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首页> 外文期刊>Stereotactic and Functional Neurosurgery: Official Journal of the World Society for Stereotactic and Functional Neurosurgery >Automated 3-dimensional brain atlas fitting to microelectrode recordings from deep brain stimulation surgeries.
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Automated 3-dimensional brain atlas fitting to microelectrode recordings from deep brain stimulation surgeries.

机译:自动3维脑图谱,适合深部脑刺激手术中的微电极记录。

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OBJECTIVE: Deep brain stimulation (DBS) surgeries commonly rely on brain atlases and microelectrode recordings (MER) to help identify the target location for electrode implantation. We present an automated method for optimally fitting a 3-dimensional brain atlas to intraoperative MER and predicting a target DBS electrode location in stereotactic coordinates for the patient. METHODS: We retrospectively fit a 3-dimensional brain atlas to MER points from 10 DBS surgeries targeting the subthalamic nucleus (STN). We used a constrained optimization algorithm to maximize the MER points correctly fitted (i.e., contained) within the appropriate atlas nuclei. We compared our optimization approach to conventional anterior commissure-posterior commissure (AC/PC) scaling, and to manual fits performed by four experts. A theoretical DBS electrode target location in the dorsal STN was customized to each patient as part of the fitting process and compared to the location of the clinically defined therapeutic stimulation contact. RESULTS: The human expert and computer optimization fits achieved significantly better fits than the AC/PC scaling (80, 81, and 41% of correctly fitted MER, respectively). However, the optimization fits were performed in less time than the expert fits and converged to a single solution for each patient, eliminating interexpert variance. CONCLUSIONS AND SIGNIFICANCE: DBS therapeutic outcomes are directly related to electrode implantation accuracy. Our automated fitting techniques may aid in the surgical decision-making process by optimally integrating brain atlas and intraoperative neurophysiological data to provide a visual guide for target identification.
机译:目的:深部脑刺激(DBS)手术通常依靠脑图谱和微电极记录(MER)来帮助确定电极植入的目标位置。我们提出了一种自动方法,可最佳地将3维脑图集拟合到术中MER并预测患者的立体定位坐标中的目标DBS电极位置。方法:我们回顾性研究了针对丘脑下核(STN)的10次DBS手术的MER点的3维脑图集。我们使用了受约束的优化算法来最大化正确拟合(即包含在)适当的图谱核内的MER点。我们将优化方法与传统的前连合-后连合(AC / PC)缩放以及由四位专家执行的手动拟合进行了比较。作为拟合过程的一部分,为每个患者量身定制了背侧STN中理论的DBS电极目标位置,并与临床定义的治疗性刺激性接触的位置进行了比较。结果:与AC / PC缩放比例相比,专家和计算机优化拟合的拟合度要好得多(分别为正确拟合的MER的80%,81%和41%)。但是,优化拟合的执行时间少于专家拟合的时间,并且可以为每个患者收敛到单个解决方案,从而消除了专家之间的差异。结论和意义:DBS的治疗结果与电极植入的准确性直接相关。我们的自动拟合技术可以通过最佳地整合大脑图谱和术中神经生理学数据来为目标识别提供可视化指导,从而有助于外科手术决策过程。

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