3D dendritic spine segmentation using nonparametric shape priors
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Date
2017
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Volume Title
Publisher
Institute of Electrical and Electronics Engineers Inc.
Open Access Color
Green Open Access
No
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Publicly Funded
No
Abstract
Analyzing morphological and structural changes of dendritic spines in 2-photon microscopy images in time is important for neuroscience researchers. Correct segmentation of dendritic spines is an important step of developing robust and reliable automatic tools for such analysis. In this paper, we propose an approach for segmentation of 3D dendritic spines using nonparametric shape priors. The proposed method learns the prior distribution of shapes through Parzen density estimation on the training set of shapes. Then, the posterior distribution of shapes is obtained by combining the learned prior distribution with a data term in a Bayesian framework. Finally, the segmentation result that maximizes the posterior is found using active contours. Experimental results demonstrate that using nonparametric shape priors leads to better 3D dendritic spine segmentation results. © 2017 IEEE.
Description
25th Signal Processing and Communications Applications Conference, SIU 2017 -- 15 May 2017 through 18 May 2017 -- 128703
Keywords
3D dendritic spine segmentation, level sets, nonparametric shape priors, Parzen density estimator, Image segmentation, Bayesian frameworks, Dendritic spine, Level Set, Parzen density estimation, Parzen density estimator, Posterior distributions, Segmentation results, Shape priors, Signal processing
Fields of Science
0301 basic medicine, 0303 health sciences, 03 medical and health sciences
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2017 25th Signal Processing and Communications Applications Conference, SIU 2017
Volume
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1
End Page
4
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