Single trial behavioral task classification using subthalamic nucleus local field potential signals.

EMBC(2014)

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摘要
Deep Brain Stimulation (DBS) has been a successful technique for alleviating Parkinson's disease (PD) symptoms especially for whom drug therapy is no longer efficient. Existing DBS therapy is open-loop, providing a time invariant stimulation pulse train that is not customized to the patient's current behavioral task. By customizing this pulse train to the patient's current task the side effects may be suppressed. This paper introduces a method for single trial recognition of the patient's current task using the local field potential (LFP) signals. This method utilizes wavelet coefficients as features and support vector machine (SVM) as the classifier for recognition of a selection of behaviors: speech, motor, and random. The proposed method is 82.4% accurate for the binary classification and 73.2% for classifying three tasks. These algorithms will be applied in a closed loop feedback control system to optimize DBS parameters to the patient's real time behavioral goals.
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关键词
binary classification,single trial recognition,medical control systems,subthalamic nucleus local field potential signals,bioelectric potentials,deep brain stimulation,local field potential signals,medical signal processing,drug therapy,recognition classifier,dbs parameters,svm,support vector machine,behavioral goals,wavelet coefficients,parkinson's disease symptoms,signal classification,brain,dbs therapy,parkinson's disease,wavelet transform,loop feedback control system,closed loop systems,motor,speech,support vector machines,patient treatment,open loop systems,single trial behavioral task classification,time invariant stimulation pulse train
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