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Evaluating scaling models in biology using hierarchical Bayesian approaches

机译:使用分层贝叶斯方法评估生物学中的缩放模型

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Theoretical models for allometric relationships between organismal form and function are typically tested by comparing a single predicted relationship with empirical data. Several prominent models, however, predict more than one allometric relationship, and comparisons among alternative models have not taken this into account. Here we evaluate several different scaling models of plant morphology within a hierarchical Bayesian framework that simultaneously fits multiple scaling relationships to three large allometric datasets. The scaling models include: inflexible universal models derived from biophysical assumptions (e.g. elastic similarity or fractal networks), a flexible variation of a fractal network model, and a highly flexible model constrained only by basic algebraic relationships. We demonstrate that variation in intraspecific allometric scaling exponents is inconsistent with the universal models, and that more flexible approaches that allow for biological variability at the species level outperform universal models, even when accounting for relative increases in model complexity.
机译:通常通过将单个预测关系与经验数据进行比较来测试有机体形式与功能之间异速关系的理论模型。但是,几个著名的模型预测了不止一种异形关系,并且替代模型之间的比较没有考虑到这一点。在这里,我们在分级贝叶斯框架内评估几种不同的植物形态缩放模型,该模型同时将多个缩放关系拟合到三个大型异形数据集。缩放模型包括:从生物物理假设(例如弹性相似性或分形网络)得出的不灵活的通用模型,分形网络模型的灵活变体以及仅受基本代数关系约束的高度灵活的模型。我们证明种内异体缩放比例指数的变化与通用模型不一致,并且即使考虑到模型复杂性的相对增加,允许物种水平上的生物变异的更灵活的方法也优于通用模型。

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