# HNCcorr: A Novel Combinatorial Approach for Cell Identification in   Calcium-Imaging Movies

**Authors:** Quico Spaen, Dorit S. Hochbaum, Roberto As\'in-Ach\'a

arXiv: 1703.01999 · 2019-06-03

## TL;DR

HNCcorr is a new combinatorial algorithm for cell detection in calcium imaging movies that outperforms existing methods by providing optimal solutions through correlation-based grouping.

## Contribution

The paper introduces HNCcorr, a novel algorithm based on combinatorial optimization for improved cell identification in calcium imaging data.

## Key findings

- Achieves best results on Neurofinder benchmark.
- Guarantees an optimal solution to the cell detection problem.
- Provides transparent mapping from data to identified cells.

## Abstract

Calcium imaging has emerged as a workhorse method in neuroscience to investigate patterns of neuronal activity. Instrumentation to acquire calcium imaging movies has rapidly progressed and has become standard across labs. Still, algorithms to automatically detect and extract activity signals from calcium imaging movies are highly variable from~lab~to~lab and more advanced algorithms are continuously being developed. Here we present HNCcorr, a novel algorithm for cell identification in calcium imaging movies based on combinatorial optimization. The algorithm identifies cells by finding distinct groups of highly similar pixels in correlation space, where a pixel is represented by the vector of correlations to a set of other pixels. The HNCcorr algorithm achieves the best known results for the cell identification benchmark of Neurofinder, and guarantees an optimal solution to the underlying deterministic optimization model resulting in a transparent mapping from input data to outcome.

## Full text

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## Figures

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## References

31 references — full list in the complete paper: https://tomesphere.com/paper/1703.01999/full.md

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Source: https://tomesphere.com/paper/1703.01999