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首页> 外文期刊>Ecological indicators >Integration of invertebrate traits into predictive models for indirect assessment of stream functional integrity: A case study in Portugal
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Integration of invertebrate traits into predictive models for indirect assessment of stream functional integrity: A case study in Portugal

机译:将无脊椎动物性状整合到预测模型中以间接评估河流功能完整性:葡萄牙的案例研究

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摘要

Biological traits are increasingly used for describing ecological functioning of stream benthic assemblages. Such approaches associate information on species distribution to their biological characteristics (e.g. life history, physiology, dispersal ability) providing a biological trait profile of communities. They may complement structural bioassessment measures using taxonomic composition by providing indirect information on stream ecological functioning, with the additional advantage of being less constrained by biogeographic differences. A multivariate predictive model, that provides a site-specific list of expected taxa at least disturbed conditions was recently developed for the bioassessment of Portuguese streams. Here, we tested if the inclusion of trait information in the model would also enable the detection of most common anthropogenic disturbances (i.e., organic contamination, hydrological disturbance) and provide diagnostic hints for causal relationships. We used existing information on 11 invertebrate biological traits and their 54 categories to convert the observed and expected taxonomic composition at several test sites into expected and observed trait compositions. The first three axes of a normalised PCA (Principal Components Analysis) performed on disturbance variables accounted for 42.7% of explained variability. The proportion of variance in disturbance explained by the three types of trait-based metrics (overall observed/expected trait composition, trait-category profile difference and traits profile dissimilarity) ranged between 9% and 32%. Our predictions made on the response of observed to expected trait categories for organic contamination were generally confirmed and demonstrated that disturbances resulted in a change in those traits conferring species resilience capacity and sensitivity to oxygen depletion, as well as a shift in the proportion of animals with filter-feeding behaviour. Variations in observed to expected trait-category differences showed that even a small increase in organic contamination led to a significant change in the biological trait profile, as expected. By contrast, only two out of 11 trait category predictions were confirmed for hydro-logical disturbance. Finally, we found that 4/11 and 9/11 observed to expected trait differences showed a significant deviation with organic contamination and hydrological disturbance, respectively, whereas all 11 observed to expected trait differences responded to overall disturbance. These changes in trait profiles reflect changes in the performance of invertebrate communities to cope with disturbance, which potentially can alter ecosystem functioning (e.g., energy flow or chemical cycling). In conclusion, the integration of biological trait information in an AUSRIVAS type predictive model allowed the detection of a general disturbance gradient and particularly organic contamination, which indicates their value in addition to taxonomic-based assessment.
机译:越来越多的生物特征被用来描述河流底栖生物的生态功能。这些方法将物种分布的信息与其生物特征(例如生活史,生理学,传播能力)相关联,从而提供了群落的生物特征概况。它们可以通过提供有关河流生态功能的间接信息来补充利用生物分类学组成的结构生物评估措施,并具有不受生物地理差异限制的额外优势。最近开发了一种多变量预测模型,该模型提供了特定地点的预期生物分类群列表,至少可以提供受干扰的条件,以进行葡萄牙河流的生物评估。在这里,我们测试了在模型中包含特征信息是否还可以检测到最常见的人为干扰(即有机污染,水文干扰)并提供因果关系的诊断提示。我们使用了11种无脊椎动物生物学特征及其54个类别的现有信息,将在几个测试点观察到的和预期的生物分类组成转换为期望和观察到的性状组成。对扰动变量执行的归一化PCA(主成分分析)的前三个轴占解释的可变性的42.7%。由三种基于特征的指标(总体观察/预期特征组成,特征-类别特征差异和特征特征不相似)解释的扰动方差比例在9%至32%之间。我们对观察到的对有机污染物的预期性状分类的反应所作的预测得到了普遍的证实,并证明了干扰导致这些性状发生改变,从而赋予了物种抗逆能力和对耗氧的敏感性,并且动物的比例发生了变化。滤食行为。观察到的预期性状类别差异的变化表明,即使有机污染物的少量增加,也会导致生物学性状概况发生显着变化,正如预期的那样。相比之下,在水文扰动中,只有11个特征类别预测中的2个得到了确认。最后,我们发现观察到的预期性状差异的4/11和9/11分别显示出与有机污染物和水文干扰的显着偏差,而观察到的预期性状差异的所有11个响应都对整体干扰有响应。性状特征的这些变化反映了无脊椎动物群落应对干扰的性能变化,这可能会改变生态系统的功能(例如能量流或化学循环)。总之,将生物特征信息整合到AUSRIVAS类型的预测模型中,可以检测到一般的干扰梯度,尤其是有机污染物,这表明了它们的价值以及基于分类的评估。

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