Applied Neuroscience Laboratory, Department of Physical Therapy, Universidade Federal de Pernambuco, w/n Jornalista Aníbal Fernandes Avenue, Recife, PE, 50740-560, Brazil.
Post-graduation Program of Neuropsychiatry and Behavioral Sciences, Universidade Federal de Pernambuco, Recife, PE, Brazil.
J Neural Transm (Vienna). 2022 Dec;129(12):1447-1461. doi: 10.1007/s00702-022-02552-y. Epub 2022 Nov 6.
To assess the cortical activity in people with Parkinson's disease (PwP) with different motor phenotype (tremor-dominant-TD and postural instability and gait difficulty-PIGD) and to compare with controls. Twenty-four PwP (during OFF and ON medication) and twelve age-/sex-/handedness-matched healthy controls underwent electrophysiological assessment of spectral ratio analysis through electroencephalography (EEG) at resting state and during the hand movement. We performed a machine learning method with 35 attributes extracted from EEG. To verify the efficiency of the proposed phenotype-based EEG classification the random forest and random tree were tested (performed 30 times, using a tenfolds cross validation in Weka environment). The analyses based on phenotypes indicated a slowing down of cortical activity during OFF medication state in PwP. PD with TD phenotype presented this characteristic at resting and the individuals with PIGD presented during the hand movement. During the ON state, there is no difference between phenotypes at resting nor during the hand movement. PD phenotypes may influence spectral activity measured by EEG. Random forest machine learning provides a slightly more accurate, sensible and specific approach to distinguish different PD phenotypes. The phenotype of PD might be a clinical characteristic that could influence cortical activity.
评估具有不同运动表型(震颤为主型 TD 和姿势不稳与步态困难型 PIGD)的帕金森病患者(PwP)的皮质活动,并与对照组进行比较。24 名 PwP(在药物治疗的 OFF 和 ON 期)和 12 名年龄、性别、惯用手匹配的健康对照者接受了脑电图(EEG)静息状态和手部运动期间的频谱比分析的电生理评估。我们使用从 EEG 中提取的 35 个属性进行了机器学习方法。为了验证基于表型的 EEG 分类的效率,我们测试了随机森林和随机树(在 Weka 环境中进行了 30 次,使用 10 折交叉验证)。基于表型的分析表明,PwP 在药物治疗的 OFF 期皮质活动减慢。TD 表型的 PD 在静息和 PIGD 个体在手部运动时呈现出这种特征。在 ON 状态下,在静息或手部运动期间,表型之间没有差异。PD 表型可能会影响 EEG 测量的频谱活动。随机森林机器学习提供了一种更准确、敏感和特异性的方法来区分不同的 PD 表型。PD 的表型可能是影响皮质活动的临床特征。