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首页> 外文期刊>NeuroImage >Quantitatively validating the efficacy of artifact suppression techniques to study the cortical consequences of deep brain stimulation with magnetoencephalography
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Quantitatively validating the efficacy of artifact suppression techniques to study the cortical consequences of deep brain stimulation with magnetoencephalography

机译:定量验证工件抑制技术的效果,以研究磁性脑图的深脑刺激皮质后果

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Deep brain stimulation (DBS) is an established and effective treatment for several movement disorders and is being developed to treat a host of neuropsychiatric disorders including epilepsy, chronic pain, obsessive compulsive disorder, and depression. However, the neural mechanisms through which DBS produces therapeutic benefits, and in some cases unwanted side effects, in these disorders are only partially understood. Non-invasive neuroimaging techniques that can assess the neural effects of active stimulation are important for advancing our understanding of the neural basis of DBS therapy. Magnetoencephalography (MEG) is a safe, passive imaging modality with relatively high spatiotemporal resolution, which makes it a potentially powerful method for examining the cortical network effects of DBS. However, the degree to which magnetic artifacts produced by stimulation and the associated hardware can be suppressed from MEG data, and the comparability between signals measured during DBS-on and DBS-off conditions, have not been fully quantified. The present study used machine learning methods in conjunction with a visual perception task, which should be relatively unaffected by DBS, to quantify how well neural data can be salvaged from artifact contamination introduced by DBS and how comparable DBS-on and DBS-off data are after artifact removal. Machine learning also allowed us to determine whether the spatiotemporal pattern of neural activity recorded during stimulation are comparable to those recorded when stimulation is off. The spatiotemporal patterns of visually evoked neural fields could be accurately classified in all 8 patients with DBS implants during both DBS-on and DBS-off conditions and performed comparably across those two conditions. Further, the classification accuracy for classifiers trained on the spatiotemporal patterns evoked during DBS-on trials and applied to DBS-off trials, and vice versa, were similar to that of the classifiers trained and tested on either trial type, demonstrating the comparability of these patterns across conditions. Together, these results demonstrate the ability of MEG preprocessing techniques, like temporal signal space separation, to salvage neural data from recordings contaminated with DBS artifacts and validate MEG as a powerful tool to study the cortical consequences of DBS.
机译:深脑刺激(DBS)是对几种运动障碍的建立有效的治疗,并且正在开发治疗一系列神经精神障碍,包括癫痫,慢性疼痛,强迫症和抑郁症。然而,DBS产生治疗性益处的神经机制,并且在某些情况下,在这些疾病中仅部分地被局部地理解。可以评估积极刺激神经效应的非侵袭性神经影像技术对于推进我们对DBS治疗的神经基础的理解是重要的。脑磁图(MEG)是一种安全的,被动的成像模态具有相对高的时空分辨率,这使得它用于检查DBS的皮质网络效应的潜在有力方法。然而,可以从MEG数据中抑制刺激产生的磁性伪像和相关硬件的程度,并且在DBS-on和DBS-OFF条件期间测量的信号之间的可比性尚未完全量化。本研究使用了机器学习方法与视觉感知任务结合,这应该相对不受DBS的影响,以量化神经数据可以从DB引入的工件污染中挽救,以及如何相当的DBS-ON和DBS-OFF数据删除伪影后。机器学习还允许我们确定在刺激期间记录的神经活动的时空模式是否与刺激关闭时记录的那些相当。在DBS-ON和DBS-OFF条件下,在所有8例DBS植入患者中可以准确地分类视觉上诱发神经领域的时空模式,并且在这两个条件下进行比较。此外,对在DBS-ON试验期间诱发的时空模式的分类器的分类准确度并应用于DBS-OFF试验,反之亦然,反之亦然类似于培训的分类器和在任一试验类型上测试的分类器,证明了这些的可比性跨条件的模式。这些结果一起展示了MEG预处理技术,如时间信号空间分离,从被DBS伪影污染的录音中挽救神经数据并验证MEG作为研究DBS的皮质后果的强大工具。

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