层发挥关键作用。脑电图(EEG)衍生的β节律(15-29 Hz)被认为反映了该网络内的通讯,通常在成功抑制反应之前观察到右侧额叶β功率增加。最近的文献表明,平均频谱功率掩盖了β活动的瞬态、爆发性质。有证据表明,当成功抑制运动反应时,紧随停止信号后的β爆发率更高。然而,β爆发事件的其他特征及其拓扑特性尚未得到检验。在这里,我们使用了一个大型人类(男性和女性)EEG 停止信号任务(SST)数据集(n=218)来检查平均归一化β功率、β爆发率和β爆发“体积”(我们将其定义为爆发持续时间×频率跨度×幅度)。我们首先试图优化β爆发检测方法。为了在整个头皮上找到具有高时间精度的预测因子,我们然后使用机器学习来(1)分类成功与失败的停止,以及(2)预测个体停止信号反应时间(SSRT)。β爆发体积比β爆发率和归一化β功率更能预测成功和快速停止。分类模型推广到外部数据集(n=201)。我们认为β爆发体积是研究人类反应抑制的敏感可靠的指标。脑电图(EEG)衍生的β节律(15-29 Hz)与抑制进行中动作的能力有关。在这项研究中,我们试图确定有助于成功和快速抑制的β活动的具体特征。为了在整个头皮上寻找具有高时间精度的β活动的最相关特征,我们在两个大型数据集上使用了机器学习。β爆发“体积”(持续时间×频率跨度×幅度)的时空特征在我们的数据中显著优于β爆发率和归一化β功率预测反应抑制结果。这些发现表明,β爆发的多维测量,如爆发体积,可以增加我们对人类反应抑制的理解。