OPTIMIZED NEURON TRACING USING POST HOC REANALYSIS

Sara Azzouz,Logan A Walker, Alexandra Doerner, Kellie Geisel,Arianna K Rodriguez-Rivera,Ye Li,Douglas H Roossien,Dawen Cai

biorxiv(2022)

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摘要
Over the last decade, the advances in Brainbow labeling allowed labeling hundreds of neurons with distinct colors in the same field of view of a brain [1, 2]. Reconstruction (or "tracing") of the 3D structures of these images has been enabled by a growing set of software tools for automatic and manual annotation. It is common, however, to have errors introduced by heuristics used by tracing software, namely that they assume the "best" path is the highest intensity one, a more pertinent issue when dealing with multicolor microscope images. Here, we report nCorrect, an algorithm for correcting this error by reanalyzing previously created neuron traces to produce more physiologically-relevant ones. Specifically, we use a four dimensional minimization algorithm to identify a more-optimal reconstruction of the image, allowing us to better take advantage of existing manual tracing results. We define a new metric (hyperspectral cosine similarity) for describing the similarity of different neuron colors to each other. Our code is available in an open source license and forms the basis for future improved neuron tracing software. ### Competing Interest Statement The authors have declared no competing interest.
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关键词
Neurons, Brainbow, Microscopy
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