Fast Nonconvex Deconvolution of Calcium Imaging Data
نویسندگان
چکیده
Calcium imaging data promises to transform the field of neuroscience by making it possible to record from large populations of neurons simultaneously. However, determining the exact moment in time at which a neuron spikes, from a calcium imaging data set, amounts to a non-trivial deconvolution problem which is of critical importance for downstream analyses. While a number of formulations have been proposed for this task in the recent literature, in this paper we focus on a formulation recently proposed in Jewell and Witten (2017) which has shown initial promising results. However, this proposal is slow to run on fluorescence traces of hundreds of thousands of timesteps. Here we develop a much faster online algorithm for solving the optimization problem of Jewell and Witten (2017) that can be used to deconvolve a fluorescence trace of 100,000 timesteps in less than a second. Furthermore, this algorithm overcomes a technical challenge of Jewell and Witten (2017) by avoiding the occurrence of so-called"negative"spikes. We demonstrate that this algorithm has superior performance relative to existing methods for spike deconvolution on calcium imaging datasets that were recently released as part of the spikefinder challenge (http://spikefinder.codeneuro.org/). Our C++ implementation, along with R and python wrappers, is publicly available on Github at https://github.com/jewellsean/FastLZeroSpikeInference.
منابع مشابه
Fast active set methods for online deconvolution of calcium imaging data
Johannes Friedrich, Pengcheng Zhou, Liam Paninski Abstract Fluorescent calcium indicators are a popular means for observing the spiking activity of large neuronal populations, but extracting the activity of each neuron from raw fluorescence calcium imaging data is a nontrivial problem. We present a fast online active set method to solve this sparse non-negative deconvolution problem. Importantl...
متن کاملFast online deconvolution of calcium imaging data
Fluorescent calcium indicators are a popular means for observing the spiking activity of large neuronal populations, but extracting the activity of each neuron from raw fluorescence calcium imaging data is a nontrivial problem. We present a fast online active set method to solve this sparse non-negative deconvolution problem. Importantly, the algorithm 3progresses through each time series seque...
متن کاملInnovative Methodology Fast Nonnegative Deconvolution for Spike Train Inference From Population Calcium Imaging
Vogelstein JT, Packer AM, Machado TA, Sippy T, Babadi B, Yuste R, Paninski L. Fast nonnegative deconvolution for spike train inference from population calcium imaging. J Neurophysiol 104: 3691–3704, 2010. First published June 16, 2010; doi:10.1152/jn.01073.2009. Fluorescent calcium indicators are becoming increasingly popular as a means for observing the spiking activity of large neuronal popul...
متن کاملFast nonnegative deconvolution for spike train inference from population calcium imaging.
Fluorescent calcium indicators are becoming increasingly popular as a means for observing the spiking activity of large neuronal populations. Unfortunately, extracting the spike train of each neuron from a raw fluorescence movie is a nontrivial problem. This work presents a fast nonnegative deconvolution filter to infer the approximately most likely spike train of each neuron, given the fluores...
متن کاملFast Active Set Methods for Online Spike Inference from Calcium Imaging
Fluorescent calcium indicators are a popular means for observing the spiking activity of large neuronal populations. Unfortunately, extracting the spike train of each neuron from raw fluorescence calcium imaging data is a nontrivial problem. We present a fast online active set method to solve this sparse nonnegative deconvolution problem. Importantly, the algorithm progresses through each time ...
متن کامل