Suppr超能文献

使用静息态 fMRI 对癫痫患儿进行术前语言网络脑映射。

Presurgical brain mapping of the language network in pediatric patients with epilepsy using resting-state fMRI.

机构信息

1Schulich School of Medicine & Dentistry and.

2Department of Electrical and Computer Engineering, Brain and Mind Institute, University of Western Ontario, London.

出版信息

J Neurosurg Pediatr. 2021 Jan 8;27(3):259-268. doi: 10.3171/2020.8.PEDS20517. Print 2021 Mar 1.

Abstract

OBJECTIVE

Epilepsy affects neural processing and often causes intra- or interhemispheric language reorganization, rendering localization solely based on anatomical landmarks (e.g., Broca's area) unreliable. Preoperative brain mapping is necessary to weigh the risk of resection with the risk of postoperative deficit. However, the use of conventional mapping methods (e.g., somatosensory stimulation, task-based functional MRI [fMRI]) in pediatric patients is technically difficult due to low compliance and their unique neurophysiology. Resting-state fMRI (rs-fMRI), a "task-free" technique based on the neural activity of the brain at rest, has the potential to overcome these limitations. The authors hypothesized that language networks can be identified from rs-fMRI by applying functional connectivity analyses.

METHODS

Cases in which both task-based fMRI and rs-fMRI were acquired as part of the preoperative clinical protocol for epilepsy surgery were reviewed. Task-based fMRI consisted of 2 language tasks and 1 motor task. Resting-state fMRI data were acquired while the patients watched an animated movie and were analyzed using independent component analysis (i.e., data-driven method). The authors extracted language networks from rs-fMRI data by performing a similarity analysis with functionally defined language network templates via a template-matching procedure. The Dice coefficient was used to quantify the overlap.

RESULTS

Thirteen children underwent conventional task-based fMRI (e.g., verb generation, object naming), rs-fMRI, and structural imaging at 1.5T. The language components with the highest overlap with the language templates were identified for each patient. Language lateralization results from task-based fMRI and rs-fMRI mapping were comparable, with good concordance in most cases. Resting-state fMRI-derived language maps indicated that language was on the left in 4 patients (31%), on the right in 5 patients (38%), and bilateral in 4 patients (31%). In some cases, rs-fMRI indicated a more extensive language representation.

CONCLUSIONS

Resting-state fMRI-derived language network data were identified at the patient level using a template-matching method. More than half of the patients in this study presented with atypical language lateralization, emphasizing the need for mapping. Overall, these data suggest that this technique may be used to preoperatively identify language networks in pediatric patients. It may also optimize presurgical planning of electrode placement and thereby guide the surgeon's approach to the epileptogenic zone.

摘要

目的

癫痫会影响神经处理,通常导致半球内或半球间语言重组,使得仅基于解剖学标志(例如,布罗卡区)的定位变得不可靠。术前脑映射是必要的,需要权衡切除的风险与术后缺陷的风险。然而,由于儿童的配合度低和独特的神经生理学,传统的映射方法(例如,体感刺激、任务型功能磁共振成像 [fMRI])在儿科患者中使用存在技术困难。静息态功能磁共振成像(rs-fMRI)是一种基于大脑在休息时的神经活动的“无任务”技术,具有克服这些限制的潜力。作者假设可以通过应用功能连接分析从 rs-fMRI 中识别语言网络。

方法

回顾了作为癫痫手术术前临床方案的一部分采集任务型 fMRI 和 rs-fMRI 的病例。任务型 fMRI 包括 2 个语言任务和 1 个运动任务。在患者观看动画电影时采集 rs-fMRI 数据,并通过独立成分分析(即数据驱动方法)进行分析。作者通过使用模板匹配程序,通过对功能定义的语言网络模板进行相似性分析,从 rs-fMRI 数据中提取语言网络。使用 Dice 系数来量化重叠。

结果

13 名儿童在 1.5T 下进行了常规任务型 fMRI(例如,动词生成、物体命名)、rs-fMRI 和结构成像。为每位患者确定了与语言模板重叠度最高的语言成分。任务型 fMRI 和 rs-fMRI 映射的语言侧化结果相当,在大多数情况下具有良好的一致性。基于 rs-fMRI 的语言图表明,4 名患者(31%)的语言位于左侧,5 名患者(38%)的语言位于右侧,4 名患者(31%)的语言双侧分布。在某些情况下,rs-fMRI 表明语言的代表性更广泛。

结论

使用模板匹配方法在患者水平上识别了基于 rs-fMRI 的语言网络数据。本研究中超过一半的患者表现出非典型的语言侧化,强调了映射的必要性。总体而言,这些数据表明,该技术可用于术前识别儿科患者的语言网络。它还可以优化电极放置的术前规划,从而指导外科医生接近致痫区。

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验