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Tracking the Same Neurons across Multiple Days in Ca2+ Imaging Data
Author(s) -
Liron Sheintuch,
Alon Rubin,
Noa Brande-Eilat,
Nitzan Geva,
Noa Sadeh,
Or Pinchasof,
Yaniv Ziv
Publication year - 2017
Publication title -
cell reports
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 6.264
H-Index - 154
eISSN - 2639-1856
pISSN - 2211-1247
DOI - 10.1016/j.celrep.2017.10.013
Subject(s) - computer science , population , session (web analytics) , artificial intelligence , scalability , tracking (education) , probabilistic logic , image registration , hippocampus , pattern recognition (psychology) , computer vision , neuroscience , biology , medicine , database , psychology , pedagogy , environmental health , world wide web , image (mathematics)
Ca 2+ imaging techniques permit time-lapse recordings of neuronal activity from large populations over weeks. However, without identifying the same neurons across imaging sessions (cell registration), longitudinal analysis of the neural code is restricted to population-level statistics. Accurate cell registration becomes challenging with increased numbers of cells, sessions, and inter-session intervals. Current cell registration practices, whether manual or automatic, do not quantitatively evaluate registration accuracy, possibly leading to data misinterpretation. We developed a probabilistic method that automatically registers cells across multiple sessions and estimates the registration confidence for each registered cell. Using large-scale Ca 2+ imaging data recorded over weeks from the hippocampus and cortex of freely behaving mice, we show that our method performs more accurate registration than previously used routines, yielding estimated error rates <5%, and that the registration is scalable for many sessions. Thus, our method allows reliable longitudinal analysis of the same neurons over long time periods.

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