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Maximum Caliber Can Build and Infer Models of Oscillation in a Three-Gene Feedback Network

机译:最大口径可以建立和推断三基因反馈网络中的振荡模型

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摘要

Single-cell protein expression time trajectories provide rich temporal data quantifying cellular variability and its role in dictating fitness. However, theoretical models to analyze and fully extract information from these measurements remain limited for three reasons: (i) gene expression profiles are noisy, rendering models of averages inapplicable, (ii) experiments typically measure only a few protein species while leaving other molecular actors—necessary to build traditional bottom-up models—unnoticed, and (iii) measured data are in fluorescence, not particle number. We recently addressed these challenges in an alternate top-down approach using the principle of Maximum Caliber (MaxCal) to model genetic switches with one and two protein species. In the present work we address scalability and broader applicability of MaxCal by extending to a three-gene (A, B, C) feedback network that exhibits oscillation, commonly known as the repressilator. We test MaxCal’s inferential power by using synthetic data of noisy protein number time traces—serving as a proxy for experimental data—generated from a known underlying model. We notice that the minimal MaxCal model—accounting for production, degradation, and only one type of symmetric coupling between all three species—reasonably infers several underlying features of the circuit such as the effective production rate, degradation rate, frequency of oscillation, and protein number distribution. Next, we build models of higher complexity including different levels of coupling between A, B, and C and rigorously assess their relative performance. While the minimal model (with four parameters) performs remarkably well, we note that the most complex model (with six parameters) allowing all possible forms of crosstalk between A, B, and C slightly improves prediction of rates, but avoids ad hoc assumption of all the other models. It is also the model of choice based on Bayesian information criteria. We further analyzed time trajectories in arbitrary fluorescence (using synthetic trajectories) to mimic realistic data. We conclude that even with a three-protein system including both fluorescence noise and intrinsic gene expression fluctuations, MaxCal can faithfully infer underlying details of the network, opening future directions to model other network motifs with many species.
机译:单细胞蛋白质表达时间轨迹提供了丰富的时间数据,可量化细胞变异性及其在决定适应性中的作用。但是,用于分析并从这些测量中完全提取信息的理论模型仍然受到限制,原因有以下三个:(i)基因表达谱嘈杂,均值模型不适用;(ii)实验通常仅测量少数几种蛋白质,而其他分子则不起作用-是建立传统的自下而上模型所必需的-未注意到,并且(iii)测量数据是荧光的,而不是粒子数的。最近,我们使用最大口径(MaxCal)原理以自上而下的替代方法解决了这些挑战,以一种和两种蛋白质为模型来模拟遗传开关。在当前工作中,我们通过扩展到显示振荡的三基因(A,B,C)反馈网络(通常称为再加压器)来解决MaxCal的可伸缩性和更广泛的适用性。我们通过使用从已知基础模型生成的嘈杂的蛋白质数目时间轨迹的合成数据(作为实验数据的代理)来测试MaxCal的推理能力。我们注意到,最小的MaxCal模型(考虑了产量,降解以及所有三种物质之间只有一种对称耦合)合理地推断了电路的一些基本特征,例如有效生产率,降解率,振荡频率和蛋白质数字分布。接下来,我们建立更高复杂度的模型,包括A,B和C之间不同程度的耦合,并严格评估它们的相对性能。尽管最小模型(具有四个参数)的性能非常好,但我们注意到,最复杂的模型(具有六个参数)允许A,B和C之间所有可能的串扰形式,但对速率的预测有所改善,但避免了临时假设所有其他模型。它也是基于贝叶斯信息准则的选择模型。我们进一步分析了任意荧光中的时间轨迹(使用合成轨迹)以模拟现实数据。我们得出的结论是,即使使用包含荧光噪声和内在基因表达波动的三蛋白系统,MaxCal仍可以忠实地推断出网络的基本细节,从而为未来建模具有许多物种的其他网络图案打开了方向。

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