Departments of Neurology and of Clinical Research, University Hospital of Basel, Basel, Switzerland.
Department of Mathematics and Computer Science, University of Basel, Basel, Switzerland.
Sci Rep. 2023 Mar 29;13(1):5093. doi: 10.1038/s41598-023-32345-6.
The aim of the study is to identify the dynamic change pattern of EEG to predict cognitive decline in patients with Parkinson's disease. Here we demonstrate that the quantification of synchrony-pattern changes across the scalp, measured using electroencephalography (EEG), offers an alternative approach of observing an individual's functional brain organization. This method, called "Time-Between-Phase-Crossing" (TBPC), is based on the same phenomenon as the phase-lag-index (PLI); it also considers intermittent changes in the signals of phase differences between pairs of EEG signals, but additionally analyzes dynamic connectivity changes. We used data from 75 non-demented Parkinson's disease patients and 72 healthy controls, who were followed over a period of 3 years. Statistics were calculated using connectome-based modeling (CPM) and receiver operating characteristic (ROC). We show that TBPC profiles, via the use of intermittent changes in signals of analytic phase differences of pairs of EEG signals, can be used to predict cognitive decline in Parkinson's disease (p < 0.05).
本研究旨在确定 EEG 的动态变化模式,以预测帕金森病患者的认知能力下降。在这里,我们证明了使用脑电图(EEG)测量的跨头皮同步模式变化的量化提供了观察个体功能大脑组织的另一种方法。这种方法称为“相位交叉时间间隔”(TBPC),它基于与相位滞后指数(PLI)相同的现象;它还考虑了 EEG 信号之间的相位差信号的间歇性变化,但另外还分析了动态连通性变化。我们使用了来自 75 名非痴呆帕金森病患者和 72 名健康对照者的数据,这些患者在 3 年内接受了随访。使用连接组建模(CPM)和接收者操作特征(ROC)进行了统计计算。我们表明,通过使用对 EEG 信号对的分析相位差信号的间歇性变化,TBPC 图谱可用于预测帕金森病的认知能力下降(p<0.05)。