Huang Yu, Su Yuzhuo, Rorden Christopher, Dmochowski Jacek, Datta Abhishek, Parra Lucas C
Department of Biomedical Engineering, City College of the City University of New York , New York, NY 10031, USA.
Annu Int Conf IEEE Eng Med Biol Soc. 2012;2012:5376-9. doi: 10.1109/EMBC.2012.6347209.
Targeted transcranial stimulation with electric currents requires accurate models of the current flow from scalp electrodes to the human brain. Idiosyncratic anatomy of individual brains and heads leads to significant variability in such current flows across subjects, thus, necessitating accurate individualized head models. Here we report on an automated processing chain that computes current distributions in the head starting from a structural magnetic resonance image (MRI). The main purpose of automating this process is to reduce the substantial effort currently required for manual segmentation, electrode placement, and solving of finite element models. In doing so, several weeks of manual labor were reduced to no more than 4 hours of computation time and minimal user interaction, while current-flow results for the automated method deviated by less than 27.9% from the manual method. Key facilitating factors are the addition of three tissue types (skull, scalp and air) to a state-of-the-art automated segmentation process, morphological processing to correct small but important segmentation errors, and automated placement of small electrodes based on easily reproducible standard electrode configurations. We anticipate that such an automated processing will become an indispensable tool to individualize transcranial direct current stimulation (tDCS) therapy.
基于电流的靶向经颅刺激需要精确的模型来描述从头皮电极到人类大脑的电流流动。个体大脑和头部的独特解剖结构导致不同受试者之间这种电流流动存在显著差异,因此需要精确的个性化头部模型。在此,我们报告了一种自动化处理流程,该流程从结构磁共振成像(MRI)开始计算头部的电流分布。自动化此过程的主要目的是减少目前手动分割、电极放置和有限元模型求解所需的大量工作。通过这样做,将数周的人工劳动减少到不超过4小时的计算时间和最少的用户交互,同时自动化方法的电流流动结果与手动方法的偏差小于27.9%。关键的促进因素包括在先进的自动分割过程中增加三种组织类型(颅骨、头皮和空气)、进行形态学处理以纠正小但重要的分割错误,以及基于易于重现的标准电极配置自动放置小电极。我们预计这种自动化处理将成为个性化经颅直流电刺激(tDCS)治疗不可或缺的工具。