Department of Cybernetics, Czech Technical University, Prague, Czech Republic.
J Neurosci Methods. 2012 Aug 15;209(2):320-30. doi: 10.1016/j.jneumeth.2012.06.027. Epub 2012 Jul 4.
This paper explores the development of multi-feature classification techniques used to identify tremor-related characteristics in the Parkinsonian patient. Local field potentials were recorded from the subthalamic nucleus and the globus pallidus internus of eight Parkinsonian patients through the implanted electrodes of a Deep brain stimulation (DBS) device prior to device internalization. A range of signal processing techniques were evaluated with respect to their tremor detection capability and used as inputs in a multi-feature neural network classifier to identify the activity of Parkinsonian tremor. The results of this study show that a trained multi-feature neural network is able, under certain conditions, to achieve excellent detection accuracy on patients unseen during training. Overall the tremor detection accuracy was mixed, although an accuracy of over 86% was achieved in four out of the eight patients.
本文探讨了多特征分类技术的发展,这些技术用于识别帕金森病患者震颤相关的特征。通过植入深部脑刺激(DBS)设备的电极,在设备内化之前,从八位帕金森病患者的丘脑底核和苍白球 internus 记录局部场电位。评估了一系列信号处理技术,以评估其震颤检测能力,并将其作为输入输入多特征神经网络分类器,以识别帕金森震颤的活动。这项研究的结果表明,在某些条件下,经过训练的多特征神经网络能够在训练过程中未见到的患者中实现出色的检测准确性。总体而言,震颤检测的准确性参差不齐,尽管在八位患者中的四位患者中达到了 86%以上的准确率。