Chaturvedi Menorca, Hatz Florian, Gschwandtner Ute, Bogaarts Jan G, Meyer Antonia, Fuhr Peter, Roth Volker
Department of Neurology, University Hospital BaselBasel, Switzerland; Department of Mathematics and Computer Science, University of BaselBasel, Switzerland.
Department of Neurology, University Hospital Basel Basel, Switzerland.
Front Aging Neurosci. 2017 Jan 23;9:3. doi: 10.3389/fnagi.2017.00003. eCollection 2017.
To find out which Quantitative EEG (QEEG) parameters could best distinguish patients with Parkinson's disease (PD) with and without Mild Cognitive Impairment from healthy individuals and to find an optimal method for feature selection. Certain QEEG parameters have been seen to be associated with dementia in Parkinson's and Alzheimer's disease. Studies have also shown some parameters to be dependent on the stage of the disease. We wanted to investigate the differences in high-resolution QEEG measures between groups of PD patients and healthy individuals, and come up with a small subset of features that could accurately distinguish between the two groups. High-resolution 256-channel EEG were recorded in 50 PD patients (age 68.8 ± 7.0 year; female/male 17/33) and 41 healthy controls (age 71.1 ± 7.7 year; female/male 20/22). Data was processed to calculate the relative power in alpha, theta, delta, beta frequency bands across the different regions of the brain. Median, peak frequencies were also obtained and alpha1/theta ratios were calculated. Machine learning methods were applied to the data and compared. Additionally, penalized Logistic regression using LASSO was applied to the data in R and a subset of best-performing features was obtained. Random Forest and LASSO were found to be optimal methods for feature selection. A group of six measures selected by LASSO was seen to have the most effect in differentiating healthy individuals from PD patients. The most important variables were the theta power in temporal left region and the alpha1/theta ratio in the central left region. The penalized regression method applied was helpful in selecting a small group of features from a dataset that had high multicollinearity.
为了找出哪些定量脑电图(QEEG)参数能够最好地区分患有和未患有轻度认知障碍的帕金森病(PD)患者与健康个体,并找到一种最佳的特征选择方法。已发现某些QEEG参数与帕金森病和阿尔茨海默病中的痴呆症相关。研究还表明一些参数取决于疾病阶段。我们想研究PD患者组与健康个体之间高分辨率QEEG测量的差异,并提出一小部分能够准确区分两组的特征。对50名PD患者(年龄68.8±7.0岁;女性/男性17/33)和41名健康对照者(年龄71.1±7.7岁;女性/男性20/22)进行了256通道高分辨率脑电图记录。对数据进行处理,以计算大脑不同区域在α、θ、δ、β频段的相对功率。还获得了中位数、峰值频率,并计算了α1/θ比值。将机器学习方法应用于数据并进行比较。此外,在R中对数据应用了使用LASSO的惩罚逻辑回归,并获得了一组表现最佳的特征子集。发现随机森林和LASSO是特征选择的最佳方法。LASSO选择的一组六项测量指标在区分健康个体与PD患者方面效果最为显著。最重要的变量是左侧颞区的θ功率和左侧中央区的α1/θ比值。所应用的惩罚回归方法有助于从具有高多重共线性的数据集中选择一小部分特征。