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失语症与健康中的语言网络:一项包含 1000 名参与者的激活似然估计荟萃分析。

Language networks in aphasia and health: A 1000 participant activation likelihood estimation meta-analysis.

机构信息

MRC Cognition and Brain Sciences Unit, University of Cambridge, Cambridge, UK; Department of Psychiatry, University of Cambridge, Cambridge, UK; Division of Neuroscience and Experimental Psychology, University of Manchester, Manchester, UK.

MRC Cognition and Brain Sciences Unit, University of Cambridge, Cambridge, UK; King Fahad Medical City, Riyadh, Saudi Arabia; Alfaisal University, Riyadh, Saudi Arabia.

出版信息

Neuroimage. 2021 Jun;233:117960. doi: 10.1016/j.neuroimage.2021.117960. Epub 2021 Mar 17.

Abstract

Aphasia recovery post-stroke is classically and most commonly hypothesised to rely on regions that were not involved in language premorbidly, through 'neurocomputational invasion' or engagement of 'quiescent homologues'. Contemporary accounts have suggested, instead, that recovery might be supported by under-utilised areas of the premorbid language network, which are downregulated in health to save neural resources ('variable neurodisplacement'). Despite the importance of understanding the neural bases of language recovery clinically and theoretically, there is no consensus as to which specific regions are more likely to be activated in post-stroke aphasia (PSA) than healthy individuals. Accordingly, we performed an Activation Likelihood Estimation (ALE) meta-analysis of language functional neuroimaging studies in PSA. We obtained coordinate-based functional neuroimaging data for 481 individuals with aphasia following left-hemisphere stroke and 530 linked controls from 33 studies that met predefined inclusion criteria. ALE identified regions of consistent, above-chance spatial convergence of activation, as well as regions of significantly different activation likelihood, between participant groups and language tasks. Overall, these findings dispute the prevailing theory that aphasia recovery involves recruitment of novel right hemisphere territory into the language network post-stroke. Instead, multiple regions throughout both hemispheres were consistently activated during language tasks in both PSA and controls. Regions of the right anterior insula, frontal operculum and inferior frontal gyrus (IFG) pars opercularis were more likely to be activated across all language tasks in PSA than controls. Similar regions were more likely to be activated during higher than lower demand comprehension or production tasks, consistent with them representing enhanced utilisation of spare capacity within right hemisphere executive-control related regions. This provides novel evidence that 'variable neurodisplacement' underlies language network changes that occur post-stroke. Conversely, multiple undamaged regions were less likely to be activated across all language tasks in PSA than controls, including domain-general regions of medial superior frontal and paracingulate cortex, right IFG pars triangularis and temporal pole. These changes might represent functional diaschisis, and demonstrate that there is not global, undifferentiated upregulation of all domain-general neural resources during language in PSA. Such knowledge is essential if we are to design neurobiologically-informed therapeutic interventions to facilitate language recovery.

摘要

卒中后失语症的恢复,传统上和最常见的假设是依赖于那些在发病前未参与语言的区域,通过“神经计算入侵”或利用“静止同源物”。当代的解释则认为,恢复可能得到发病前语言网络中未充分利用的区域的支持,这些区域在健康状态下被下调以节省神经资源(“可变神经置换”)。尽管理解语言恢复的神经基础在临床和理论上都很重要,但对于哪些特定区域在卒中后失语症(PSA)中比健康个体更有可能被激活,尚无共识。因此,我们对 PSA 中的语言功能神经影像学研究进行了激活似然估计(ALE)荟萃分析。我们从 33 项符合预定纳入标准的研究中获得了 481 名左侧半球卒中后失语症患者和 530 名配对对照的基于坐标的功能神经影像学数据。ALE 确定了参与者群体和语言任务之间激活的一致、高于偶然的空间收敛区域,以及激活可能性显著不同的区域。总的来说,这些发现质疑了普遍的理论,即失语症的恢复涉及到卒中后将新的右侧半球区域纳入语言网络。相反,在 PSA 和对照组中,在所有语言任务中,双侧半球的多个区域都被一致激活。与对照组相比,右侧前岛叶、额骨外侧和下额回(IFG)额盖部在所有语言任务中更有可能被激活。在更高需求的理解或产生任务中,类似的区域更有可能被激活,这与它们代表了对右侧执行控制相关区域中剩余容量的增强利用一致。这提供了新的证据,即“可变神经置换”是卒中后语言网络变化的基础。相反,在 PSA 中,多个未受损的区域在所有语言任务中都不如对照组更有可能被激活,包括额上回和旁扣带回皮质的一般领域、右侧 IFG 三角部和颞极。这些变化可能代表功能失联络,并表明在 PSA 中,语言并不普遍、无差别地上调所有一般领域的神经资源。如果我们要设计基于神经生物学的治疗干预措施来促进语言恢复,那么这种知识是必不可少的。

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