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从平均瞬时转运体电流到微观机制——贝叶斯分析。

From Average Transient Transporter Currents to Microscopic Mechanism─A Bayesian Analysis.

机构信息

Department of Biomedical Engineering, Oregon Health and Science University, Portland, Oregon 97239, United States.

出版信息

J Phys Chem B. 2024 Feb 29;128(8):1830-1842. doi: 10.1021/acs.jpcb.3c07025. Epub 2024 Feb 19.

DOI:10.1021/acs.jpcb.3c07025
PMID:38373358
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 quantify and check (i) the precision of parameter estimates under different assumptions, (ii) the ability of computation to guide the selection of experimental conditions, and (iii) the ability of our approach to distinguish among mechanisms based on SSME data. When the general mechanism, i.e., event order, is known in advance, we show that a subset of kinetic parameters can be "practically identified" within ∼1 order of magnitude, based on SSME current traces that visually appear to exhibit simple exponential behavior. This remains true even when accounting for systematic measurement bias and realistic uncertainties in experimental inputs (concentrations) are incorporated into the analysis. When experimental conditions are optimized or different experiments are combined, the number of practically identifiable parameters can be increased substantially. Some parameters remain intrinsically difficult to estimate through SSME data alone, suggesting that additional experiments are required to fully characterize parameters. We also demonstrate the ability to perform model selection and determine the order of events when that is not known in advance, comparing Bayesian and maximum-likelihood approaches. Finally, our studies elucidate good practices for the increasingly popular but subtly challenging Bayesian calculations for structural and systems biology.

摘要

几十年来的研究揭示了次级主动转运体的电生理学研究的定量机械见解。然而,新的实验和分析方法的出现要求对这些新方法的能力和局限性进行调查。我们考察了固载膜电生理学(SSME)在表征具有>10个速率常数的离散状态动力学模型的能力。我们使用贝叶斯框架应用于三个任务的合成数据:(i)在不同假设下量化和检查参数估计的精度,(ii)计算能力指导实验条件选择的能力,以及(iii)我们的方法根据 SSME 数据区分机制的能力。当一般机制(即事件顺序)预先已知时,我们表明,可以基于 SSME 电流轨迹,实际上在约 1 个数量级内“实际识别”一组动力学参数,这些轨迹在视觉上似乎表现出简单的指数行为。即使在分析中考虑了系统测量偏差和实验输入(浓度)的实际不确定性,这仍然是正确的。当优化实验条件或组合不同实验时,可以大大增加实际可识别参数的数量。一些参数仍然很难仅通过 SSME 数据来估计,这表明需要进行额外的实验来充分表征参数。我们还展示了当未知时执行模型选择和确定事件顺序的能力,比较了贝叶斯和最大似然方法。最后,我们的研究阐明了对于越来越流行但具有挑战性的结构和系统生物学贝叶斯计算的良好实践。

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