DocumentCode :
1365412
Title :
Graph-Laplacian Features for Neural Waveform Classification
Author :
Ghanbari, Yasser ; Papamichalis, Panos E. ; Spence, Larry
Author_Institution :
Dept. of Electr. Eng., Southern Methodist Univ., Dallas, TX, USA
Volume :
58
Issue :
5
fYear :
2011
fDate :
5/1/2011 12:00:00 AM
Firstpage :
1365
Lastpage :
1372
Abstract :
Analysis of extracellular recordings of neural action potentials (known as spikes) is highly dependent upon the accuracy of neural waveform classification, commonly referred to as spike sorting. Feature extraction is an important stage of this process because it can limit the quality of clustering that is performed in the feature space. Principal components analysis (PCA) is the most commonly used feature extraction method employed for neural spike recordings. To improve upon PCA´s feature extraction performance for neural spike sorting, we revisit the PCA procedure to analyze its weaknesses and describe an improved feature extraction method. This paper proposes a linear feature extraction technique that we call graph-Laplacian features, which simultaneously minimizes the graph Laplacian and maximizes variance. The algorithm´s performance is compared with PCA and a wavelet-coefficient-based feature extraction algorithm on simulated single-electrode neural data. A cluster-quality metric is proposed to quantitatively measure the algorithm performance. The results show that the proposed algorithm produces more compact and well-separated clusters compared to the other approaches.
Keywords :
feature extraction; medical signal processing; neurophysiology; optimisation; pattern clustering; principal component analysis; signal classification; PCA based feature extraction comparison; cluster quality metric; clustering quality; graph Laplacian minimisation; graph-Laplacian features; linear feature extraction technique; neural action potentials; neural spike sorting accuracy; neural waveform classification accuracy; principal components analysis; simulated single electrode neural data; spike extracellular recordings; variance maximisation; wavelet coefficient based feature extraction comparison; Clustering algorithms; Cost function; Eigenvalues and eigenfunctions; Feature extraction; Neurons; Principal component analysis; Symmetric matrices; Dimensionality reduction; feature extraction; neural action potentials; spike sorting; Action Potentials; Algorithms; Cluster Analysis; Models, Neurological; Neurons; Principal Component Analysis; Signal Processing, Computer-Assisted; Wavelet Analysis;
fLanguage :
English
Journal_Title :
Biomedical Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9294
Type :
jour
DOI :
10.1109/TBME.2010.2090349
Filename :
5613921
Link To Document :
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