Power Lindsey, Allain Cédric, Moreau Thomas, Gramfort Alexandre, Bardouille Timothy
School of Biomedical Engineering, Dalhousie University, Halifax, Nova Scotia, Canada.
Inria, Mind team, Université Paris-Saclay, Saclay, France.
Neuroimage. 2023 Feb 15;267:119809. doi: 10.1016/j.neuroimage.2022.119809. Epub 2022 Dec 27.
Human neuromagnetic activity is characterised by a complex combination of transient bursts with varying spatial and temporal characteristics. The characteristics of these transient bursts change during task performance and normal ageing in ways that can inform about underlying cortical sources. Many methods have been proposed to detect transient bursts, with the most successful ones being those that employ multi-channel, data-driven approaches to minimize bias in the detection procedure. There has been little research, however, into the application of these data-driven methods to large datasets for group-level analyses. In the current work, we apply a data-driven convolutional dictionary learning (CDL) approach to detect neuromagnetic transient bursts in a large group of healthy participants from the Cam-CAN dataset. CDL was used to extract repeating spatiotemporal motifs in 538 participants between the ages of 18-88 during a sensorimotor task. Motifs were then clustered across participants based on similarity, and relevant task-related clusters were analysed for age-related trends in their spatiotemporal characteristics. Seven task-related motifs resembling known transient burst types were identified through this analysis, including beta, mu, and alpha type bursts. All burst types showed positive trends in their activation levels with age that could be explained by increasing burst rate with age. This work validated the data-driven CDL approach for transient burst detection on a large dataset and identified robust information about the complex characteristics of human brain signals and how they change with age.
人类神经磁活动的特征是具有不同空间和时间特征的瞬态脉冲的复杂组合。这些瞬态脉冲的特征在任务执行和正常衰老过程中会发生变化,这些变化方式可以揭示潜在的皮层源信息。已经提出了许多方法来检测瞬态脉冲,其中最成功的方法是那些采用多通道、数据驱动的方法,以尽量减少检测过程中的偏差。然而,对于将这些数据驱动方法应用于大型数据集进行组级分析的研究却很少。在当前的工作中,我们应用一种数据驱动的卷积字典学习(CDL)方法来检测来自Cam-CAN数据集中一大群健康参与者的神经磁瞬态脉冲。CDL用于在538名年龄在18至88岁之间的参与者执行感觉运动任务期间提取重复的时空模式。然后根据相似性对参与者之间的模式进行聚类,并分析相关的与任务相关的聚类在时空特征方面与年龄相关的趋势。通过该分析确定了七种类似于已知瞬态脉冲类型的与任务相关的模式,包括β、μ和α型脉冲。所有脉冲类型的激活水平都随年龄呈现出正向趋势,这可以通过随年龄增加的脉冲率来解释。这项工作验证了在大型数据集上用于瞬态脉冲检测的数据驱动CDL方法,并确定了有关人类脑信号复杂特征及其随年龄变化方式的可靠信息。