2023
DOI: 10.1186/s12859-023-05482-y
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A robust approach to 3D neuron shape representation for quantification and classification

Jiaxiang Jiang,
Michael Goebel,
Cezar Borba
et al.

Abstract: We consider the problem of finding an accurate representation of neuron shapes, extracting sub-cellular features, and classifying neurons based on neuron shapes. In neuroscience research, the skeleton representation is often used as a compact and abstract representation of neuron shapes. However, existing methods are limited to getting and analyzing “curve” skeletons which can only be applied for tubular shapes. This paper presents a 3D neuron morphology analysis method for more general and complex neuron shap… Show more

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