| Literature DB >> 30652683 |
Andrea Giovannucci1, Johannes Friedrich1,2,3, Pat Gunn1, Jérémie Kalfon4, Brandon L Brown5, Sue Ann Koay6, Jiannis Taxidis7, Farzaneh Najafi8, Jeffrey L Gauthier6, Pengcheng Zhou2,3, Baljit S Khakh5,9, David W Tank6, Dmitri B Chklovskii1, Eftychios A Pnevmatikakis1.
Abstract
Advances in fluorescence microscopy enable monitoring larger brain areas in-vivo with finer time resolution. The resulting data rates require reproducible analysis pipelines that are reliable, fully automated, and scalable to datasets generated over the course of months. We present CaImAn, an open-source library for calcium imaging data analysis. CaImAn provides automatic and scalable methods to address problems common to pre-processing, including motion correction, neural activity identification, and registration across different sessions of data collection. It does this while requiring minimal user intervention, with good scalability on computers ranging from laptops to high-performance computing clusters. CaImAn is suitable for two-photon and one-photon imaging, and also enables real-time analysis on streaming data. To benchmark the performance of CaImAn we collected and combined a corpus of manual annotations from multiple labelers on nine mouse two-photon datasets. We demonstrate that CaImAn achieves near-human performance in detecting locations of active neurons.Entities:
Keywords: calcium imaging; data analysis; mouse; neuroscience; one-photon; open source; software; two-photon; zebrafish
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Year: 2019 PMID: 30652683 PMCID: PMC6342523 DOI: 10.7554/eLife.38173
Source DB: PubMed Journal: Elife ISSN: 2050-084X Impact factor: 8.140