On population density estimation via quorum sensing

Nicolò Michelusi
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引用次数: 2

Abstract

Microbial communities regulate various collective functions using a system of cell-cell communication known as quorum sensing. Quorum sensing allows bacteria to estimate the density of their local population, and coordinate gene expression accordingly. Understanding and modeling of quorum sensing regulation can pave the way to the design of nano-networks and, in particular, of communication and coordination schemes among large numbers of nano-machines that need to perform collective decisions based on their local density. In this paper, the performance of population density estimation via quorum sensing is investigated. The distribution of local autoinducers within each cell is derived in closed form, for an asymptotic scenario of large cell population. Based on it, the maximum likelihood estimator is derived, and is compared numerically to a low-complexity estimator. It is shown that the mean squared error of the low-complexity estimator closely approaches that of the maximum-likelihood estimator, and is thus suitable in computationally constrained nano-machines.
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基于群体感应的种群密度估计
微生物群落利用一种称为群体感应的细胞间通讯系统来调节各种集体功能。群体感应使细菌能够估计其本地种群的密度,并相应地协调基因表达。对群体感应调节的理解和建模可以为纳米网络的设计铺平道路,特别是为需要根据其局部密度执行集体决策的大量纳米机器之间的通信和协调方案铺平道路。本文研究了基于群体感应的种群密度估计的性能。对于大细胞群体的渐近情况,以封闭形式导出了每个细胞内局部自诱导体的分布。在此基础上,导出了极大似然估计量,并与低复杂度估计量进行了数值比较。结果表明,低复杂度估计量的均方误差与最大似然估计量的均方误差非常接近,因此适用于计算受限的纳米机器。
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