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Inferring distributions of chirodropid box-jellyfishes (Cnidaria: Cubozoa) in geographic and ecological space using ecological niche modeling

机译:利用生态位模型推论手性盒状水母(刺ni属:Cubozoa)在地理和生态空间中的分布

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ABSTRACT: Geographic distributions of many marine species are poorly documented or understood, which is particularly true for marine invertebrates. Ecological niche modeling (ENM) offers a means to address this issue, but to date most studies using ENM have focused on terrestrial taxa. In general, ENM relates environmental information to species’ occurrence data to estimate the ecological niche of a species, rather than just interpolating a geographic distribution. This process leads to predictions of suitable habitat that generally exceed the range actually inhabited by a single species: such areas of geographic over-prediction (commission) may be inhabited by closely related species, and the model thus offers the inferential power to predict the potential distributions of these species as well. We explored the utility of ENM to investigate potential distributions of chirodropid box-jellyfishes (Cnidaria: Cubozoa), a group of highly toxic invertebrates whose biogeography is poorly understood. We were able to predict reported occurrences of box-jellyfishes throughout the Indo-Pacific from data of closely related species. By doing so, we demonstrate that geographic over-prediction in ENM can be desirable when concerned with predictions beyond current knowledge of species’ distributions. Several methods are used for ENM; here, we compared the 2 most commonly used methods, the Genetic Algorithm for Rule-Set Predictions (GARP) and a maximum entropy approach (Maxent). Our comparison shows that Maxent may be more prone to overfitting, whereas GARP tends to produce broader predictions. Transforming continuous Maxent predictions into binary predictions remedies problems of overfitting, and allows for effective extrapolation into unsampled geographic space.
机译:摘要:许多海洋物种的地理分布文献记载或了解不多,对于海洋无脊椎动物尤其如此。生态位模型(ENM)提供了解决此问题的方法,但迄今为止,大多数使用ENM的研究都集中在陆地生物分类上。通常,ENM将环境信息与物种的发生数据相关联,以估计物种的生态位,而不仅仅是对地理分布进行插值。此过程导致对合适栖息地的预测通常超出单个物种实际居住的范围:此类地理过度预测(委托)区域可能被紧密相关的物种居住,因此该模型提供了推论能力来预测潜在的这些物种的分布也是如此。我们探索了ENM的用途,以研究手性盒状水母(刺ni:Cubozoa)的潜在分布,这是一组对生物地理了解甚少的剧毒无脊椎动物。我们能够根据密切相关物种的数据预测整个印度太平洋中盒水母的报告发生情况。通过这样做,我们证明了当关注除物种分布的当前知识之外的预测时,ENM中的地理过度预测可能是理想的。 ENM使用几种方法。在这里,我们比较了两种最常用的方法,即规则集预测的遗传算法(GARP)和最大熵方法(Maxent)。我们的比较表明,Maxent可能更倾向于过度拟合,而GARP倾向于产生更广泛的预测。将连续的Maxent预测转换为二进制预测可以解决过度拟合的问题,并可以有效地外推到未采样的地理空间中。

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