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使用交互式、患者特异性模型靶向神经元纤维束进行深部脑刺激治疗

Targeting Neuronal Fiber Tracts for Deep Brain Stimulation Therapy Using Interactive, Patient-Specific Models.

作者信息

Janson Andrew P, Butson Christopher R

机构信息

Scientific Computing and Imaging (SCI) Institute, Department of Biomedical Engineering, University of Utah.

Scientific Computing and Imaging (SCI) Institute, Department of Biomedical Engineering, University of Utah;

出版信息

J Vis Exp. 2018 Aug 12(138):57292. doi: 10.3791/57292.

Abstract

Deep brain stimulation (DBS), which involves insertion of an electrode to deliver stimulation to a localized brain region, is an established therapy for movement disorders and is being applied to a growing number of disorders. Computational modeling has been successfully used to predict the clinical effects of DBS; however, there is a need for novel modeling techniques to keep pace with the growing complexity of DBS devices. These models also need to generate predictions quickly and accurately. The goal of this project is to develop an image processing pipeline to incorporate structural magnetic resonance imaging (MRI) and diffusion weighted imaging (DWI) into an interactive, patient specific model to simulate the effects of DBS. A virtual DBS lead can be placed inside of the patient model, along with active contacts and stimulation settings, where changes in lead position or orientation generate a new finite element mesh and solution of the bioelectric field problem in near real-time, a timespan of approximately 10 seconds. This system also enables the simulation of multiple leads in close proximity to allow for current steering by varying anodes and cathodes on different leads. The techniques presented in this paper reduce the burden of generating and using computational models while providing meaningful feedback about the effects of electrode position, electrode design, and stimulation configurations to researchers or clinicians who may not be modeling experts.

摘要

深部脑刺激(DBS)涉及插入电极以向局部脑区传递刺激,是一种已确立的治疗运动障碍的方法,并且正在应用于越来越多的疾病。计算建模已成功用于预测DBS的临床效果;然而,需要新颖的建模技术来跟上DBS设备日益增长的复杂性。这些模型还需要快速准确地生成预测。该项目的目标是开发一种图像处理流程,将结构磁共振成像(MRI)和扩散加权成像(DWI)纳入交互式、针对患者的模型中,以模拟DBS的效果。可以将虚拟DBS导线放置在患者模型内部,连同有源触点和刺激设置一起,导线位置或方向的变化会生成新的有限元网格并几乎实时地求解生物电场问题,时间跨度约为10秒。该系统还能够模拟多个紧邻的导线,以便通过改变不同导线上的阳极和阴极来实现电流控制。本文介绍的技术减轻了生成和使用计算模型的负担,同时为可能不是建模专家的研究人员或临床医生提供有关电极位置、电极设计和刺激配置效果的有意义反馈。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/669c/6126786/3b3cd69b88d0/jove-138-57292-0.jpg

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