A deep learning approach to real-time Markov modeling of ion channel gating.
    Oikonomou E, Juli Y, Kolan RR, Kern L, Gruber T, Alzheimer C, Krauß P, Maier A, Huth T  (2024)
    
    
    Publication Language: English
    Publication Type: Journal article, Original article
    Publication year: 2024
Journal
    
    
    
    
    
    
    Article Number: 280
    
    
    
    
    DOI: 10.1038/s42004-024-01369-y
    Open Access Link: http://10.1038/s42004-024-01369-y
    
    Abstract
    The patch-clamp technique allows us to eavesdrop the gating 
behavior of individual ion channels with unprecedented temporal 
resolution. The signals arise from conformational changes of the channel
 protein as it makes rapid transitions between conducting and 
non-conducting states. However, unambiguous analysis of single-channel 
datasets is challenging given the inadvertently low signal-to-noise 
ratio as well as signal distortions caused by low-pass filtering. Ion 
channel kinetics are typically described using hidden Markov models 
(HMM), which allow conclusions on the inner workings of the protein. In 
this study, we present a Deep Learning approach for extracting models 
from single-channel recordings. Two-dimensional dwell-time histograms 
are computed from the idealized time series and are subsequently 
analyzed by two neural networks, that have been trained on simulated 
datasets, to determine the topology and the transition rates of the HMM.
 We show that this method is robust regarding noise and gating events 
beyond the corner frequency of the low-pass filter. In addition, we 
propose a method to evaluate the goodness of a predicted model by 
re-simulating the prediction. Finally, we tested the algorithm with data
 recorded on a patch-clamp setup. In principle, it meets the 
requirements for model extraction during an ongoing recording session in
 real-time.
    
    
    
        
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    How to cite
    
        APA:
        Oikonomou, E., Juli, Y., Kolan, R.R., Kern, L., Gruber, T., Alzheimer, C.,... Huth, T. (2024). A deep learning approach to real-time Markov modeling of ion channel gating. Communications Chemistry. https://doi.org/10.1038/s42004-024-01369-y
    
    
        MLA:
        Oikonomou, Efthymios, et al. "A deep learning approach to real-time Markov modeling of ion channel gating." Communications Chemistry (2024).
    
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