PSL Université Paris: EPHE-UPVD-CNRS, USR 3278 CRIOBE, Université de Perpignan, Perpignan, France.
Laboratoire d'Excellence "CORAIL," Perpignan, France.
PLoS Biol. 2020 Dec 28;18(12):e3000702. doi: 10.1371/journal.pbio.3000702. eCollection 2020 Dec.
Understanding species' roles in food webs requires an accurate assessment of their trophic niche. However, it is challenging to delineate potential trophic interactions across an ecosystem, and a paucity of empirical information often leads to inconsistent definitions of trophic guilds based on expert opinion, especially when applied to hyperdiverse ecosystems. Using coral reef fishes as a model group, we show that experts disagree on the assignment of broad trophic guilds for more than 20% of species, which hampers comparability across studies. Here, we propose a quantitative, unbiased, and reproducible approach to define trophic guilds and apply recent advances in machine learning to predict probabilities of pairwise trophic interactions with high accuracy. We synthesize data from community-wide gut content analyses of tropical coral reef fishes worldwide, resulting in diet information from 13,961 individuals belonging to 615 reef fish. We then use network analysis to identify 8 trophic guilds and Bayesian phylogenetic modeling to show that trophic guilds can be predicted based on phylogeny and maximum body size. Finally, we use machine learning to test whether pairwise trophic interactions can be predicted with accuracy. Our models achieved a misclassification error of less than 5%, indicating that our approach results in a quantitative and reproducible trophic categorization scheme, as well as high-resolution probabilities of trophic interactions. By applying our framework to the most diverse vertebrate consumer group, we show that it can be applied to other organismal groups to advance reproducibility in trait-based ecology. Our work thus provides a viable approach to account for the complexity of predator-prey interactions in highly diverse ecosystems.
理解物种在食物网中的作用需要准确评估它们的营养生态位。然而,跨生态系统划定潜在营养相互作用具有挑战性,并且由于缺乏经验信息,通常会导致基于专家意见的营养类群定义不一致,尤其是在应用于高度多样化的生态系统时。我们以珊瑚礁鱼类为模型群体,表明专家对 20%以上物种的广泛营养类群分配存在分歧,这阻碍了研究之间的可比性。在这里,我们提出了一种定量的、无偏的和可重复的定义营养类群的方法,并应用机器学习的最新进展来准确预测成对营养相互作用的概率。我们综合了来自全球热带珊瑚礁鱼类的广泛群落肠道内容物分析的数据,得到了来自 13961 个个体的饮食信息,这些个体属于 615 种珊瑚礁鱼类。然后,我们使用网络分析来确定 8 个营养类群,并使用贝叶斯系统发育建模来显示营养类群可以基于系统发育和最大体型来预测。最后,我们使用机器学习来测试是否可以准确预测成对的营养相互作用。我们的模型的错误分类率低于 5%,表明我们的方法产生了定量的、可重复的营养分类方案,以及高分辨率的营养相互作用概率。通过将我们的框架应用于最多样化的脊椎动物消费者群体,我们表明它可以应用于其他生物体群体,以提高基于特征的生态学的可重复性。因此,我们的工作为解释高度多样化生态系统中捕食者-猎物相互作用的复杂性提供了一种可行的方法。