Feature extraction and unsupervised classification of neural population reward signals for reinforcement based BMI.

EMBC(2013)

引用 8|浏览27
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摘要
New reinforcement based paradigms for building adaptive decoders for Brain-Machine Interfaces involve using feedback directly from the brain. In this work, we investigated neuromodulation in the Nucleus Accumbens (reward center) during a multi-target reaching task and investigated how to extract a reinforcing or non-reinforcing signal that could be used to adapt a BMI decoder. One of the challenges in brain-driven adaptation is how to translate biological neuromodulation into a single binary signal from the distributed representation of the neural population, which may encode many aspects of reward. To extract these signals, feature analysis and clustering were used to identify timing and coding properties of a user's neuromodulation related to reward perception. First, Principal Component Analysis (PCA) of reward related neural signals was used to extract variance in the firing and the optimum time correlation between the neural signal and the reward phase of the task. Next, k-means clustering was used to separate data into two classes.
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关键词
pattern clustering,nonreinforcing signal extraction,neurophysiology,coding properties,timing identification,user neuromodulation,brain-computer interfaces,reinforcement based paradigm,data classification,bmi decoder,k-means clustering,reward related neural signal,medical signal processing,adaptive decoder,feature analysis,single binary signal,reinforcement based bmi,clustering method,pca,feedback,neural population distributed representation,feature extraction,multitarget reaching task,neural population reward signal,biological neuromodulation,brain-driven adaptation,signal classification,brain feedback,nucleus accumbens,optimum time correlation,brain-machine interface,principal component analysis,reward center,decoding,variance extraction,reward perception,firing time correlation,biomimetics,unsupervised classification,task reward phase,brain computer interfaces,brain machine interface,k means clustering
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