首页> 外文期刊>Journal of neural engineering >Functional Localization And Visualization Of The Subthalamic Nucleus From Microelectrode Recordings Acquired During Dbs Surgery With Unsupervised Machine Learning
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Functional Localization And Visualization Of The Subthalamic Nucleus From Microelectrode Recordings Acquired During Dbs Surgery With Unsupervised Machine Learning

机译:在无监督机器学习的Dbs手术中从微电极记录中获得的丘脑底核的功能定位和可视化

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摘要

Microelectrode recordings are a useful adjunctive method for subthalamic nucleus localization during deep brain stimulation surgery for Parkinson's disease. Attempts to quantitate and standardize this process, using single computational measures of neural activity, have been limited by variability in patient neurophysiology and recording conditions. Investigators have suggested that a multi-feature approach may be necessary for automated approaches to perform within acceptable clinical standards. We present a novel data visualization algorithm and several unique features that address these shortcomings. The algorithm extracts multiple computational features from the microelectrode neurophysiology and integrates them with tools from unsupervised machine learning. The resulting colour-coded map of neural activity reveals activity transitions that correspond to the anatomic boundaries of subcortical structures. Using these maps, a non-neurophysiologist is able to achieve sensitivities of 90% and 95% for STN entry and exit, respectively, to within 0.5 mm accuracy of the current gold standard. The accuracy of this technique is attributed to the multi-feature approach. This activity map can simplify and standardize the process of localizing the subthalamic nucleus (STN) for neurostimulation. Because this method does not require a stationary electrode for careful recording of unit activity for spike sorting, the length of the operation may be shortened.
机译:微电极记录是在帕金森氏病深层脑刺激手术期间丘脑下核定位的有用辅助方法。使用神经活动的单一计算方法来量化和标准化该过程的尝试已受到患者神经生理学和记录条件变化的限制。研究人员建议,对于在可接受的临床标准范围内执行自动操作的方法,可能需要使用多种功能的方法。我们提出了一种新颖的数据可视化算法和一些解决这些缺点的独特功能。该算法从微电极神经生理学中提取了多种计算特征,并将其与无监督机器学习中的工具集成在一起。所得的以彩色编码的神经活动图揭示了与皮质下结构的解剖边界相对应的活动转变。使用这些图谱,非神经生理学家能够将STN进入和退出的敏感度分别提高到90%和95%,准确度在当前金标准的0.5毫米内。该技术的准确性归因于多特征方法。此活动图可以简化和标准化用于神经刺激的丘脑底核(STN)定位过程。因为此方法不需要固定电极来仔细记录用于尖峰分拣的单元活动,所以可以缩短操作时间。

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