Llopis-Belenguer Cristina, Balbuena Juan Antonio, Blasco-Costa Isabel, Karvonen Anssi, Sarabeev Volodimir, Jokela Jukka
Institute of Integrative Biology, D-USYS, ETH Zürich, Zürich, Switzerland.
Department of Aquatic Ecology, EAWAG, Dübendorf, Switzerland.
Ecology. 2023 Apr;104(4):e3974. doi: 10.1002/ecy.3974. Epub 2023 Mar 2.
Bipartite network analysis is a powerful tool to study the processes structuring interactions in ecological communities. In applying the method, it is assumed that the sampled interactions provide an accurate representation of the actual community. However, acquiring a representative sample may be difficult as not all species are equally abundant or easily identifiable. Two potential sampling issues can compromise the conclusions of bipartite network analyses: failure to capture the full range of interactions (sampling completeness) and use of a taxonomic level higher than species to evaluate the network (taxonomic resolution). We asked how commonly used descriptors of bipartite antagonistic communities (modularity, nestedness, connectance, and specialization [H ']) are affected by reduced host sampling completeness, parasite taxonomic resolution, and their crossed effect, as they are likely to co-occur. We used a quantitative niche model to generate weighted bipartite networks that resembled natural host-parasite communities. The descriptors were more sensitive to uncertainty in parasite taxonomic resolution than to host sampling completeness. When only 10% of parasite taxonomic resolution was retained, modularity and specialization decreased by 76% and ~12%, respectively, and nestedness and connectance increased by ~114% and ~345% respectively. The loss of taxonomic resolution led to a wide range of possible communities, which made it difficult to predict its effects on a given network. With regards to host sampling completeness, standardized nestedness, connectance, and specialization were robust, whereas modularity was sensitive (30% decrease). The combination of both sampling issues had an additive effect on modularity. In communities with low effort for both sampling issues (50%-10% of sampling completeness and taxonomic resolution), estimators of modularity, and nestedness could not be distinguished from those of random assemblages. Thus, the categorical description of communities with low sampling effort (e.g., if a community is modular or not) should be done with caution. We recommend evaluating both sampling completeness and taxonomic certainty when conducting bipartite network analyses. Care should also be exercised when using nonrobust descriptors (the four descriptors for parasite taxonomic resolution; modularity for host sampling completeness) when sampling issues are likely to affect a dataset.
二分网络分析是研究生态群落中构建相互作用过程的有力工具。在应用该方法时,假定所采样的相互作用能准确反映实际群落。然而,获取具有代表性的样本可能很困难,因为并非所有物种都同样丰富或易于识别。两个潜在的采样问题可能会影响二分网络分析的结论:未能捕捉到所有的相互作用(采样完整性)以及使用高于物种水平的分类等级来评估网络(分类分辨率)。我们研究了二分拮抗群落常用的描述指标(模块性、嵌套性、连通性和专业化程度[H'])如何受到宿主采样完整性降低、寄生虫分类分辨率以及它们的交叉效应的影响,因为这些情况可能会同时出现。我们使用定量生态位模型生成类似于自然宿主 - 寄生虫群落的加权二分网络。这些描述指标对寄生虫分类分辨率的不确定性比对宿主采样完整性更敏感。当仅保留10%的寄生虫分类分辨率时,模块性和专业化程度分别下降了约76%和约12%,而嵌套性和连通性分别增加了约114%和约345%。分类分辨率的丧失导致了广泛的可能群落,这使得难以预测其对给定网络的影响。关于宿主采样完整性,标准化后的嵌套性、连通性和专业化程度较为稳健,而模块性则较为敏感(下降约30%)。这两个采样问题的组合对模块性有累加效应。在两个采样问题都投入较少的群落中(采样完整性和分类分辨率均为50% - 10%),模块性和嵌套性的估计值与随机组合的估计值无法区分。因此,对于采样投入较少的群落进行分类描述(例如,一个群落是否具有模块性)时应谨慎。我们建议在进行二分网络分析时评估采样完整性和分类确定性。当采样问题可能影响数据集时,在使用不稳健的描述指标(寄生虫分类分辨率的四个指标;宿主采样完整性的模块性)时也应谨慎。