Ardi Handojoseno A M, Gilat Moran, Tran Yvonne, Lewis Simon J G, Nguyen Hung T
Annu Int Conf IEEE Eng Med Biol Soc. 2016 Aug;2016:1599-1602. doi: 10.1109/EMBC.2016.7591018.
Gait Initiation Failure (GIF) is one of the most disabling gait disturbances seen in advanced Parkinson's disease (PD). Gait Initiation is a complex motor task that requires motor and cognitive processing to enable the correct selection, timing and scaling of movement. Failure to initiate the first step often precipitates falls and leads to significant morbidity. However, the brain mechanisms underlying GIF remain unknown. This study utilized an ambulatory electroencephalography (EEG) technique to investigate the brain dynamic changes underlying GIF and aims to detect the occurrence of GIF in four PD patients. We sought to determine whether episodes of GIF might be associated with a characteristic brain signal that could be detected by surface EEG. This preliminary investigation analyzed the EEG signals through power spectra density (PSD) and centroid frequency (CF) to show that the GIF episodes were associated with significant increases in the high beta band (21-38Hz) across the central, frontal, occipital and parietal EEG sites. By implementing PSD and CF as input features with two-layer Back Propagation neural networks as a classifier, the proposed system was able to detect GIF events with a classification performance of 84.27% sensitivity and 84.80% accuracy. This is the first study to show cortical dynamic changes associated with GIF in Parkinson's disease, providing valuable information to enhance the performance of future GIF detection that could be translated into clinical practice.
步态起始失败(GIF)是晚期帕金森病(PD)中最致残的步态障碍之一。步态起始是一项复杂的运动任务,需要运动和认知处理来实现运动的正确选择、定时和缩放。无法迈出第一步往往会导致跌倒,并导致严重的发病率。然而,GIF背后的脑机制仍然未知。本研究利用动态脑电图(EEG)技术来研究GIF背后的脑动态变化,旨在检测4例帕金森病患者中GIF的发生情况。我们试图确定GIF发作是否可能与一种可通过表面脑电图检测到的特征性脑信号有关。这项初步研究通过功率谱密度(PSD)和质心频率(CF)分析了脑电图信号,结果表明,GIF发作与中央、额叶、枕叶和顶叶脑电图部位的高β频段(21-38Hz)显著增加有关。通过将PSD和CF作为输入特征,并使用两层反向传播神经网络作为分类器,所提出的系统能够检测GIF事件,分类性能的灵敏度为84.27%,准确率为84.80%。这是第一项显示帕金森病中与GIF相关的皮质动态变化的研究,为提高未来GIF检测性能提供了有价值的信息,这些信息可转化为临床实践。