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Application of Machine-Learning Methods to Recognize mitoBK Channels from Different Cell Types Based on the Experimental Patch-Clamp Results

(1) Background: In this work, we focus on the activity of large-conductance voltage- and Ca [Formula: see text]-activated potassium channels (BK) from the inner mitochondrial membrane (mitoBK). The characteristic electrophysiological features of the mitoBK channels are relatively high single-channel...

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Autores principales: Richter-Laskowska, Monika, Trybek, Paulina, Bednarczyk, Piotr, Wawrzkiewicz-Jałowiecka, Agata
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7831025/
https://www.ncbi.nlm.nih.gov/pubmed/33467711
http://dx.doi.org/10.3390/ijms22020840
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author Richter-Laskowska, Monika
Trybek, Paulina
Bednarczyk, Piotr
Wawrzkiewicz-Jałowiecka, Agata
author_facet Richter-Laskowska, Monika
Trybek, Paulina
Bednarczyk, Piotr
Wawrzkiewicz-Jałowiecka, Agata
author_sort Richter-Laskowska, Monika
collection PubMed
description (1) Background: In this work, we focus on the activity of large-conductance voltage- and Ca [Formula: see text]-activated potassium channels (BK) from the inner mitochondrial membrane (mitoBK). The characteristic electrophysiological features of the mitoBK channels are relatively high single-channel conductance (ca. 300 pS) and types of activating and deactivating stimuli. Nevertheless, depending on the isoformal composition of mitoBK channels in a given membrane patch and the type of auxiliary regulatory subunits (which can be co-assembled to the mitoBK channel protein) the characteristics of conformational dynamics of the channel protein can be altered. Consequently, the individual features of experimental series describing single-channel activity obtained by patch-clamp method can also vary. (2) Methods: Artificial intelligence approaches (deep learning) were used to classify the patch-clamp outputs of mitoBK activity from different cell types. (3) Results: Application of the K-nearest neighbors algorithm (KNN) and the autoencoder neural network allowed to perform the classification of the electrophysiological signals with a very good accuracy, which indicates that the conformational dynamics of the analyzed mitoBK channels from different cell types significantly differs. (4) Conclusion: We displayed the utility of machine-learning methodology in the research of ion channel gating, even in cases when the behavior of very similar microbiosystems is analyzed. A short excerpt from the patch-clamp recording can serve as a “fingerprint” used to recognize the mitoBK gating dynamics in the patches of membrane from different cell types.
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spelling pubmed-78310252021-01-26 Application of Machine-Learning Methods to Recognize mitoBK Channels from Different Cell Types Based on the Experimental Patch-Clamp Results Richter-Laskowska, Monika Trybek, Paulina Bednarczyk, Piotr Wawrzkiewicz-Jałowiecka, Agata Int J Mol Sci Article (1) Background: In this work, we focus on the activity of large-conductance voltage- and Ca [Formula: see text]-activated potassium channels (BK) from the inner mitochondrial membrane (mitoBK). The characteristic electrophysiological features of the mitoBK channels are relatively high single-channel conductance (ca. 300 pS) and types of activating and deactivating stimuli. Nevertheless, depending on the isoformal composition of mitoBK channels in a given membrane patch and the type of auxiliary regulatory subunits (which can be co-assembled to the mitoBK channel protein) the characteristics of conformational dynamics of the channel protein can be altered. Consequently, the individual features of experimental series describing single-channel activity obtained by patch-clamp method can also vary. (2) Methods: Artificial intelligence approaches (deep learning) were used to classify the patch-clamp outputs of mitoBK activity from different cell types. (3) Results: Application of the K-nearest neighbors algorithm (KNN) and the autoencoder neural network allowed to perform the classification of the electrophysiological signals with a very good accuracy, which indicates that the conformational dynamics of the analyzed mitoBK channels from different cell types significantly differs. (4) Conclusion: We displayed the utility of machine-learning methodology in the research of ion channel gating, even in cases when the behavior of very similar microbiosystems is analyzed. A short excerpt from the patch-clamp recording can serve as a “fingerprint” used to recognize the mitoBK gating dynamics in the patches of membrane from different cell types. MDPI 2021-01-15 /pmc/articles/PMC7831025/ /pubmed/33467711 http://dx.doi.org/10.3390/ijms22020840 Text en © 2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Richter-Laskowska, Monika
Trybek, Paulina
Bednarczyk, Piotr
Wawrzkiewicz-Jałowiecka, Agata
Application of Machine-Learning Methods to Recognize mitoBK Channels from Different Cell Types Based on the Experimental Patch-Clamp Results
title Application of Machine-Learning Methods to Recognize mitoBK Channels from Different Cell Types Based on the Experimental Patch-Clamp Results
title_full Application of Machine-Learning Methods to Recognize mitoBK Channels from Different Cell Types Based on the Experimental Patch-Clamp Results
title_fullStr Application of Machine-Learning Methods to Recognize mitoBK Channels from Different Cell Types Based on the Experimental Patch-Clamp Results
title_full_unstemmed Application of Machine-Learning Methods to Recognize mitoBK Channels from Different Cell Types Based on the Experimental Patch-Clamp Results
title_short Application of Machine-Learning Methods to Recognize mitoBK Channels from Different Cell Types Based on the Experimental Patch-Clamp Results
title_sort application of machine-learning methods to recognize mitobk channels from different cell types based on the experimental patch-clamp results
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7831025/
https://www.ncbi.nlm.nih.gov/pubmed/33467711
http://dx.doi.org/10.3390/ijms22020840
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