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Experimental design schemes for learning Boolean network models

机译:学习布尔网络模型的实验设计方案

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摘要

>Motivation: A holy grail of biological research is a working model of the cell. Current modeling frameworks, especially in the protein–protein interaction domain, are mostly topological in nature, calling for stronger and more expressive network models. One promising alternative is logic-based or Boolean network modeling, which was successfully applied to model signaling regulatory circuits in human. Learning such models requires observing the system under a sufficient number of different conditions. To date, the amount of measured data is the main bottleneck in learning informative Boolean models, underscoring the need for efficient experimental design strategies.>Results: We developed novel design approaches that greedily select an experiment to be performed so as to maximize the difference or the entropy in the results it induces with respect to current best-fit models. Unique to our maximum difference approach is the ability to account for all (possibly exponential number of) Boolean models displaying high fit to the available data. We applied both approaches to simulated and real data from the EFGR and IL1 signaling systems in human. We demonstrate the utility of the developed strategies in substantially improving on a random selection approach. Our design schemes highlight the redundancy in these datasets, leading up to 11-fold savings in the number of experiments to be performed.>Availability and implementation: Source code will be made available upon acceptance of the manuscript.>Contact:
机译:>动机:生物学研究的圣杯是细胞的工作模型。当前的建模框架,尤其是在蛋白质-蛋白质相互作用领域,本质上大多是拓扑结构,需要更强大和更具表达力的网络模型。一种有前途的替代方法是基于逻辑或布尔网络建模,该模型已成功应用于人体内信号调节电路的建模。学习此类模型需要在足够数量的不同条件下观察系统。迄今为止,测量数据量是学习信息丰富的布尔模型的主要瓶颈,突显了对有效实验设计策略的需求。>结果:我们开发了新颖的设计方法,可以贪婪地选择要执行的实验,因此从而最大程度地提高与当前最佳拟合模型相关的结果差异或熵。我们最大差异方法的独特之处在于能够考虑所有布尔模型(可能呈指数形式),这些模型对可用数据显示出高度的拟合度。我们将两种方法都应用于来自人类EFGR和IL1信号系统的模拟和真实数据。我们证明了所开发策略在实质上改善随机选择方法上的效用。我们的设计方案着重说明了这些数据集中的冗余性,从而使要进行的实验数量最多节省了11倍。>可用性和实现:在接受手稿时将提供源代码。< strong>联系方式:

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