Hsieh Jason K, Prakash Prashanth R, Flint Robert D, Fitzgerald Zachary, Mugler Emily, Wang Yujing, Crone Nathan E, Templer Jessica W, Rosenow Joshua M, Tate Matthew C, Betzel Richard, Slutzky Marc W
Department of Neurosurgery, Cleveland Clinic Foundation, Cleveland, OH, 44195, USA.
Department of Neurosurgery, Northwestern University Feinberg School of Medicine, Chicago, IL, 60611, USA.
Nat Commun. 2024 Sep 16;15(1):7897. doi: 10.1038/s41467-024-51839-z.
Historically, eloquent functions have been viewed as localized to focal areas of human cerebral cortex, while more recent studies suggest they are encoded by distributed networks. We examined the network properties of cortical sites defined by stimulation to be critical for speech and language, using electrocorticography from sixteen participants during word-reading. We discovered distinct network signatures for sites where stimulation caused speech arrest and language errors. Both demonstrated lower local and global connectivity, whereas sites causing language errors exhibited higher inter-community connectivity, identifying them as connectors between modules in the language network. We used machine learning to classify these site types with reasonably high accuracy, even across participants, suggesting that a site's pattern of connections within the task-activated language network helps determine its importance to function. These findings help to bridge the gap in our understanding of how focal cortical stimulation interacts with complex brain networks to elicit language deficits.
从历史上看,明确的功能一直被认为定位于人类大脑皮层的特定区域,而最近的研究表明它们是由分布式网络编码的。我们使用16名参与者在单词阅读过程中的皮层脑电图,研究了通过刺激定义为对言语和语言至关重要的皮层部位的网络特性。我们发现了刺激导致言语停顿和语言错误的部位的不同网络特征。两者都表现出较低的局部和全局连通性,而导致语言错误的部位表现出较高的群落间连通性,将它们确定为语言网络中模块之间的连接点。我们使用机器学习以相当高的准确率对这些部位类型进行分类,即使是在不同参与者之间,这表明任务激活的语言网络中一个部位的连接模式有助于确定其对功能的重要性。这些发现有助于弥合我们在理解局部皮层刺激如何与复杂的脑网络相互作用以引发语言缺陷方面的差距。