1Center for Mind/Brain Sciences, University of Trento; and.
2Division of Neurosurgery, Structural and Functional Connectivity Lab Project, and.
J Neurosurg. 2018 Oct 26;131(3):764-771. doi: 10.3171/2018.4.JNS18474. Print 2019 Sep 1.
Resting-state functional MRI (rs-fMRI) represents a promising and cost-effective alternative to task-based fMRI for presurgical mapping. However, the lack of clinically streamlined and reliable rs-fMRI analysis tools has prevented wide adoption of this technique. In this work, the authors introduce an rs-fMRI processing pipeline (ReStNeuMap) for automatic single-patient rs-fMRI network analysis.
The authors provide a description of the rs-fMRI network analysis steps implemented in ReStNeuMap and report their initial experience with this tool after performing presurgical mapping in 6 patients. They verified the spatial agreement between rs-fMRI networks derived by ReStNeuMap and localization of activation with intraoperative direct electrical stimulation (DES).
The authors automatically extracted rs-fMRI networks including eloquent cortex in spatial proximity with the resected lesion in all patients. The distance between DES points and corresponding rs-fMRI networks was less than 1 cm in 78% of cases for motor, 100% of cases for visual, 87.5% of cases for language, and 100% of cases for speech articulation mapping.
The authors' initial experience with ReStNeuMap showed good spatial agreement between presurgical rs-fMRI predictions and DES findings during awake surgery. The availability of the rs-fMRI analysis tools for clinicians aiming to perform noninvasive mapping of brain functional networks may extend its application beyond surgical practice.
静息态功能磁共振成像(rs-fMRI)为术前映射提供了一种有前途且具有成本效益的替代任务型 fMRI 的方法。然而,缺乏临床简化且可靠的 rs-fMRI 分析工具,阻碍了该技术的广泛应用。在这项工作中,作者介绍了一种用于自动单患者 rs-fMRI 网络分析的 rs-fMRI 处理管道(ReStNeuMap)。
作者提供了 ReStNeuMap 中实现的 rs-fMRI 网络分析步骤的描述,并报告了他们在 6 名患者中进行术前映射后的初步经验。他们验证了 ReStNeuMap 得出的 rs-fMRI 网络与术中直接电刺激(DES)确定的激活之间的空间一致性。
作者在所有患者中自动提取了 rs-fMRI 网络,包括与切除病变空间接近的语言区。在运动功能映射中,DES 点与相应 rs-fMRI 网络之间的距离小于 1cm 的比例为 78%,在视觉功能映射中为 100%,在语言功能映射中为 87.5%,在言语发音映射中为 100%。
作者使用 ReStNeuMap 的初步经验表明,术前 rs-fMRI 预测与清醒手术期间 DES 发现之间具有良好的空间一致性。为希望进行脑功能网络无创映射的临床医生提供 rs-fMRI 分析工具,可能会扩展其在手术以外的应用。