Department of Microbiology, University of Georgia, Athens, GA 30602.
Department of Physics and Astronomy, University of Georgia, Athens, GA 30602.
Proc Natl Acad Sci U S A. 2017 Jun 6;114(23):E4592-E4601. doi: 10.1073/pnas.1620981114. Epub 2017 May 22.
Collective cell movement is critical to the emergent properties of many multicellular systems, including microbial self-organization in biofilms, embryogenesis, wound healing, and cancer metastasis. However, even the best-studied systems lack a complete picture of how diverse physical and chemical cues act upon individual cells to ensure coordinated multicellular behavior. Known for its social developmental cycle, the bacterium uses coordinated movement to generate three-dimensional aggregates called fruiting bodies. Despite extensive progress in identifying genes controlling fruiting body development, cell behaviors and cell-cell communication mechanisms that mediate aggregation are largely unknown. We developed an approach to examine emergent behaviors that couples fluorescent cell tracking with data-driven models. A unique feature of this approach is the ability to identify cell behaviors affecting the observed aggregation dynamics without full knowledge of the underlying biological mechanisms. The fluorescent cell tracking revealed large deviations in the behavior of individual cells. Our modeling method indicated that decreased cell motility inside the aggregates, a biased walk toward aggregate centroids, and alignment among neighboring cells in a radial direction to the nearest aggregate are behaviors that enhance aggregation dynamics. Our modeling method also revealed that aggregation is generally robust to perturbations in these behaviors and identified possible compensatory mechanisms. The resulting approach of directly combining behavior quantification with data-driven simulations can be applied to more complex systems of collective cell movement without prior knowledge of the cellular machinery and behavioral cues.
群体细胞运动对于许多多细胞系统的涌现特性至关重要,包括微生物在生物膜中的自我组织、胚胎发生、伤口愈合和癌症转移。然而,即使是研究得最好的系统,也缺乏对各种物理和化学线索如何作用于单个细胞以确保协调的多细胞行为的完整描述。众所周知, 细菌具有社会发育周期,它利用协调的运动来产生称为子实体的三维聚集物。尽管在识别控制子实体发育的基因方面取得了广泛的进展,但介导聚集的细胞行为和细胞间通讯机制在很大程度上仍不清楚。我们开发了一种方法来研究将荧光细胞跟踪与数据驱动模型相结合的涌现行为。这种方法的一个独特特征是能够识别影响观察到的聚集动力学的细胞行为,而无需完全了解潜在的生物学机制。荧光细胞跟踪揭示了单个细胞行为的巨大偏差。我们的建模方法表明,在聚集物内部降低细胞迁移率、向聚集物质心的偏向性游动以及沿径向对齐到最近的聚集物的相邻细胞,这些行为都可以增强聚集动力学。我们的建模方法还表明,聚集通常对这些行为的扰动具有鲁棒性,并确定了可能的补偿机制。这种直接将行为量化与数据驱动模拟相结合的方法,可以应用于更复杂的群体细胞运动系统,而无需事先了解细胞机制和行为线索。