分布数据对准确物种建模的影响:Litsea auriculata(月桂科)案例研究

Plants Pub Date : 2024-09-14 DOI:10.3390/plants13182581
Chao Tan, David Kay Ferguson, Yong Yang
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引用次数: 0

摘要

全球变暖已导致许多物种濒临灭绝甚至灭绝。描述和预测物种如何应对全球变暖是生物多样性研究的热点之一。物种分布模型根据物种出现数据预测物种的潜在分布。然而,分布数据的准确性对预测结果的影响却鲜有研究。在本研究中,我们以特有植物栗树(Litsea auriculata)(月桂科)为案例进行了研究。通过收集和组合该物种的六个不同数据集,我们使用 MaxEnt 进行了物种分布建模,然后进行了比较分析。结果表明,根据我们更新的完整正确数据集(数据集 1),该物种的适宜分布区主要位于湖北西南部和浙江北部的大别山区,平均昼夜温差(MDTR)和温度年较差(TAR)对枳壳的分布起着重要作用。与正确数据相比,错误数据导致预测分布区范围扩大,而基于正确但不完整数据的物种建模预测分布区范围缩小。我们发现,只有约 23.38% 的 Litsea auriculata 位于自然保护区内,因此存在巨大的保护缺口。我们的研究强调了正确、完整的分布数据对于准确预测物种分布区域的重要性;不完整和不正确的数据都会带来误导性的预测结果。此外,我们的研究还揭示了曙光苣苔的分布特征和保护缺口,为该物种制定合理的保护策略奠定了基础。
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Impacts of Distribution Data on Accurate Species Modeling: A Case Study of Litsea auriculata (Lauraceae)
Global warming has caused many species to become endangered or even extinct. Describing and predicting how species will respond to global warming is one of the hotspots of biodiversity research. Species distribution models predict the potential distribution of species based on species occurrence data. However, the impact of the accuracy of the distribution data on the prediction results is poorly studied. In this study, we used the endemic plant Litsea auriculata (Lauraceae) as a case study. By collecting and assembling six different datasets of this species, we used MaxEnt to perform species distribution modeling and then conducted comparative analyses. The results show that, based on our updated complete correct dataset (dataset 1), the suitable distribution of this species is mainly located in the Ta-pieh Mountain, southwestern Hubei and northern Zhejiang, and that mean diurnal temperature range (MDTR) and temperature annual range (TAR) play important roles in shaping the distribution of Litsea auriculata. Compared with the correct data, the wrong data leads to a larger and expanded range in the predicted distribution area, whereas the species modeling based on the correct but incomplete data predicts a small and contracted range. We found that only about 23.38% of Litsea auriculata is located within nature reserves, so there is a huge conservation gap. Our study emphasized the importance of correct and complete distribution data for accurate prediction of species distribution regions; both incomplete and incorrect data can give misleading prediction results. In addition, our study also revealed the distribution characteristics and conservation gap of Litsea auriculata, laying the foundation for the development of reasonable conservation strategies for this species.
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