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Unsupervised Clustering of Micro-Electrophysiological Signals for localization of Subthalamic Nucleus during DBS Surgery

机译:DBS手术中丘脑下核微定位的微电生理信号的无监督聚类。

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In this paper, an unsupervised machine learning technique is proposed to localize the Subthalamic Nucleus (STN) during deep brain stimulation (DBS) Surgery. DBS is one of most common treatments for advanced Parkinson's disease (PD). The purpose of this surgery is to permanently implant stimulation electrodes inside the STN to deliver electrical currents. It is clinically shown that DBS surgery can significantly reduce motor symptoms of PD (such as tremor). However, the outcome of this surgery is highly dependent on the location of the stimulating electrode. Since STN is a very small region inside the basal ganglia, accurate placement of the electrode is a challenging task for the surgical team. During DBS surgery, the team uses Micro-Electrode Recording (MER) of electrophysiological neural activities to intraoperatively track the location of electrodes and estimate the borders of the STN. In this work, we propose a composite unsupervised machine learning clustering approach that is capable of detecting the dorsal borders of the STN during DBS operation. For this, MER signals from 50 PD patients were recorded and used to validate the performance of the proposed method. Results show that the approach is capable of detecting the dorsal border of the STN in an online manner with an accuracy of 80% without using any supervised training.
机译:在本文中,提出了一种无监督的机器学习技术来在深部脑刺激(DBS)手术中定位丘脑底核(STN)。 DBS是晚期帕金森氏病(PD)的最常见治疗方法之一。该手术的目的是将刺激电极永久性植入STN内以输送电流。临床表明,DBS手术可以显着减轻PD的运动症状(如震颤)。但是,该手术的结果高度依赖于刺激电极的位置。由于STN是基底神经节内的一个非常小的区域,因此电极的准确放置对于外科手术团队来说是一项艰巨的任务。在DBS手术期间,该团队使用电生理神经活动的微电极记录(MER)来在术中跟踪电极的位置并估计STN的边界。在这项工作中,我们提出了一种复合无监督的机器学习聚类方法,该方法能够在DBS操作期间检测STN的背面边界。为此,记录了来自50名PD患者的MER信号,并将其用于验证所提出方法的性能。结果表明,该方法无需任何监督训练即可在线检测STN背边界,准确率达80%。

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