Abstract

BackgroundReconstruction of neuron anatomy structure is a challenging and important task in neuroscience. However, few algorithms can automatically reconstruct the full structure well without manual assistance, making it essential to develop new methods for this task.MethodsThis paper introduces a new pipeline for reconstructing neuron anatomy structure from 3-D microscopy image stacks. This pipeline is initialized with a set of seeds that were detected by our proposed Sliding Volume Filter (SVF), given a non-circular cross-section of a neuron cell. Then, an improved open curve snake model combined with a SVF external force is applied to trace the full skeleton of the neuron cell. A radius estimation method based on a 2D sliding band filter is developed to fit the real edge of the cross-section of the neuron cell. Finally, a surface reconstruction method based on non-parallel curve networks is used to generate the neuron cell surface to finish this pipeline.ResultsThe proposed pipeline has been evaluated using publicly available datasets. The results show that the proposed method achieves promising results in some datasets from the DIgital reconstruction of Axonal and DEndritic Morphology (DIADEM) challenge and new BigNeuron project.ConclusionThe new pipeline works well in neuron tracing and reconstruction. It can achieve higher efficiency, stability and robustness in neuron skeleton tracing. Furthermore, the proposed radius estimation method and applied surface reconstruction method can obtain more accurate neuron anatomy structures.Electronic supplementary materialThe online version of this article (doi:10.1186/s12859-015-0780-0) contains supplementary material, which is available to authorized users.

Highlights

  • Reconstruction of neuron anatomy structure is a challenging and important task in neuroscience

  • We propose a new 3D seed detection method based on Sliding Volume Filter (SVF) to initialize our framework, and we designed an open curve snake model combined with a SVF external force for centerline extraction and tracing

  • We have developed a new neuron tracing framework, which is based on a sliding filter

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Summary

Introduction

Reconstruction of neuron anatomy structure is a challenging and important task in neuroscience. Few algorithms can automatically reconstruct the full structure well without manual assistance, making it essential to develop new methods for this task. Neuron morphology and structure information is critical for neuroscience research. Reconstructing the entire anatomy structure of a neuron is an essential task in the field of neuron informatics [1, 2]. Reconstructing the anatomy structure of a neuron artificially is labor intensive. Efficient, advanced methods for anatomy structure reconstruction of neurons are greatly demanded in this field. The reconstructed digital neuron structure, including axons and dendrites as well as thickness information, can be used in conjunction with

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