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本文引用的文献

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Calculation of rate spectra from noisy time series data.从噪声时间序列数据计算速率谱。
Proteins. 2012 Feb;80(2):342-51. doi: 10.1002/prot.23171. Epub 2011 Nov 17.
2
Single-molecule fluorescence spectroscopy maps the folding landscape of a large protein.单分子荧光光谱描绘了一个大型蛋白质的折叠地貌。
Nat Commun. 2011 Oct 11;2:493. doi: 10.1038/ncomms1504.
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Renewal theory for single-molecule systems with multiple reaction channels.具有多个反应通道的单分子体系的更新理论。
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Analysis of kinetic intermediates in single-particle dwell-time distributions.分析单颗粒停留时间分布中的动力学中间体。
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The folding cooperativity of a protein is controlled by its chain topology.蛋白质的折叠协同性受其链拓扑结构的控制。
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6
Learning rates and states from biophysical time series: a Bayesian approach to model selection and single-molecule FRET data.从生物物理时间序列中学习率和状态:一种贝叶斯方法用于模型选择和单分子 FRET 数据。
Biophys J. 2009 Dec 16;97(12):3196-205. doi: 10.1016/j.bpj.2009.09.031.
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Direct observation of ultrafast folding and denatured state dynamics in single protein molecules.单个蛋白质分子中超快折叠和变性状态动力学的直接观察。
Proc Natl Acad Sci U S A. 2009 Nov 3;106(44):18569-74. doi: 10.1073/pnas.0910860106. Epub 2009 Oct 19.
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The large conformational changes of Hsp90 are only weakly coupled to ATP hydrolysis.热休克蛋白90(Hsp90)的大构象变化仅与ATP水解微弱偶联。
Nat Struct Mol Biol. 2009 Mar;16(3):281-6. doi: 10.1038/nsmb.1557. Epub 2009 Feb 22.
9
Phosphatidylinositol-4,5-bisphosphate (PIP2) regulation of strong inward rectifier Kir2.1 channels: multilevel positive cooperativity.磷脂酰肌醇-4,5-二磷酸(PIP2)对强内向整流钾通道Kir2.1的调节:多级正协同性
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10
Multiscale complex network of protein conformational fluctuations in single-molecule time series.单分子时间序列中蛋白质构象波动的多尺度复杂网络
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从单分子动力学数据中提取构象记忆。

Extracting conformational memory from single-molecule kinetic data.

机构信息

Department of Physics, Indiana University-Purdue University, Indianapolis, Indiana, USA.

出版信息

J Phys Chem B. 2013 Jan 17;117(2):495-502. doi: 10.1021/jp309420u. Epub 2013 Jan 9.

DOI:10.1021/jp309420u
PMID:23259771
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC3569860/
Abstract

Single-molecule data often come in the form of stochastic time trajectories. A key question is how to extract an underlying kinetic model from the data. A traditional approach is to assume some discrete state model, that is, a model topology, and to assume that transitions between states are Markovian. The transition rates are then selected according to which ones best fit the data. However, in experiments, each apparent state can be a broad ensemble of states or can be hiding multiple interconverting states. Here, we describe a more general approach called the non-Markov memory kernel (NMMK) method. The idea is to begin with a very broad class of non-Markov models and to let the data directly select for the best possible model. To do so, we adapt an image reconstruction approach that is grounded in maximum entropy. The NMMK method is not limited to discrete state models for the data; it yields a unique model given the data, it gives error bars for the model, and it does not assume Markov dynamics. Furthermore, NMMK is less wasteful of data by letting the entire data set determine the model. When the data warrants, the NMMK gives a memory kernel that is Markovian. We highlight, by numerical example, how conformational memory extracted using this method can be translated into useful mechanistic insight.

摘要

单分子数据通常以随机时间轨迹的形式出现。一个关键问题是如何从数据中提取潜在的动力学模型。一种传统的方法是假设一些离散状态模型,即模型拓扑,并假设状态之间的跃迁是马尔可夫的。然后根据哪些跃迁最符合数据来选择跃迁率。然而,在实验中,每个明显的状态可能是一个广泛的状态集合,或者可能隐藏着多个相互转化的状态。在这里,我们描述了一种更通用的方法,称为非马尔可夫记忆核(NMMK)方法。其思想是从一个非常广泛的非马尔可夫模型类开始,并让数据直接选择最佳可能的模型。为此,我们采用了一种基于最大熵的图像重建方法。NMMK 方法不仅限于离散状态模型的数据;它根据数据给出唯一的模型,并为模型提供误差条,并且不假设马尔可夫动力学。此外,NMMK 方法通过让整个数据集来确定模型,从而减少了数据的浪费。当数据需要时,NMMK 会给出一个马尔可夫记忆核。我们通过数值示例强调了如何使用这种方法提取构象记忆,并将其转化为有用的机制见解。