TY - JOUR
T1 - Accurate detection of low signal-to-noise ratio neuronal calcium transient waves using a matched filter
AU - Szymanska, Agnieszka F.
AU - Kobayashi, Chiaki
AU - Norimoto, Hiroaki
AU - Ishikawa, Tomoe
AU - Ikegaya, Yuji
AU - Nenadic, Zoran
N1 - Funding Information:
The authors would like to extend a special thanks to N. Koe, M. Doty, and K. Scannell for their help in manual CE identification. This work was supported by NSF ( 1056105 ), NSF-EAPSI ( OISE-13 7307954 ), and JSPS ( SP13054 ).
Publisher Copyright:
© 2015 Elsevier B.V.
PY - 2016/2/1
Y1 - 2016/2/1
N2 - Background: Calcium imaging has become a fundamental modality for studying neuronal circuit dynamics both in vitro and in vivo. However, identifying calcium events (CEs) from spectral data remains laborious and difficult, especially since the signal-to-noise ratio (SNR) often falls below 2. Existing automated signal detection methods are generally applied at high SNRs, leaving a large need for an automated algorithm that can accurately extract CEs from fluorescence intensity data of SNR 2 and below. New method: In this work we develop a Matched filter for Mult. i-unit Calcium Event (MMiCE) detection to extract CEs from fluorescence intensity traces of simulated and experimentally recorded neuronal calcium imaging data. Results: MMiCE reached perfect performance on simulated data with SNR ≥ 2 and a true positive (TP) rate of 98.27% (± 1.38% with a 95% confidence interval), and a false positive(FP) rate of 6.59% (± 2.56%) on simulated data with SNR 0.2. On real data, verified by patch-clamp recording, MMiCE performed with a TP rate of 100.00% (± 0.00) and a FP rate of 2.04% (± 4.10). Comparison with existing method(s): This high level of performance exceeds existing methods at SNRs as low as 0.2, which are well below those used in previous studies (SNR ≃ 5-10). Conclusion: Overall, the MMiCE detector performed exceptionally well on both simulated data, and experimentally recorded neuronal calcium imaging data. The MMiCE detector is accurate, reliable, well suited for wide-spread use, and freely available at sites.uci.edu/aggies or from the corresponding author.
AB - Background: Calcium imaging has become a fundamental modality for studying neuronal circuit dynamics both in vitro and in vivo. However, identifying calcium events (CEs) from spectral data remains laborious and difficult, especially since the signal-to-noise ratio (SNR) often falls below 2. Existing automated signal detection methods are generally applied at high SNRs, leaving a large need for an automated algorithm that can accurately extract CEs from fluorescence intensity data of SNR 2 and below. New method: In this work we develop a Matched filter for Mult. i-unit Calcium Event (MMiCE) detection to extract CEs from fluorescence intensity traces of simulated and experimentally recorded neuronal calcium imaging data. Results: MMiCE reached perfect performance on simulated data with SNR ≥ 2 and a true positive (TP) rate of 98.27% (± 1.38% with a 95% confidence interval), and a false positive(FP) rate of 6.59% (± 2.56%) on simulated data with SNR 0.2. On real data, verified by patch-clamp recording, MMiCE performed with a TP rate of 100.00% (± 0.00) and a FP rate of 2.04% (± 4.10). Comparison with existing method(s): This high level of performance exceeds existing methods at SNRs as low as 0.2, which are well below those used in previous studies (SNR ≃ 5-10). Conclusion: Overall, the MMiCE detector performed exceptionally well on both simulated data, and experimentally recorded neuronal calcium imaging data. The MMiCE detector is accurate, reliable, well suited for wide-spread use, and freely available at sites.uci.edu/aggies or from the corresponding author.
KW - Calcium transients
KW - Dendritic spines
KW - Detection
KW - Low SNR
KW - Matched filter
KW - Multineuron calcium imaging
KW - Somatic calcium fluctuations
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U2 - 10.1016/j.jneumeth.2015.10.014
DO - 10.1016/j.jneumeth.2015.10.014
M3 - Article
C2 - 26561771
AN - SCOPUS:84961894536
SN - 0165-0270
VL - 259
SP - 1
EP - 12
JO - Journal of Neuroscience Methods
JF - Journal of Neuroscience Methods
ER -