Sequential design of single-cell experiments to identify discrete stochastic models for gene expression.

Joshua Cook, Eric Ron, Dmitri Svetlov, Luis U Aguilera, Brian Munsky
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引用次数: 0

Abstract

Control of gene regulation requires quantitatively accurate predictions of heterogeneous cellular responses. When inferred from single-cell experiments, discrete stochastic models can enable such predictions, but such experiments are highly adjustable, allowing for almost infinitely many potential designs (e.g., at different induction levels, for different measurement times, or considering different observed biological species). Not all experiments are equally informative, experiments are time-consuming or expensive to perform, and research begins with limited prior information with which to construct models. To address these concerns, we developed a sequential experiment design strategy that starts with simple preliminary experiments and then integrates chemical master equations to compute the likelihood of single-cell data, a Bayesian inference procedure to sample posterior parameter distributions, and a finite state projection based Fisher information matrix to estimate the expected information for different designs for subsequent experiments. Using simulated then real single-cell data, we determined practical working principles to reduce the overall number of experiments needed to achieve predictive, quantitative understanding of single-cell responses.

单细胞实验的顺序设计,以确定基因表达的离散随机模型。
基因调控的控制需要定量准确地预测异质细胞反应。当从单细胞实验推断时,离散随机模型可以实现这样的预测,但这样的实验是高度可调的,允许几乎无限多的潜在设计(例如,在不同的诱导水平,不同的测量时间,或考虑不同的观察生物物种)。并不是所有的实验都能提供同样的信息,实验既耗时又昂贵,而且研究开始时只能获得有限的先验信息来构建模型。为了解决这些问题,我们开发了一种顺序实验设计策略,从简单的初步实验开始,然后整合化学主方程来计算单细胞数据的可能性,使用贝叶斯推理程序来样本后验参数分布,以及基于有限状态投影的Fisher信息矩阵来估计后续实验中不同设计的期望信息。使用模拟和真实的单细胞数据,我们确定了实际的工作原理,以减少实现预测、定量理解单细胞反应所需的实验总数。
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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CiteScore
1.70
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0.00%
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