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首页> 外文期刊>Journal of the Royal Society Interface >An experimental design tool to optimize inference precision in data-driven mathematical models of bacterial infections in vivo
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An experimental design tool to optimize inference precision in data-driven mathematical models of bacterial infections in vivo

机译:一种实验设计工具,可以在体内数据驱动数学模型中优化推理精度

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摘要

The management of bacterial diseases calls for a detailed knowledge about the dynamic changes in host-bacteria interactions. Biological insights are gained by integrating experimental data with mechanistic mathematical models to infer experimentally unobservable quantities. This inter-disciplinary field would benefit from experiments with maximal information content yielding high-precision inference. Here, we present a computationally efficient tool for optimizing experimental design in terms of parameter inference in studies using isogenic-tagged strains. We study the effect of three experimental design factors: number of biological replicates, sampling timepoint selection and number of copies per tagged strain. We conduct a simulation study to establish the relationship between our optimality criterion and the size of parameter estimate confidence intervals, and showcase its application in a range of biological scenarios reflecting different dynamics patterns observed in experimental infections. We show that in low-variance systems with low killing and replication rates, predicting high-precision experimental designs is consistently achieved; higher replicate sizes and strategic timepoint selection yield more precise estimates. Finally, we address the question of resource allocation under constraints; given a fixed number of host animals and a constraint on total inoculum size per host, infections with fewer strains at higher copies per strain lead to higher-precision inference.
机译:细菌疾病的管理需要详细了解宿主细菌相互作用的动态变化。通过将实验数据与机械数学模型相结合来推断实验上不可观测的量,从而获得生物学见解。这一跨学科领域将受益于最大信息量的实验,从而产生高精度的推理。在这里,我们提出了一个计算效率高的工具,用于在使用等基因标记菌株的研究中,根据参数推断优化实验设计。我们研究了三个实验设计因素的影响:生物重复数、采样时间点选择和每个标记菌株的拷贝数。我们进行了一项模拟研究,以建立我们的最优性标准与参数估计置信区间大小之间的关系,并展示了它在反映实验感染中观察到的不同动力学模式的一系列生物学场景中的应用。我们表明,在低杀死率和复制率的低方差系统中,预测高精度的实验设计是一致的;更大的复制规模和策略性的时间点选择会产生更精确的估计。最后,我们讨论了约束条件下的资源分配问题;给定固定数量的宿主动物和每个宿主的总接种量限制,每个菌株的拷贝数越高,感染菌株越少,推断的精确度就越高。

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