非平衡生物物理过程计算表达能力的限制

Carlos Floyd, Aaron R. Dinner, Arvind Murugan, Suriyanarayanan Vaikuntanathan
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摘要

许多生物决策过程可以被视为利用各种化学和物理过程作为 "生物硬件",对一组输入执行分类任务。在这种情况下,了解在生物物理介质中实例化的分类函数在计算表达能力上的固有限制非常重要。在这里,我们将生化网络建模为马尔可夫跃迁过程,并训练它们执行分类任务,从而研究它们的计算表达能力。我们揭示了这些系统的输入-输出功能的几个意料之外的限制,并进一步证明这些限制可以通过杂交结合等生化机制来解除。我们分析了决策边界的灵活性和清晰度,以及这些网络的分类能力。此外,我们还发现了网络受限分类的独特特征,包括跨度树的相关子集的出现和具有多个盆地的 "能量景观 "的增加。我们的发现对于理解和设计生物与合成化学环境中的物理计算系统具有重要意义。
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Limits on the computational expressivity of non-equilibrium biophysical processes
Many biological decision-making processes can be viewed as performing a classification task over a set of inputs, using various chemical and physical processes as "biological hardware." In this context, it is important to understand the inherent limitations on the computational expressivity of classification functions instantiated in biophysical media. Here, we model biochemical networks as Markov jump processes and train them to perform classification tasks, allowing us to investigate their computational expressivity. We reveal several unanticipated limitations on the input-output functions of these systems, which we further show can be lifted using biochemical mechanisms like promiscuous binding. We analyze the flexibility and sharpness of decision boundaries as well as the classification capacity of these networks. Additionally, we identify distinctive signatures of networks trained for classification, including the emergence of correlated subsets of spanning trees and a creased "energy landscape" with multiple basins. Our findings have implications for understanding and designing physical computing systems in both biological and synthetic chemical settings.
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