Dendritic Spine Classification Based on Two-Photon Microscopic Images Using Sparse Representation

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Date

2016

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Publisher

Institute of Electrical and Electronics Engineers Inc.

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Green Open Access

No

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Abstract

Dendritic spines, membranous protrusions of neurons, are one of the few prominent characteristics of neurons. Their shapes change with variations in neuron activity. Spine shape analysis plays a significant role in inferring the inherent relationship between neuron activity and spine morphology variations. First step towards integrating rich shape information is to classify spines into four shape classes reported in literature. This analysis is currently performed manually due to the deficiency of fully automated and reliable tools, which is a time intensive task with subjective results. Availability of automated analysis tools can expedite the analysis process. In this paper, we compare ?1-norm-based sparse representation based classification approach to the least squares method, and the ?2-norm method for dendritic spine classification as well as to a morphological feature-based approach. On a dataset of 242 automatically segmented stubby and mushroom spines, ?1 representation with non-negativity constraint resulted in classification accuracy of 88.02%, which is the highest performance among the techniques considered here. © 2016 IEEE.

Description

24th Signal Processing and Communication Application Conference, SIU 2016 -- 16 May 2016 through 19 May 2016 -- 122605

Keywords

Classification, Dendritic Spines, least-squares, Neuroimaging, Sparse Representation, ?1, ?2, Classification (of information), Least squares approximations, Neuroimaging, Signal processing, Classification accuracy, Dendritic spine, Least Square, Least squares methods, Morphological features, Non-negativity constraints, Sparse representation, Sparse representation based classifications, Neurons

Fields of Science

0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology

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2016 24th Signal Processing and Communication Application Conference, SIU 2016 - Proceedings

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Start Page

1177

End Page

1180
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