Yourganov Grigori, Smith Kimberly G, Fridriksson Julius, Rorden Chris
Department of Psychology, University of South Carolina, Columbia, SC, USA.
Department of Communication Sciences and Disorders, University of South Carolina, Columbia, SC, USA.
Cortex. 2015 Dec;73:203-15. doi: 10.1016/j.cortex.2015.09.005. Epub 2015 Sep 25.
Chronic aphasia is a common consequence of a left-hemisphere stroke. Since the early insights by Broca and Wernicke, studying the relationship between the loci of cortical damage and patterns of language impairment has been one of the concerns of aphasiology. We utilized multivariate classification in a cross-validation framework to predict the type of chronic aphasia from the spatial pattern of brain damage. Our sample consisted of 98 patients with five types of aphasia (Broca's, Wernicke's, global, conduction, and anomic), classified based on scores on the Western Aphasia Battery (WAB). Binary lesion maps were obtained from structural MRI scans (obtained at least 6 months poststroke, and within 2 days of behavioural assessment); after spatial normalization, the lesions were parcellated into a disjoint set of brain areas. The proportion of damage to the brain areas was used to classify patients' aphasia type. To create this parcellation, we relied on five brain atlases; our classifier (support vector machine - SVM) could differentiate between different kinds of aphasia using any of the five parcellations. In our sample, the best classification accuracy was obtained when using a novel parcellation that combined two previously published brain atlases, with the first atlas providing the segmentation of grey matter, and the second atlas used to segment the white matter. For each aphasia type, we computed the relative importance of different brain areas for distinguishing it from other aphasia types; our findings were consistent with previously published reports of lesion locations implicated in different types of aphasia. Overall, our results revealed that automated multivariate classification could distinguish between aphasia types based on damage to atlas-defined brain areas.
慢性失语症是左半球中风的常见后果。自布罗卡和韦尼克早期的见解以来,研究皮质损伤部位与语言障碍模式之间的关系一直是失语症学关注的问题之一。我们在交叉验证框架中使用多变量分类,从脑损伤的空间模式预测慢性失语症的类型。我们的样本包括98名患有五种失语症类型(布罗卡失语症、韦尼克失语症、完全性失语症、传导性失语症和命名性失语症)的患者,这些患者根据西方失语症成套测验(WAB)的得分进行分类。从结构MRI扫描(中风后至少6个月获得,且在行为评估的2天内)中获取二元病变图;经过空间归一化后,将病变分割为不相交的脑区集合。脑区损伤的比例用于对患者的失语症类型进行分类。为了创建这种分割,我们依靠了五个脑图谱;我们的分类器(支持向量机 - SVM)可以使用这五个分割中的任何一个来区分不同类型的失语症。在我们的样本中,当使用一种结合了两个先前发表的脑图谱的新型分割时,获得了最佳分类准确率,第一个图谱提供灰质分割,第二个图谱用于分割白质。对于每种失语症类型,我们计算了不同脑区对于将其与其他失语症类型区分开来的相对重要性;我们的发现与先前发表的关于不同类型失语症所涉及的病变位置的报告一致。总体而言,我们的结果表明,自动多变量分类可以根据对图谱定义的脑区的损伤来区分失语症类型。