Nonparametric Bayesian inference for meta-stable conformational dynamics.

IF 2 4区 生物学 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY
Lukas Köhs, Kerri Kukovetz, Oliver Rauh, Heinz Koeppl
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引用次数: 1

Abstract

Analyses of structural dynamics of biomolecules hold great promise to deepen the understanding of and ability to construct complex molecular systems. To this end, both experimental and computational means are available, such as fluorescence quenching experiments or molecular dynamics simulations, respectively. We argue that while seemingly disparate, both fields of study have to deal with the same type of data about the same underlying phenomenon of conformational switching. Two central challenges typically arise in both contexts: (i) the amount of obtained data is large, and (ii) it is often unknown how many distinct molecular states underlie these data. In this study, we build on the established idea of Markov state modeling and propose a generative, Bayesian nonparametric hidden Markov state model that addresses these challenges. Utilizing hierarchical Dirichlet processes, we treat different meta-stable molecule conformations as distinct Markov states, the number of which we then do not have to seta priori. In contrast to existing approaches to both experimental as well as simulation data that are based on the same idea, we leverage a mean-field variational inference approach, enabling scalable inference on large amounts of data. Furthermore, we specify the model also for the important case of angular data, which however proves to be computationally intractable. Addressing this issue, we propose a computationally tractable approximation to the angular model. We demonstrate the method on synthetic ground truth data and apply it to known benchmark problems as well as electrophysiological experimental data from a conformation-switching ion channel to highlight its practical utility.

亚稳定构象动力学的非参数贝叶斯推理。
分析生物分子的结构动力学对加深对复杂分子系统的理解和构建能力具有很大的希望。为此,实验手段和计算手段都是可用的,如荧光猝灭实验或分子动力学模拟。我们认为,虽然看似不同,这两个研究领域必须处理相同类型的数据关于相同的构象转换的潜在现象。在这两种情况下,通常会出现两个主要挑战:(i)获得的数据量很大,(ii)通常不知道这些数据背后有多少不同的分子状态。在本研究中,我们以马尔可夫状态建模的既定思想为基础,提出了一个生成的贝叶斯非参数隐马尔可夫状态模型来解决这些挑战。利用分层狄利克雷过程,我们将不同的亚稳定分子构象视为不同的马尔可夫状态,这样我们就不必先验地设置其数量。与现有的基于相同思想的实验和模拟数据方法相比,我们利用平均场变分推理方法,在大量数据上实现可扩展的推理。此外,我们还为角数据的重要情况指定了模型,但这被证明是难以计算的。为了解决这个问题,我们提出了一个计算上易于处理的角模型近似。我们在合成真值数据上演示了该方法,并将其应用于已知的基准问题以及来自构象开关离子通道的电生理实验数据,以突出其实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Physical biology
Physical biology 生物-生物物理
CiteScore
4.20
自引率
0.00%
发文量
50
审稿时长
3 months
期刊介绍: Physical Biology publishes articles in the broad interdisciplinary field bridging biology with the physical sciences and engineering. This journal focuses on research in which quantitative approaches – experimental, theoretical and modeling – lead to new insights into biological systems at all scales of space and time, and all levels of organizational complexity. Physical Biology accepts contributions from a wide range of biological sub-fields, including topics such as: molecular biophysics, including single molecule studies, protein-protein and protein-DNA interactions subcellular structures, organelle dynamics, membranes, protein assemblies, chromosome structure intracellular processes, e.g. cytoskeleton dynamics, cellular transport, cell division systems biology, e.g. signaling, gene regulation and metabolic networks cells and their microenvironment, e.g. cell mechanics and motility, chemotaxis, extracellular matrix, biofilms cell-material interactions, e.g. biointerfaces, electrical stimulation and sensing, endocytosis cell-cell interactions, cell aggregates, organoids, tissues and organs developmental dynamics, including pattern formation and morphogenesis physical and evolutionary aspects of disease, e.g. cancer progression, amyloid formation neuronal systems, including information processing by networks, memory and learning population dynamics, ecology, and evolution collective action and emergence of collective phenomena.
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