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A Twofold Usage of an Agent-Based Model of Vascular Adaptation to Design Clinical Experiments

机译:基于代理的血管适应模型在临床设计中的双重用途

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摘要

Several computational models of Vein Graft Bypass (VGB) adaptation have been developed in order to improve the surgical outcome and they all share a common property: their accuracy relies on a winning choice of their driving coefficients which are best to be retrieved from experimental data.Since experiments are time-consuming and resources-demanding, the golden standard is to know in advance which measures need to be retrieved on the experimental table and out of how many samples. Accordingly, our goal is to build a computational framework able to pre-design an effective experimental structure to optimize the computational models setup.Our hypothesis is that an Agent-Based Model (ABM) developed by our group is comparable enough to a true set of experiments to be used to generate reliable virtual experimental data.Thanks to a twofold usage of our ABM, we created a filter to be posed before the real experiment in order to drive its optimal design.This work is the natural continuation of a previous study from our group [], where the attention was posed on simple single-cellular events models. With this new version we focused on more complex models with the purpose of verifying that the complexity of the experimental setup grows proportionally with the accuracy of the model itself.
机译:为了改善手术效果,已经开发了几种静脉移植旁路适应性(VGB)的计算模型,它们都具有共同的特性:其准确性依赖于其驱动系数的最佳选择,最好从实验数据中进行选择。由于实验既耗时又需要资源,因此黄金标准是要事先知道需要在实验台上检索多少个测量值以及多少个样本。因此,我们的目标是建立一个能够预先设计有效的实验结构以优化计算模型设置的计算框架。我们的假设是,我们小组开发的基于代理的模型(ABM)足以与一组真实的模型进行比较。实验被用来生成可靠的虚拟实验数据。由于我们对ABM的双重使用,我们创建了一个要在实际实验之前提出的过滤器,以驱动其最佳设计。这项工作是先前研究的自然延续我们的小组[],将注意力放在简单的单细胞事件模型上。在这个新版本中,我们专注于更复杂的模型,目的是验证实验装置的复杂性是否随模型本身的准确性成比例地增长。

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