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Approximate Bayesian computation reveals the importance of repeated measurements for parameterising cell-based models of growing tissues

机译:近似贝叶斯计算揭示了对生长组织的参数化电池模型的重复测量的重要性

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The growth and dynamics of epithelial tissues govern many morphogenetic processes in embryonic development. A recent quantitative transition in data acquisition, facilitated by advances in genetic and live imaging techniques, is paving the way for new insights to these processes. Computational models can help us understand and interpret observations, and then make predictions for future experiments that can distinguish between hypothesised mechanisms. Increasingly, cell-based modelling approaches such as vertex models are being used to help understand the mechanics underlying epithelial morphogenesis. These models typically seek to reproduce qualitative phenomena, such as cell sorting or tissue buckling. However, it remains unclear to what extent quantitative data can be used to constrain these models so that they can then be used to make quantitative, experimentally testable predictions. To address this issue, we perform an in silica study to investigate whether vertex model parameters can be inferred from imaging data, and explore methods to quantify the uncertainty of such estimates. Our approach requires the use of summary statistics to estimate parameters. Here, we focus on summary statistics of cellular packing and of laser ablation experiments, as are commonly reported from imaging studies. We find that including data from repeated experiments is necessary to generate reliable parameter estimates that can facilitate quantitative model predictions. (C) 2018 Elsevier Ltd. All rights reserved.
机译:上皮组织的生长和动态治理胚胎发育中的许多形态发生过程。最近在数据采集中的数量过渡,通过遗传和实时成像技术的进步促进,正在为这些过程的新见解铺平道路。计算模型可以帮助我们理解和解释观察,然后对可以区分假设机制的未来实验进行预测。越来越多地,基于细胞的建模方法,例如顶点模型,用于帮助理解上皮形态发生的机制。这些模型通常寻求再现定性现象,例如细胞分选或组织屈曲。然而,它仍然不清楚定量数据可以用于限制这些模型,以便它们可以用于进行定量,实验可测试的预测。为了解决这个问题,我们在二氧化硅研究中执行一个,以研究是否可以从成像数据推断出顶点模型参数,并探索量化这种估计的不确定性的方法。我们的方法需要使用汇总统计来估算参数。在这里,我们专注于蜂窝包装和激光烧蚀实验的统计数据,如常规报道的成像研究。我们发现,包括来自重复实验的数据是必要产生可促进定量模型预测的可靠参数估计。 (c)2018年elestvier有限公司保留所有权利。

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