Department of Physics and Astronomy, Northwestern University, Evanston, IL, 60208, USA.
Initiative for the Theoretical Sciences, The Graduate Center, CUNY, New York, NY, 10016, USA.
Nat Commun. 2020 Feb 20;11(1):975. doi: 10.1038/s41467-020-14806-y.
The reliable detection of environmental molecules in the presence of noise is an important cellular function, yet the underlying computational mechanisms are not well understood. We introduce a model of two interacting sensors which allows for the principled exploration of signal statistics, cooperation strategies and the role of energy consumption in optimal sensing, quantified through the mutual information between the signal and the sensors. Here we report that in general the optimal sensing strategy depends both on the noise level and the statistics of the signals. For joint, correlated signals, energy consuming (nonequilibrium), asymmetric couplings result in maximum information gain in the low-noise, high-signal-correlation limit. Surprisingly we also find that energy consumption is not always required for optimal sensing. We generalise our model to incorporate time integration of the sensor state by a population of readout molecules, and demonstrate that sensor interaction and energy consumption remain important for optimal sensing.
在存在噪声的情况下可靠地检测环境分子是一种重要的细胞功能,但基本的计算机制尚不清楚。我们引入了一个由两个相互作用的传感器组成的模型,该模型允许对信号统计、合作策略以及能量消耗在最佳传感中的作用进行原则性的探索,这通过信号与传感器之间的互信息来量化。在这里,我们报告说,一般来说,最佳传感策略既取决于噪声水平,也取决于信号的统计特性。对于联合的、相关的信号,在低噪声、高信号相关性极限下,能量消耗(非平衡)、不对称耦合会导致信息增益最大化。令人惊讶的是,我们还发现,能量消耗并不总是最佳传感所必需的。我们将我们的模型推广到通过一群读出分子来整合传感器状态的时间积分,并证明传感器相互作用和能量消耗对于最佳传感仍然很重要。