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Nevin Manimala Statistics

Quantifying uncertainty in spikes estimated from calcium imaging data

Biostatistics. 2021 Oct 16:kxab034. doi: 10.1093/biostatistics/kxab034. Online ahead of print.

ABSTRACT

In recent years, a number of methods have been proposed to estimate the times at which a neuron spikes on the basis of calcium imaging data. However, quantifying the uncertainty associated with these estimated spikes remains an open problem. We consider a simple and well-studied model for calcium imaging data, which states that calcium decays exponentially in the absence of a spike, and instantaneously increases when a spike occurs. We wish to test the null hypothesis that the neuron did not spike-i.e., that there was no increase in calcium-at a particular timepoint at which a spike was estimated. In this setting, classical hypothesis tests lead to inflated Type I error, because the spike was estimated on the same data used for testing. To overcome this problem, we propose a selective inference approach. We describe an efficient algorithm to compute finite-sample $p$-values that control selective Type I error, and confidence intervals with correct selective coverage, for spikes estimated using a recent proposal from the literature. We apply our proposal in simulation and on calcium imaging data from the $texttt{spikefinder}$ challenge.

PMID:34654923 | DOI:10.1093/biostatistics/kxab034

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