Ipiña Emiliano Perez, Camley Brian A
Department of Physics & Astronomy, Johns Hopkins University, Baltimore, Maryland 21218, USA.
Department of Physics & Astronomy and Biophysics, Johns Hopkins University, Baltimore, Maryland 21218, USA.
Phys Rev E. 2022 Apr;105(4-1):044410. doi: 10.1103/PhysRevE.105.044410.
Eukaryotic cells sense chemical gradients to decide where and when to move. Clusters of cells can sense gradients more accurately than individual cells by integrating measurements of the concentration made across the cluster. Is this gradient-sensing accuracy impeded when cells have limited knowledge of their position within the cluster, i.e., limited positional information? We apply maximum likelihood estimation to study gradient-sensing accuracy of a cluster of cells with finite positional information. If cells must estimate their location within the cluster, this lowers the accuracy of collective gradient sensing. We compare our results with a tug-of-war model where cells respond to the gradient by polarizing away from their neighbors without relying on their positional information. As the cell positional uncertainty increases, there is a trade-off where the tug-of-war model responds more accurately to the chemical gradient. However, for sufficiently large cell clusters or sufficiently shallow chemical gradients, the tug-of-war model will always be suboptimal to one that integrates information from all cells, even if positional uncertainty is high.
真核细胞通过感知化学梯度来决定移动的地点和时间。细胞簇能够比单个细胞更准确地感知梯度,这是通过整合整个细胞簇内浓度的测量值来实现的。当细胞对其在细胞簇中的位置了解有限,即位置信息有限时,这种梯度感知的准确性会受到影响吗?我们应用最大似然估计来研究具有有限位置信息的细胞簇的梯度感知准确性。如果细胞必须估计它们在细胞簇中的位置,这会降低集体梯度感知的准确性。我们将我们的结果与一个拔河模型进行比较,在该模型中,细胞通过远离邻居极化来响应梯度,而不依赖于它们的位置信息。随着细胞位置不确定性的增加,存在一种权衡,即拔河模型对化学梯度的响应更准确。然而,对于足够大的细胞簇或足够浅的化学梯度,即使位置不确定性很高,拔河模型相对于整合所有细胞信息的模型也总是次优的。