2024
DOI: 10.1021/acs.jpcb.3c07025
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From Average Transient Transporter Currents to Microscopic Mechanism─A Bayesian Analysis

August George,
Daniel M. Zuckerman

Abstract: Electrophysiology studies of secondary active transporters have revealed quantitative mechanistic insights over many decades of research. However, the emergence of new experimental and analytical approaches calls for investigation of the capabilities and limitations of the newer methods. We examine the ability of solid-supported membrane electrophysiology (SSME) to characterize discrete-state kinetic models with >10 rate constants. We use a Bayesian framework applied to synthetic data for three tasks: to quant… Show more

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Cited by 1 publication
(4 citation statements)
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“…In other words, can you trust the maximum likelihood estimates? In our hands, working with systems that are challengingbut possibleto sample, optimization algorithms do not provide reproducible, truly optimal results . We know this because we can simply compare optimization results to the maximum likelihood observed in MC sampling, which is reproducible when sampling is adequate.…”
Section: Interpreting Data From Bayesian Monte Carlomentioning
confidence: 99%
See 3 more Smart Citations
“…In other words, can you trust the maximum likelihood estimates? In our hands, working with systems that are challengingbut possibleto sample, optimization algorithms do not provide reproducible, truly optimal results . We know this because we can simply compare optimization results to the maximum likelihood observed in MC sampling, which is reproducible when sampling is adequate.…”
Section: Interpreting Data From Bayesian Monte Carlomentioning
confidence: 99%
“…Metropolis-Hastings with a standard Normal proposal distribution is used, enabling efficient sample generation subject to the accuracy of transformation. We have found this method to be valuable for the Bayesian inference of dynamic models of membrane transporters with 10–20 parameters …”
Section: Monte Carlo In Bayesian Inferencementioning
confidence: 99%
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