解读微生境结构中药物空间异质性下种群水平的响应。

Zhijian Hu, Kevin Wood
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摘要

细菌和癌细胞生活在一个空间异质性的环境中,其中迁移塑造了对定植和转移至关重要的微栖息地结构。生长、迁移和微生境结构之间的相互作用使预测种群对药物的反应(如清除或持续生长)变得复杂,这是一个长期存在的挑战。在这里,我们解开了生长-迁移动力学,并确定种群下降是由两个解耦的项决定的:空间生长变化项和微生境结构项。值得注意的是,微生境结构项可以被解释为与动态相关的中心性度量。对于固定的空间药物排列,我们表明,对这些中心性的解释揭示了不同的网络结构,即使具有相同的边缘密度、微生境数量和空间异质性,也会导致不同的种群水平响应。边缘密度的增加使人口响应从增长转向清除,支持反中心性-连通性关系,并反映了高迁移率的影响。此外,我们推导了一个充分条件,在不同的空间增长率安排下,无论药物引起的时空波动如何,人口都会强劲下降。此外,我们证明,改变由药物-细菌相互作用决定的最大生长死亡比,可以导致不同的种群下降曲线,并出现最小下降阶段。这些发现解决了预测人群水平反应的关键挑战,并为相同药物剂量下的不同临床结果提供了见解。这项工作可能为解释治疗动态和优化空间显式药物给药策略提供一种新的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Deciphering and steering population-level response under spatial drug heterogeneity on microhabitat structures.

Bacteria and cancer cells inhabit spatially heterogeneous environments, where migration shapes microhabitat structures critical for colonization and metastasis. The interplay between growth, migration, and spatial structure complicates the prediction of population responses to drug treatment-such as clearance or persistence-even under the same spatially averaged growth rate. Accurately predicting these responses is essential for designing effective treatment strategies. Here, we propose a minimal growth-migration model to study population dynamics on discrete microhabitat structures under spatial drug heterogeneity. By applying a kernel transformation, we map the original structure to an effective fully connected graph and derive a new exact criterion for population response based on a regularized Laplacian kernel reweighted by local growth rates. This criterion connects to forest closeness centrality and yields analytical bounds and sufficient conditions for population growth or decline. We find that higher structural connectivity-like increased migration-generally promotes decline. Our framework also informs optimal spatial drug assignments, which reduce to selecting interconnected subcores in the effective complete graph. For partially controllable microhabitats or unknown drug distributions, we identify strategies that ensure population decline. Overall, our results offer a new theoretical perspective on drug response in spatially structured populations and provide practical guidance for optimizing spatially explicit dosing strategies in heterogeneous environments.

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