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Automated Machine Learning for EEG-Based Classification of Parkinson’s Disease Patients

机译:自动化机器学习对基于帕金森病患者的脑电分类

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The treatment of Parkinson’s Disease (PD) with Deep Brain Stimulation (DBS) can provide a constant level of motor functioning. Several patients, however, may suffer from postoperative cognitive deterioration. The DBS screening therefore includes an assessment of cognitive functioning prior to DBS surgery. However, these assessments may be influenced by factors such as fatigue or motivation and there is a need for novel biomarkers of cognitive dysfunction to complement the DBS screening. Electroencephalography (EEG) has been previously suggested to identify potential cognitive impairment in PD patients and may have utility during the DBS screening. A limited set of biomarkers (features) from the EEG has been identified for this purpose. Finding new biomarkers is time-consuming and there is no driving hypothesis on which new biomarkers may be important. Based on EEG time series of 40 DBS candidates, this research focuses on automated machine learning techniques to develop EEG-based algorithms for the evaluation of the cognitive function of PD patients. The automated pipeline consists of feature extraction, feature selection, modelling algorithm and optimization. With this approach we extract 794 features from each of the 21 EEG channels which results in a massive feature space. From this feature space the most significant features are selected and used for modelling. The hyperparameters of the model are optimized by a Bayesian technique as part of the automated approach. Aside from the automatically computed features, we also explore the use of features commonly used during clinical evaluation of the EEG, with the result that the model based on automatically computed features achieves a significant higher accuracy (84.0%). The newly identified features are potentially new biomarkers. We used the knowledge gathered from our automated approach to build a hand-crafted model resulting in an accuracy of 91.0%.
机译:具有深脑刺激(DBS)的帕金森病(PD)的治疗可以提供恒定的电动机功能。然而,几个患者可能患有术后认知恶化。因此,DBS筛选包括在DBS手术之前对认知功能的评估。然而,这些评估可能受到疲劳或动机等因素的影响,并且需要具有认知功能障碍的新型生物标志物,以补充DBS筛选。先前已经提出了脑电图(EEG)以识别PD患者的潜在认知障碍,并且在DBS筛查期间可能具有效用。为此目的鉴定了来自脑电图的有限一组生物标志物(特征)。寻找新的生物标志物是耗时的,并且没有驾驶假设,新的生物标志物可能很重要。基于EEG时间序列的40个DBS候选者,本研究侧重于自动化机器学习技术,以开发基于EEG的算法,以评估PD患者的认知功能。自动化管道由特征提取,特征选择,建模算法和优化组成。利用这种方法,我们从21个EEG通道中的每一个提取794个功能,这导致了大量特征空间。从此功能空间,选择最重要的功能并用于建模。该模型的超级参数由贝叶斯技术优化,作为自动方法的一部分。除了自动计算的功能之外,我们还探讨了eeg临床评估过程中常用的功能的使用,结果是基于自动计算功能的模型实现了显着更高的精度(84.0%)。新发现的特征是潜在的新生物标志物。我们利用来自我们自动化方法收集的知识来构建手工制作的模型,从而精确为91.0%。

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