Inferring synaptic transmission from the stochastic dynamics of the quantal content: An analytical approach.
Quantal parameters of synapses are fundamental for the temporal dynamics of neurotransmitter release, which is the basis of interneuronal communication. We formulate a general class of models that capture the stochastic dynamics of quantal content (QC), defined as the number of SV fusion events trig...
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| Format: | Article |
| Language: | English |
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Public Library of Science (PLoS)
2025-05-01
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| Series: | PLoS Computational Biology |
| Online Access: | https://doi.org/10.1371/journal.pcbi.1013067 |
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| author | Zahra Vahdat Oliver Gambrell Jonas Fisch Eckhard Friauf Abhyudai Singh |
| author_facet | Zahra Vahdat Oliver Gambrell Jonas Fisch Eckhard Friauf Abhyudai Singh |
| author_sort | Zahra Vahdat |
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| description | Quantal parameters of synapses are fundamental for the temporal dynamics of neurotransmitter release, which is the basis of interneuronal communication. We formulate a general class of models that capture the stochastic dynamics of quantal content (QC), defined as the number of SV fusion events triggered by a single action potential (AP). Considering the probabilistic and time-varying nature of SV docking, undocking, and AP-triggered fusion, we derive an exact statistical distribution for the QC over time. Analyzing this distribution at steady-state and its associated autocorrelation function, we show that QC fluctuation statistics can be leveraged for inferring key presynaptic parameters, such as the probability of SV fusion (release probability) and SV replenishment at empty docking sites (refilling probability). Our model predictions are tested with electrophysiological data obtained from 50-Hz stimulation of auditory MNTB-LSO synapses in brainstem slices from juvenile mice. Our results show that while synaptic depression can be explained by low and constant refilling/release probabilities, this scenario is inconsistent with the statistics of the electrophysiological data, which show a low QC Fano factor and almost uncorrelated successive QCs. Our systematic analysis yields a model that couples a high release probability to a time-varying refilling probability to explain both the synaptic depression and its associated statistical fluctuations. In summary, we provide a general approach that exploits stochastic signatures in QCs to infer neurotransmission regulating processes that cannot be distinguished from simple analysis of averaged synaptic responses. |
| format | Article |
| id | doaj-art-eaf58e050ccb4426915a751b103ca61e |
| institution | Kabale University |
| issn | 1553-734X 1553-7358 |
| language | English |
| publishDate | 2025-05-01 |
| publisher | Public Library of Science (PLoS) |
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| series | PLoS Computational Biology |
| spelling | doaj-art-eaf58e050ccb4426915a751b103ca61e2025-08-23T05:31:14ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582025-05-01215e101306710.1371/journal.pcbi.1013067Inferring synaptic transmission from the stochastic dynamics of the quantal content: An analytical approach.Zahra VahdatOliver GambrellJonas FischEckhard FriaufAbhyudai SinghQuantal parameters of synapses are fundamental for the temporal dynamics of neurotransmitter release, which is the basis of interneuronal communication. We formulate a general class of models that capture the stochastic dynamics of quantal content (QC), defined as the number of SV fusion events triggered by a single action potential (AP). Considering the probabilistic and time-varying nature of SV docking, undocking, and AP-triggered fusion, we derive an exact statistical distribution for the QC over time. Analyzing this distribution at steady-state and its associated autocorrelation function, we show that QC fluctuation statistics can be leveraged for inferring key presynaptic parameters, such as the probability of SV fusion (release probability) and SV replenishment at empty docking sites (refilling probability). Our model predictions are tested with electrophysiological data obtained from 50-Hz stimulation of auditory MNTB-LSO synapses in brainstem slices from juvenile mice. Our results show that while synaptic depression can be explained by low and constant refilling/release probabilities, this scenario is inconsistent with the statistics of the electrophysiological data, which show a low QC Fano factor and almost uncorrelated successive QCs. Our systematic analysis yields a model that couples a high release probability to a time-varying refilling probability to explain both the synaptic depression and its associated statistical fluctuations. In summary, we provide a general approach that exploits stochastic signatures in QCs to infer neurotransmission regulating processes that cannot be distinguished from simple analysis of averaged synaptic responses.https://doi.org/10.1371/journal.pcbi.1013067 |
| spellingShingle | Zahra Vahdat Oliver Gambrell Jonas Fisch Eckhard Friauf Abhyudai Singh Inferring synaptic transmission from the stochastic dynamics of the quantal content: An analytical approach. PLoS Computational Biology |
| title | Inferring synaptic transmission from the stochastic dynamics of the quantal content: An analytical approach. |
| title_full | Inferring synaptic transmission from the stochastic dynamics of the quantal content: An analytical approach. |
| title_fullStr | Inferring synaptic transmission from the stochastic dynamics of the quantal content: An analytical approach. |
| title_full_unstemmed | Inferring synaptic transmission from the stochastic dynamics of the quantal content: An analytical approach. |
| title_short | Inferring synaptic transmission from the stochastic dynamics of the quantal content: An analytical approach. |
| title_sort | inferring synaptic transmission from the stochastic dynamics of the quantal content an analytical approach |
| url | https://doi.org/10.1371/journal.pcbi.1013067 |
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