Robustness of spike deconvolution for neuronal calcium imaging

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Abstract

Calciumimaging is a powerful method to record the activity of neural populations in many species, but inferring spike times fromcalcium signals is a challenging problem. We compared multiple approaches using multiple datasets with ground truth electrophysiology and found that simple non-negative deconvolution (NND) outperformed all other algorithms on out-of-sample test data. We introduce a novel benchmark applicable to recordings without electrophysiological ground truth, based on the correlation of responses to two stimulus repeats, and used this to show that unconstrained NND also outperformed the other algorithms when run on “zoomed out” datasets of ∼10,000 cell recordings from the visual cortex of mice of either sex. Finally, we show that NND-based methods match the performance of a supervised method based on convolutional neural networks while avoiding some of the biases of such methods, and at much faster running times. We therefore recommend that spikes be inferred from calcium traces using simple NND because of its simplicity, efficiency, and accuracy.

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Pachitariu, M., Stringer, C., & Harris, K. D. (2018). Robustness of spike deconvolution for neuronal calcium imaging. Journal of Neuroscience, 38(37), 7976–7985. https://doi.org/10.1523/jneurosci.3339-17.2018

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