CVLGNEMLMar 20, 2020

Detection and skeletonization of single neurons and tracer injections using topological methods

arXiv:2004.02755v1
Originality Highly original
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This work addresses the challenge of accurately representing and summarizing neuronal structures for neuroscientists, offering a more informative alternative to traditional connectivity matrices.

The paper tackled the problem of analyzing tree-like neuronal shapes from brain image data by introducing Discrete Morse Theory methods for skeletonization and summarizing tracer injections, achieving over 10% improvements in precision and faster proofreading compared to state-of-the-art non-topological methods.

Neuroscientific data analysis has traditionally relied on linear algebra and stochastic process theory. However, the tree-like shapes of neurons cannot be described easily as points in a vector space (the subtraction of two neuronal shapes is not a meaningful operation), and methods from computational topology are better suited to their analysis. Here we introduce methods from Discrete Morse (DM) Theory to extract the tree-skeletons of individual neurons from volumetric brain image data, and to summarize collections of neurons labelled by tracer injections. Since individual neurons are topologically trees, it is sensible to summarize the collection of neurons using a consensus tree-shape that provides a richer information summary than the traditional regional 'connectivity matrix' approach. The conceptually elegant DM approach lacks hand-tuned parameters and captures global properties of the data as opposed to previous approaches which are inherently local. For individual skeletonization of sparsely labelled neurons we obtain substantial performance gains over state-of-the-art non-topological methods (over 10% improvements in precision and faster proofreading). The consensus-tree summary of tracer injections incorporates the regional connectivity matrix information, but in addition captures the collective collateral branching patterns of the set of neurons connected to the injection site, and provides a bridge between single-neuron morphology and tracer-injection data.

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