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Automated detection and labeling of high-density EEG electrodes from structural MR images

机译:通过结构MR图像自动检测和标记高密度EEG电极

摘要

OBJECTIVE Accurate knowledge about the positions of electrodes in electroencephalography (EEG) is very important for precise source localizations. Direct detection of electrodes from magnetic resonance (MR) images is particularly interesting, as it is possible to avoid errors of co-registration between electrode and head coordinate systems. In this study, we propose an automated MR-based method for electrode detection and labeling, particularly tailored to high-density montages. APPROACH Anatomical MR images were processed to create an electrode-enhanced image in individual space. Image processing included intensity non-uniformity correction, background noise and goggles artifact removal. Next, we defined a search volume around the head where electrode positions were detected. Electrodes were identified as local maxima in the search volume and registered to the Montreal Neurological Institute standard space using an affine transformation. This allowed the matching of the detected points with the specific EEG montage template, as well as their labeling. Matching and labeling were performed by the coherent point drift method. Our method was assessed on 8 MR images collected in subjects wearing a 256-channel EEG net, using the displacement with respect to manually selected electrodes as performance metric. MAIN RESULTS Average displacement achieved by our method was significantly lower compared to alternative techniques, such as the photogrammetry technique. The maximum displacement was for more than 99% of the electrodes lower than 1 cm, which is typically considered an acceptable upper limit for errors in electrode positioning. Our method showed robustness and reliability, even in suboptimal conditions, such as in the case of net rotation, imprecisely gathered wires, electrode detachment from the head, and MR image ghosting. SIGNIFICANCE We showed that our method provides objective, repeatable and precise estimates of EEG electrode coordinates. We hope our work will contribute to a more widespread use of high-density EEG as a brain-imaging tool.
机译:目的关于脑电图(EEG)中电极位置的准确知识对于精确的源定位非常重要。从磁共振(MR)图像直接检测电极特别有趣,因为可以避免电极和头部坐标系之间的共配准误差。在这项研究中,我们提出了一种基于MR的自动化方法,用于电极检测和标记,特别适合于高密度蒙太奇。方法对解剖MR图像进行处理以在单个空间中创建电极增强图像。图像处理包括强度不均匀校正,背景噪声和护目镜伪影的去除。接下来,我们在检测电极位置的头部周围定义一个搜索体积。电极被确定为搜索量中的局部最大值,并使用仿射变换将其注册到蒙特利尔神经学研究所的标准空间。这样就可以将检测到的点与特定的EEG蒙太奇模板进行匹配,并对其进行标记。匹配和标记通过相干点漂移法进行。我们使用戴有256通道脑电图网的受试者采集的8张MR图像对我们的方法进行了评估,使用相对于手动选择的电极的位移作为性能指标。主要结果与摄影测量技术等替代技术相比,我们的方法实现的平均位移明显更低。对于超过99%的电极,最大位移小于1 cm,这通常被认为是电极定位误差的可接受上限。我们的方法即使在次优条件下也表现出鲁棒性和可靠性,例如在净旋转,导线不正确聚集,电极与头部脱离以及MR图像重影的情况下。重要性我们表明,我们的方法可提供客观,可重复和精确的EEG电极坐标估计。我们希望我们的工作将有助于更广泛地使用高密度脑电图作为脑成像工具。

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