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Probabilistic Model of Neuronal Background Activity in Deep Brain Stimulation Trajectories

机译:脑深部刺激轨迹中神经元背景活动的概率模型

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We present a probabilistic model for classification of micro-EEG signals, recorded during deep brain stimulation surgery for Parkinson's disease. The model uses parametric representation of neuronal background activity, estimated using normalized root-mean-square of the signal. Contrary to existing solutions using Bayes classifiers or Hidden Markov Models, our model uses smooth state-transitions represented by sigmoid functions, which ensures flexible model structure in combination with general optimizers for parameter estimation and model fitting. The presented model can easily be extended with additional parameters and constraints and is intended for fitting of a 3D anatomical model to micro-EEG data in further perspective. In an evaluation on 260 trajectories from 61 patients, the model showed classification accuracy 90.0%, which was comparable to existing solutions. The evaluation proved the model successful in target identification and we conclude that its use for more complex tasks in the area of DBS planning and modeling is feasible.
机译:我们提出了一种微脑电信号分类的概率模型,该模型在帕金森氏病的深部脑刺激手术中记录。该模型使用神经元背景活动的参数表示,该信号表示是使用信号的标准化均方根来估计的。与使用贝叶斯分类器或隐马尔可夫模型的现有解决方案相反,我们的模型使用以S形函数表示的平滑状态转换,从而确保了灵活的模型结构,并结合了用于参数估计和模型拟合的通用优化器。可以通过附加的参数和约束轻松扩展呈现的模型,并从更进一步的角度将3D解剖模型拟合到微型EEG数据。在对来自61位患者的260条轨迹的评估中,该模型显示了90.0%的分类准确度,与现有解决方案相当。评估证明了该模型在目标识别中的成功,并且我们得出结论,将其用于DBS规划和建模领域中的更复杂任务是可行的。

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