Global community science data on mammals underreport small and diurnal species

IF 3 4区 环境科学与生态学 Q3 ENVIRONMENTAL SCIENCES
Lucas Rodriguez Forti, Judit K. Szabo
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Abstract

Although community (or citizen) science has revolutionized biodiversity data collection and expanded its potential application, these datasets are commonly affected by bias. For instance, observers’ attention towards biodiversity is often led by the aesthetic and economic values of organisms, resulting in the under- and overrepresentation of species. Mammals in general are more conspicuous and charismatic than most other groups and therefore hold a unique appeal for observers that are likely to contribute to community-science platforms. Nevertheless, not all mammals are equally attractive to the human observer, and depending on their ecological and phenotypical traits, different species are represented in varying degrees in datasets collected by non-professional scientists. Herein, we assess the contribution of community science observations to global mammal occurrence data, examining how species traits influence the number of contributed observations. We compiled and analyzed spatiotemporal patterns in over 2 million observations globally from the iNaturalist platform. We found that large, crepuscular, and widely distributed species were overrepresented compared to smaller, diurnal species with a narrower distribution. Marine mammals represented 3.1% of species and 7.0% of observations. Nevertheless, the average number of observations per species was 1217.2 for marine species compared to 690.5 for terrestrial species. While bats and rodents were underrepresented, less diverse groups such as elephants and monotremes were overrepresented. Around 55% of mammal species are currently represented in the iNaturalist dataset, and our findings reveal biases linked to species traits, offering opportunities to increase the representation of currently underrepresented mammal species in global biodiversity datasets by adaptive sampling.

关于哺乳动物的全球社区科学数据少报了小型和日间活动的物种
虽然社区(或公民)科学已经彻底改变了生物多样性数据收集并扩大了其潜在应用,但这些数据集通常受到偏见的影响。例如,观察者对生物多样性的关注常常被生物的美学和经济价值所引导,导致物种的代表性不足或过度。总的来说,哺乳动物比大多数其他群体更引人注目,更有魅力,因此对可能为社区科学平台做出贡献的观察者具有独特的吸引力。然而,并不是所有的哺乳动物对人类观察者都有同样的吸引力,根据它们的生态和表型特征,不同物种在非专业科学家收集的数据集中有不同程度的代表。在此,我们评估了社区科学观测对全球哺乳动物发生数据的贡献,研究了物种特征如何影响贡献观测的数量。我们从iNaturalist平台上收集并分析了全球200多万份观测数据的时空模式。我们发现,大的、黄昏的、分布广泛的物种与较小的、白天的、分布较窄的物种相比,代表性过高。海洋哺乳动物占物种总数的3.1%,占观测总数的7.0%。然而,海洋物种的平均观测次数为1217.2次,而陆生物种为690.5次。虽然蝙蝠和啮齿类动物的代表性不足,但大象和单孔目动物等多样性较低的群体的代表性却过高。目前在iNaturalist数据集中有大约55%的哺乳动物物种,我们的研究结果揭示了与物种特征相关的偏见,为通过自适应采样增加目前在全球生物多样性数据集中代表性不足的哺乳动物物种提供了机会。
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来源期刊
Environmental Monitoring and Assessment
Environmental Monitoring and Assessment 环境科学-环境科学
CiteScore
4.70
自引率
6.70%
发文量
1000
审稿时长
7.3 months
期刊介绍: Environmental Monitoring and Assessment emphasizes technical developments and data arising from environmental monitoring and assessment, the use of scientific principles in the design of monitoring systems at the local, regional and global scales, and the use of monitoring data in assessing the consequences of natural resource management actions and pollution risks to man and the environment.
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