School of Environmental Studies, University of Victoria, Victoria, British Columbia, Canada.
Earth to Ocean Research Group, Department of Biological Sciences, 8888 University Drive, Simon Fraser University, Burnaby, British Columbia, Canada.
PLoS One. 2023 Jun 23;18(6):e0287150. doi: 10.1371/journal.pone.0287150. eCollection 2023.
The exponential growth and interest in community science programs is producing staggering amounts of biodiversity data across broad temporal and spatial scales. Large community science datasets such as iNaturalist and eBird are allowing ecologists and conservation biologists to answer novel questions that were not possible before. However, the opportunistic nature of many of these enormous datasets leads to biases. Spatial bias is a common problem, where observations are biased towards points of access like roads and trails. iNaturalist-a popular biodiversity community science platform-exhibits strong spatial biases, but it is unclear how these biases affect the quality of biodiversity data collected. Thus, we tested whether fine-scale spatial bias due to sampling from trails affects taxonomic richness estimates. We compared timed transects with experienced iNaturalist observers on and off trails in British Columbia, Canada. Using generalized linear mixed models, we found higher overall taxonomic richness on trails than off trails. In addition, we found more exotic as well as native taxa on trails than off trails. There was no difference between on and off trail observations for species that are rarely observed. Thus, fine-scale spatial bias from trails does not reduce the quality of biodiversity measurements, a promising result for those interested in using iNaturalist data for research and conservation management.
社区科学项目呈指数级增长,其在广泛的时间和空间尺度上产生了惊人的生物多样性数据。像 iNaturalist 和 eBird 这样的大型社区科学数据集使生态学家和保护生物学家能够回答以前不可能回答的新问题。然而,这些庞大数据集的许多机会主义性质导致了偏差。空间偏差是一个常见的问题,观察结果偏向于道路和小径等可进入的地点。iNaturalist-一个受欢迎的生物多样性社区科学平台-表现出强烈的空间偏差,但尚不清楚这些偏差如何影响收集的生物多样性数据的质量。因此,我们测试了由于从小径采样而导致的精细空间偏差是否会影响分类丰富度的估计。我们在加拿大不列颠哥伦比亚省的小径上和小径外比较了有经验的 iNaturalist 观察员的定时样带。使用广义线性混合模型,我们发现小径上的总体分类丰富度高于小径外。此外,我们发现小径上的外来种和本地种比小径外的多。对于很少观察到的物种,在小径上和小径外的观察结果没有差异。因此,小径的精细空间偏差不会降低生物多样性测量的质量,这对于那些有兴趣使用 iNaturalist 数据进行研究和保护管理的人来说是一个有希望的结果。