Complete Neuron Reconstruction Based on Branch Confidence

Brain Sci. 2024 Apr 19;14(4):396. doi: 10.3390/brainsci14040396.

Abstract

In the past few years, significant advancements in microscopic imaging technology have led to the production of numerous high-resolution images capturing brain neurons at the micrometer scale. The reconstructed structure of neurons from neuronal images can serve as a valuable reference for research in brain diseases and neuroscience. Currently, there lacks an accurate and efficient method for neuron reconstruction. Manual reconstruction remains the primary approach, offering high accuracy but requiring significant time investment. While some automatic reconstruction methods are faster, they often sacrifice accuracy and cannot be directly relied upon. Therefore, the primary goal of this paper is to develop a neuron reconstruction tool that is both efficient and accurate. The tool aids users in reconstructing complete neurons by calculating the confidence of branches during the reconstruction process. The method models the neuron reconstruction as multiple Markov chains, and calculates the confidence of the connections between branches by simulating the reconstruction artifacts in the results. Users iteratively modify low-confidence branches to ensure precise and efficient neuron reconstruction. Experiments on both the publicly accessible BigNeuron dataset and a self-created Whole-Brain dataset demonstrate that the tool achieves high accuracy similar to manual reconstruction, while significantly reducing reconstruction time.

Keywords: Markov chain; analysis of neuronal features; confidence of branch; image processing; neuron reconstruction.

Grants and funding

This work was supported by the Guangdong High Level Innovation Research Institute (2021B0909050004), the Key-Area Research and Development Program of Guangdong Province (2021B0909060002), and the National Natural Science Foundation of China (32071367).