Title
SANTIAGO: Spine Association for Neuron Topology Improvement and Graph Optimization.
Abstract
Developing automated and semi-automated solutions for reconstructing wiring diagrams of the brain from electron micrographs is important for advancing the field of connectomics. While the ultimate goal is to generate a graph of neuron connectivity, most prior automated methods have focused on volume segmentation rather than explicit graph estimation. In these approaches, one of the key, commonly occurring error modes is dendritic shaft-spine fragmentation. posit that directly addressing this problem of connection identification may provide critical insight into estimating more accurate brain graphs. To this end, we develop a network-centric approach motivated by biological priors image grammars. We build a computer vision pipeline to reconnect fragmented spines to their parent dendrites using both fully-automated and semi-automated approaches. Our experiments show we can learn valid connections despite uncertain segmentation paths. We curate the first known reference dataset for analyzing the performance of various spine-shaft algorithms and demonstrate promising results that recover many previously lost connections. Our automated approach improves the local subgraph score by more than four times and the full graph score by 60 percent. These data, results, and evaluation tools are all available to the broader scientific community. This reframing of the connectomics problem illustrates a semantic, biologically inspired solution to remedy a major problem with neuron tracking.
Year
Venue
Field
2016
arXiv: Computer Vision and Pattern Recognition
Rule-based machine translation,Graph,Connectomics,Graph optimization,Pattern recognition,Segmentation,Computer science,Artificial intelligence,Prior probability,Machine learning
DocType
Volume
Citations 
Journal
abs/1608.02307
0
PageRank 
References 
Authors
0.34
5
4
Name
Order
Citations
PageRank
William Gray Roncal1388.25
Colin Lea21285.63
Akira Baruah300.34
Hager Gregory D41946159.37