颞叶
皮质电图
神经科学
颞上回
颞下回
心理学
前颞叶切除术
颞中回
病变
癫痫
颞叶皮质
癫痫外科
梭状回
听力学
医学
功能磁共振成像
精神科
作者
Kathryn M Snyder,Kiefer J Forseth,Cristian Donos,Patrick S Rollo,Simon Fischer-Baum,Joshua Breier,Nitin Tandon
摘要
Lexical retrieval deficits are characteristic of a variety of different neurological disorders. However, the exact substrates responsible for this are not known. We studied a large cohort of patients undergoing surgery in the dominant temporal lobe for medically intractable epilepsy (n=95) to localize brain regions that were associated with anomia.We performed a multivariate voxel-based lesion symptom mapping analysis to correlate surgical lesions within the temporal lobe with changes in naming ability. Additionally, we used a surface-based mixed-effects multilevel analysis to estimate group-level broadband gamma activity during naming across a subset of patients with electrocorticography recordings and integrated these results with lesion-deficit findings.We observed that ventral temporal regions, centered around the middle fusiform gyrus, were significantly associated with a decline in naming. Furthermore, we found that the ventral aspect of temporal lobectomies was linearly correlated to a decline in naming with a clinically significant decline occurring once the resection extended 6 cm from the anterior tip of the temporal lobe on the ventral surface. On electrocorticography, the majority of these cortical regions were functionally active following visual processing. These loci coincide with the sites of susceptibility artifacts during echo-planar imaging, which may explain why this region has been previously underappreciated as the locus responsible for postoperative naming deficits.Taken together, these data highlight the crucial contribution of the ventral temporal cortex in naming and its important role in the pathophysiology of anomia following temporal lobe resections. As such, surgical strategies should attempt to preserve this region to mitigate postoperative language deficits.
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