Ren Weijing, Jia Chunying, Zhou Ying, Zhao Jingdu, Wang Bo, Yu Weiyong, Li Shiyi, Hu Yiru, Zhang Hao
School of Rehabilitation, Capital Medical University, Beijing, China.
Department of Neurorehabilitation, China Rehabilitation Research Center, Beijing Bo'ai Hospital, Beijing, China.
Front Neurol. 2022 Sep 30;13:981653. doi: 10.3389/fneur.2022.981653. eCollection 2022.
Brain lesion mapping studies have provided the strongest evidence regarding the neural basis of cognition. However, it remained a problem to identify symptom-specific brain networks accounting for observed clinical and neuroanatomical heterogeneity. Independent component analysis (ICA) is a statistical method that decomposes mixed signals into multiple independent components. We aimed to solve this issue by proposing an independent component-based lesion mapping (ICLM) method to identify the language network in patients with moderate to severe post-stroke aphasia. Lesions were first extracted from 49 patients with post-stroke aphasia as masks applied to fMRI data in a cohort of healthy participants to calculate the functional connectivity (FC) within the masks and non-mask brain voxels. ICA was further performed on a reformatted FC matrix to extract multiple independent networks. Specifically, we found that one of the lesion-related independent components (ICs) highly resembled classical language networks. Moreover, the damaged level within the language-related lesioned network is strongly associated with language deficits, including aphasia quotient, naming, and auditory comprehension scores. In comparison, none of the other two traditional lesion mapping methods found any regions responsible for language dysfunction. The language-related lesioned network extracted with the ICLM method showed high specificity in detecting aphasia symptoms compared with the performance of resting ICs and classical language networks. In total, we detected a precise language network in patients with aphasia and proved its efficiency in the relationship with language symptoms. In general, our ICLM could successfully identify multiple lesion-related networks from complicated brain diseases, and be used as an effective tool to study brain-behavior relationships and provide potential biomarkers of particular clinical behavioral deficits.
脑损伤图谱研究为认知的神经基础提供了最有力的证据。然而,识别能够解释所观察到的临床和神经解剖学异质性的症状特异性脑网络仍然是一个问题。独立成分分析(ICA)是一种将混合信号分解为多个独立成分的统计方法。我们旨在通过提出一种基于独立成分的损伤图谱(ICLM)方法来解决这个问题,以识别中重度中风后失语症患者的语言网络。首先从49例中风后失语症患者中提取病变作为掩码,应用于一组健康参与者的功能磁共振成像(fMRI)数据,以计算掩码内和非掩码脑体素内的功能连接(FC)。对重新格式化的FC矩阵进一步进行ICA,以提取多个独立网络。具体而言,我们发现其中一个与病变相关的独立成分(IC)与经典语言网络高度相似。此外,与语言相关的病变网络内的损伤程度与语言缺陷密切相关,包括失语商、命名和听觉理解得分。相比之下,其他两种传统的损伤图谱方法均未发现任何负责语言功能障碍的区域。与静息IC和经典语言网络的表现相比,用ICLM方法提取的与语言相关的病变网络在检测失语症状方面具有很高的特异性。我们总共在失语症患者中检测到一个精确的语言网络,并证明了其在与语言症状关系方面的有效性。总体而言,我们的ICLM能够成功地从复杂的脑部疾病中识别出多个与病变相关的网络,并可作为研究脑-行为关系的有效工具,以及提供特定临床行为缺陷的潜在生物标志物。