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Automatic and Reliable Quantification of Tonic Dopamine Concentrations In Vivo Using a Novel Probabilistic Inference Method

[Image: see text] Dysregulation of the neurotransmitter dopamine (DA) is implicated in several neuropsychiatric conditions. Multiple-cyclic square-wave voltammetry (MCSWV) is a state-of-the-art technique for measuring tonic DA levels with high sensitivity (<5 nM), selectivity, and spatiotemporal...

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Autores principales: Kim, Jaekyung, Barath, Abhijeet S., Rusheen, Aaron E., Rojas Cabrera, Juan M., Price, J. Blair, Shin, Hojin, Goyal, Abhinav, Yuen, Jason W., Jondal, Danielle E., Blaha, Charles D., Lee, Kendall H., Jang, Dong Pyo, Oh, Yoonbae
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2021
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7970470/
https://www.ncbi.nlm.nih.gov/pubmed/33748573
http://dx.doi.org/10.1021/acsomega.0c05217
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author Kim, Jaekyung
Barath, Abhijeet S.
Rusheen, Aaron E.
Rojas Cabrera, Juan M.
Price, J. Blair
Shin, Hojin
Goyal, Abhinav
Yuen, Jason W.
Jondal, Danielle E.
Blaha, Charles D.
Lee, Kendall H.
Jang, Dong Pyo
Oh, Yoonbae
author_facet Kim, Jaekyung
Barath, Abhijeet S.
Rusheen, Aaron E.
Rojas Cabrera, Juan M.
Price, J. Blair
Shin, Hojin
Goyal, Abhinav
Yuen, Jason W.
Jondal, Danielle E.
Blaha, Charles D.
Lee, Kendall H.
Jang, Dong Pyo
Oh, Yoonbae
author_sort Kim, Jaekyung
collection PubMed
description [Image: see text] Dysregulation of the neurotransmitter dopamine (DA) is implicated in several neuropsychiatric conditions. Multiple-cyclic square-wave voltammetry (MCSWV) is a state-of-the-art technique for measuring tonic DA levels with high sensitivity (<5 nM), selectivity, and spatiotemporal resolution. Currently, however, analysis of MCSWV data requires manual, qualitative adjustments of analysis parameters, which can inadvertently introduce bias. Here, we demonstrate the development of a computational technique using a statistical model for standardized, unbiased analysis of experimental MCSWV data for unbiased quantification of tonic DA. The oxidation current in the MCSWV signal was predicted to follow a lognormal distribution. The DA-related oxidation signal was inferred to be present in the top 5% of this analytical distribution and was used to predict a tonic DA level. The performance of this technique was compared against the previously used peak-based method on paired in vivo and post-calibration in vitro datasets. Analytical inference of DA signals derived from the predicted statistical model enabled high-fidelity conversion of the in vivo current signal to a concentration value via in vitro post-calibration. As a result, this technique demonstrated reliable and improved estimation of tonic DA levels in vivo compared to the conventional manual post-processing technique using the peak current signals. These results show that probabilistic inference-based voltammetry signal processing techniques can standardize the determination of tonic DA concentrations, enabling progress toward the development of MCSWV as a robust research and clinical tool.
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spelling pubmed-79704702021-03-19 Automatic and Reliable Quantification of Tonic Dopamine Concentrations In Vivo Using a Novel Probabilistic Inference Method Kim, Jaekyung Barath, Abhijeet S. Rusheen, Aaron E. Rojas Cabrera, Juan M. Price, J. Blair Shin, Hojin Goyal, Abhinav Yuen, Jason W. Jondal, Danielle E. Blaha, Charles D. Lee, Kendall H. Jang, Dong Pyo Oh, Yoonbae ACS Omega [Image: see text] Dysregulation of the neurotransmitter dopamine (DA) is implicated in several neuropsychiatric conditions. Multiple-cyclic square-wave voltammetry (MCSWV) is a state-of-the-art technique for measuring tonic DA levels with high sensitivity (<5 nM), selectivity, and spatiotemporal resolution. Currently, however, analysis of MCSWV data requires manual, qualitative adjustments of analysis parameters, which can inadvertently introduce bias. Here, we demonstrate the development of a computational technique using a statistical model for standardized, unbiased analysis of experimental MCSWV data for unbiased quantification of tonic DA. The oxidation current in the MCSWV signal was predicted to follow a lognormal distribution. The DA-related oxidation signal was inferred to be present in the top 5% of this analytical distribution and was used to predict a tonic DA level. The performance of this technique was compared against the previously used peak-based method on paired in vivo and post-calibration in vitro datasets. Analytical inference of DA signals derived from the predicted statistical model enabled high-fidelity conversion of the in vivo current signal to a concentration value via in vitro post-calibration. As a result, this technique demonstrated reliable and improved estimation of tonic DA levels in vivo compared to the conventional manual post-processing technique using the peak current signals. These results show that probabilistic inference-based voltammetry signal processing techniques can standardize the determination of tonic DA concentrations, enabling progress toward the development of MCSWV as a robust research and clinical tool. American Chemical Society 2021-03-03 /pmc/articles/PMC7970470/ /pubmed/33748573 http://dx.doi.org/10.1021/acsomega.0c05217 Text en © 2021 The Authors. Published by American Chemical Society Permits non-commercial access and re-use, provided that author attribution and integrity are maintained; but does not permit creation of adaptations or other derivative works (https://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Kim, Jaekyung
Barath, Abhijeet S.
Rusheen, Aaron E.
Rojas Cabrera, Juan M.
Price, J. Blair
Shin, Hojin
Goyal, Abhinav
Yuen, Jason W.
Jondal, Danielle E.
Blaha, Charles D.
Lee, Kendall H.
Jang, Dong Pyo
Oh, Yoonbae
Automatic and Reliable Quantification of Tonic Dopamine Concentrations In Vivo Using a Novel Probabilistic Inference Method
title Automatic and Reliable Quantification of Tonic Dopamine Concentrations In Vivo Using a Novel Probabilistic Inference Method
title_full Automatic and Reliable Quantification of Tonic Dopamine Concentrations In Vivo Using a Novel Probabilistic Inference Method
title_fullStr Automatic and Reliable Quantification of Tonic Dopamine Concentrations In Vivo Using a Novel Probabilistic Inference Method
title_full_unstemmed Automatic and Reliable Quantification of Tonic Dopamine Concentrations In Vivo Using a Novel Probabilistic Inference Method
title_short Automatic and Reliable Quantification of Tonic Dopamine Concentrations In Vivo Using a Novel Probabilistic Inference Method
title_sort automatic and reliable quantification of tonic dopamine concentrations in vivo using a novel probabilistic inference method
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7970470/
https://www.ncbi.nlm.nih.gov/pubmed/33748573
http://dx.doi.org/10.1021/acsomega.0c05217
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