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Adaptive learning of behavioral tasks for patients with Parkinson's disease using signals from deep brain stimulation

机译:利用深部脑刺激信号自适应学习帕金森氏病患者的行为任务

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We propose adaptive learning methods for identifying different behavioral tasks of patients with Parkinson's disease (PD). The methods use local field potential (LFP) signals that were collected during Deep Brain Stimulation (DBS) implantation surgeries. Using time-frequency signal processing methods, features are first extracted and then clustered in the feature space using two different methods. The first method requires training and uses a hybrid model that combines support vector machines and hidden Markov models. The second method does not require any a priori information and uses Dirichlet process Gaussian mixture models. Using the DBS acquired signals, we demonstrate the performance of both methods in clustering different behavioral tasks of PD patients and discuss the advantages of each method under different conditions.
机译:我们提出自适应学习方法,以识别帕金森氏病(PD)患者的不同行为任务。这些方法使用在深部脑刺激(DBS)植入手术中收集的局部场电势(LFP)信号。使用时频信号处理方法,首先提取特征,然后使用两种不同的方法将其聚集在特征空间中。第一种方法需要训练,并使用结合了支持向量机和隐马尔可夫模型的混合模型。第二种方法不需要任何先验信息,而是使用Dirichlet过程高斯混合模型。使用DBS采集的信号,我们演示了两种方法在PD患者不同行为任务聚类中的性能,并讨论了每种方法在不同条件下的优势。

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