Leveraging Tools from Autonomous Navigation for Rapid, Robust Neuron Connectivity

Author:

Drenkow Nathan,Joyce Justin,Matelsky Jordan,Larabi Reem,Heiko Jennifer,Kleissas Dean,Wester Brock,Johnson Erik C.,Gray-Roncal William

Abstract

AbstractAs biological imaging datasets continue to grow in size, extracting information from large image volumes presents a computationally intensive challenge. State-of-the-art algorithms are almost entirely dominated by the use of convolutional neural network approaches that may be diffcult to run at scale given schedule, cost, and resource limitations. We demonstrate a novel solution for high-resolution electron microscopy brain image volumes that permits the identification of individual neurons and synapses. Instead of conventional approaches whereby voxels are labelled according to the neuron or neuron segment to which they belong, we instead focus on extracting the underlying brain graph represented by synaptic connections between individual neurons while also identifying key features like skeleton similarity and path length. This graph represents a critical step and scaffold for understanding the structure of neuronal circuitry. Our approach recasts the segmentation problem to one of path-finding between keypoints (i.e., connectivity) in an information sharing framework using virtual agents. We create a family of sensors which follow local decision-making rules that perform computationally cheap operations on potential fields to perform tasks such as avoiding cell membranes and finding synapses. These enable a swarm of virtual agents to effciently and robustly traverse three-dimensional datasets, create a sparse segmentation of pathways, and capture connectivity information. We achieve results that meet or exceed state-of-the-art performance at a substantially lower computational cost. This tool offers a categorically different approach to connectome estimation that can augment how we extract connectivity information at scale. Our method is generalizable and may be extended to biomedical imaging problems such as tracing the bronchial trees in lungs or road networks in natural images.

Publisher

Cold Spring Harbor Laboratory

Reference13 articles.

1. Anisotropic EM Segmentation by 3D Affinity Learning and Agglomeration;arXiv,2017

2. Graph-based active learning of agglomeration (GALA): a Python library to segment 2D and 3D neuroimages;Frontiers in neuroinformatics,2014

3. High-precision automated reconstruction of neurons with flood-filling networks;Nature methods,2018

4. Cofields: a physically inspired approach to motion coordination;IEEE Pervasive Computing,2004

5. Chalmers, Robert and Scheidt, David and Neighoff, Todd and Witwicki, S and Bamberger, Robert , “Cooperating unmanned vehicles,” in AIAA 1st Intelligent Systems Technical Conference, p. 6252.

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