German Centre for Integrative Biodiversity Research (iDiv) Halle-Jena-Leipzig, Deutscher Platz 5e, Leipzig, 04103, Germany.
Institute of Computer Science, Martin Luther University Halle-Wittenberg, Von-Seckendorff-Platz 1, Halle (Saale), 06120, Germany.
Conserv Biol. 2021 Apr;35(2):688-698. doi: 10.1111/cobi.13610. Epub 2020 Sep 28.
Estimates of biodiversity change are essential for the management and conservation of ecosystems. Accurate estimates rely on selecting representative sites, but monitoring often focuses on sites of special interest. How such site-selection biases influence estimates of biodiversity change is largely unknown. Site-selection bias potentially occurs across four major sources of biodiversity data, decreasing in likelihood from citizen science, museums, national park monitoring, and academic research. We defined site-selection bias as a preference for sites that are either densely populated (i.e., abundance bias) or species rich (i.e., richness bias). We simulated biodiversity change in a virtual landscape and tracked the observed biodiversity at a sampled site. The site was selected either randomly or with a site-selection bias. We used a simple spatially resolved, individual-based model to predict the movement or dispersal of individuals in and out of the chosen sampling site. Site-selection bias exaggerated estimates of biodiversity loss in sites selected with a bias by on average 300-400% compared with randomly selected sites. Based on our simulations, site-selection bias resulted in positive trends being estimated as negative trends: richness increase was estimated as 0.1 in randomly selected sites, whereas sites selected with a bias showed a richness change of -0.1 to -0.2 on average. Thus, site-selection bias may falsely indicate decreases in biodiversity. We varied sampling design and characteristics of the species and found that site-selection biases were strongest in short time series, for small grains, organisms with low dispersal ability, large regional species pools, and strong spatial aggregation. Based on these findings, to minimize site-selection bias, we recommend use of systematic site-selection schemes; maximizing sampling area; calculating biodiversity measures cumulatively across plots; and use of biodiversity measures that are less sensitive to rare species, such as the effective number of species. Awareness of the potential impact of site-selection bias is needed for biodiversity monitoring, the design of new studies on biodiversity change, and the interpretation of existing data.
生物多样性变化的估计对于生态系统的管理和保护至关重要。准确的估计依赖于选择具有代表性的地点,但监测通常侧重于特别感兴趣的地点。这种选址偏差如何影响生物多样性变化的估计在很大程度上是未知的。选址偏差可能发生在生物多样性数据的四个主要来源中,从公民科学、博物馆、国家公园监测和学术研究的可能性依次降低。我们将选址偏差定义为对密集分布的地点(即丰度偏差)或物种丰富的地点(即丰富度偏差)的偏好。我们在虚拟景观中模拟了生物多样性变化,并跟踪了抽样地点的观测生物多样性。该地点是随机选择的,还是具有选址偏差。我们使用简单的空间分辨、个体为基础的模型来预测个体在所选采样点内外的移动或扩散。与随机选择的地点相比,具有偏差的地点选择平均夸大了生物多样性损失的估计,高达 300-400%。根据我们的模拟结果,选址偏差导致正趋势被估计为负趋势:在随机选择的地点,丰富度增加估计为 0.1,而具有偏差的地点的丰富度变化平均为-0.1 到-0.2。因此,选址偏差可能错误地表明生物多样性下降。我们改变了采样设计和物种特征,发现选址偏差在短时间序列、小颗粒、扩散能力低的生物、大区域物种库和强空间聚集中最强。基于这些发现,为了最小化选址偏差,我们建议使用系统的选址方案;最大化采样面积;在斑块之间累积计算生物多样性指标;并使用对稀有物种不太敏感的生物多样性指标,例如有效物种数。在生物多样性监测、新的生物多样性变化研究的设计和现有数据的解释中,都需要意识到选址偏差的潜在影响。