Laboratory for Clinical Neuroscience, Centre for Biomedical Technology, Universidad Politécnica de Madrid, Spain; Movement Disorders & Neuromodulation Unit, Department for Neurology, Charité - University Medicine Berlin, Germany.
Laboratory for Clinical Neuroscience, Centre for Biomedical Technology, Universidad Politécnica de Madrid, Spain.
Neuroimage. 2020 Oct 1;219:117018. doi: 10.1016/j.neuroimage.2020.117018. Epub 2020 Jun 4.
Deep Brain Stimulation (DBS) is an established treatment option for movement disorders and is under investigation for treatment in a growing number of other brain diseases. It has been shown that exact electrode placement crucially affects the efficacy of DBS and this should be considered when investigating novel indications or DBS targets. To measure clinical improvement as a function of electrode placement, neuroscientific methodology and specialized software tools are needed. Such tools should have the goal to make electrode placement comparable across patients and DBS centers, and include statistical analysis options to validate and define optimal targets. Moreover, to allow for comparability across different centers, these need to be performed within an algorithmically and anatomically standardized and openly available group space. With the publication of Lead-DBS software in 2014, an open-source tool was introduced that allowed for precise electrode reconstructions based on pre- and postoperative neuroimaging data. Here, we introduce Lead Group, implemented within the Lead-DBS environment and specifically designed to meet aforementioned demands. In the present article, we showcase the various processing streams of Lead Group in a retrospective cohort of 51 patients suffering from Parkinson's disease, who were implanted with DBS electrodes to the subthalamic nucleus (STN). Specifically, we demonstrate various ways to visualize placement of all electrodes in the group and map clinical improvement values to subcortical space. We do so by using active coordinates and volumes of tissue activated, showing converging evidence of an optimal DBS target in the dorsolateral STN. Second, we relate DBS outcome to the impact of each electrode on local structures by measuring overlap of stimulation volumes with the STN. Finally, we explore the software functions for connectomic mapping, which may be used to relate DBS outcomes to connectivity estimates with remote brain areas. The manuscript is accompanied by a walkthrough tutorial which allows users to reproduce all main results presented here. All data and code needed to reproduce results are openly available.
脑深部电刺激(DBS)是一种成熟的运动障碍治疗方法,目前正被用于越来越多的脑部疾病的治疗研究中。已有研究表明,确切的电极放置位置对 DBS 的疗效有至关重要的影响,因此在研究新的适应证或 DBS 靶点时应予以考虑。为了评估电极放置位置与临床改善的相关性,需要采用神经科学方法和专用软件工具。此类工具应具有使患者之间和 DBS 中心之间的电极放置具有可比性的目标,包括用于验证和定义最佳靶点的统计分析选项。此外,为了实现不同中心之间的可比性,这些工具需要在算法和解剖学标准化以及公开可用的组空间中执行。2014 年,Lead-DBS 软件的发布引入了一种开源工具,该工具允许根据术前和术后神经影像学数据进行精确的电极重建。在此,我们介绍了在 Lead-DBS 环境中实现的 Lead Group,它是专门为满足上述需求而设计的。在本文中,我们展示了 Lead Group 在一个 51 名帕金森病患者的回顾性队列中的各种处理流程,这些患者的丘脑底核(STN)中植入了 DBS 电极。具体而言,我们展示了各种方法来可视化组中所有电极的放置位置,并将临床改善值映射到皮质下空间。我们通过使用激活坐标和激活的组织体积来实现这一点,结果表明在 STN 的背外侧存在最佳 DBS 靶点。其次,我们通过测量刺激体积与 STN 的重叠来衡量每个电极对局部结构的影响,从而将 DBS 结果与 STN 的相关性联系起来。最后,我们探索了用于连接组映射的软件功能,该功能可用于将 DBS 结果与与远程脑区的连接估计值联系起来。本文附有一个演练教程,允许用户重现本文中呈现的所有主要结果。重现结果所需的所有数据和代码均公开可用。