应用于物种出现和相互作用的机器学习:生物多样性评估和南极浮游生物分布建模中缺失的环节

IF 4.6 2区 环境科学与生态学 Q1 ECOLOGY
Marco Grillo, Stefano Schiaparelli, Tiziana Durazzano, Letterio Guglielmo, Antonia Granata, Falk Huettmann
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引用次数: 0

摘要

浮游生物是占据水生营养网络低层的重要生态类别,是环境变化的良好指标。然而,大多数研究都是针对单一物种或类群的分布,并没有考虑到现实世界中主导生态过程的复杂生物相互作用。本研究重点分析了南极海洋浮游植物、中浮游动物和微浮游动物,考察了它们之间的生物相互作用和共存关系。实地数据得出了 1053 个生物相互作用值、762 个共存值和 15 个零值。根据它们的丰度和生态作用,我们选择了六个浮游植物群和六个桡足类物种。我们使用 23 个环境描述因子对分类群的分布进行了建模,以准确反映其出现情况。采样是在 2016-2017 年意大利国家南极计划(PNRA)"P-ROSE "项目期间在东罗斯海进行的。将机器学习技术应用于物种出现数据,生成了 48 幅预测性物种分布图(SDM),为整个罗斯海区域绘制了三维地图。这些模型定量预测了每种桡足类和浮游植物的出现情况,为了解生物和营养相互作用的潜在变化提供了重要信息,对南极海洋资源的管理和保护具有重要意义。接收方操作特征(ROC)结果表明,浮游植物群落中的蓝藻(74%)和桡足类群落中的南极副桡足类(83%)的模型效率最高。SDM显示罗斯海区域存在明显的空间异质性,浮游植物群落的平均相对出现指数值为0.28(最小:0;最大:0.65),桡足类群落的平均相对出现指数值为0.39(最小:0;最大:0.71)。这项研究的结果对于以科学为基础管理世界上最原始的生态系统之一,以及应对气候引起的物种相互作用的潜在变化至关重要。我们的研究强调了在浮游生物研究中考虑生物交互作用的重要性,利用开放存取和机器学习来建立可测量和可重复的分布模型,并为面对环境变化的知情保护战略提供重要的生态学见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning applied to species occurrence and interactions: the missing link in biodiversity assessment and modelling of Antarctic plankton distribution
Plankton is the essential ecological category that occupies the lower levels of aquatic trophic networks, representing a good indicator of environmental change. However, most studies deal with distribution of single species or taxa and do not take into account the complex of biological interactions of the real world that rule the ecological processes. This study focused on analyzing Antarctic marine phytoplankton, mesozooplankton, and microzooplankton, examining their biological interactions and co-existences. Field data yielded 1053 biological interaction values, 762 coexistence values, and 15 zero values. Six phytoplankton assemblages and six copepod species were selected based on their abundance and ecological roles. Using 23 environmental descriptors, we modelled the distribution of taxa to accurately represent their occurrences. Sampling was conducted during the 2016–2017 Italian National Antarctic Programme (PNRA) ‘P-ROSE’ project in the East Ross Sea. Machine learning techniques were applied to the occurrence data to generate 48 predictive species distribution maps (SDMs), producing 3D maps for the entire Ross Sea area. These models quantitatively predicted the occurrences of each copepod and phytoplankton assemblage, providing crucial insights into potential variations in biotic and trophic interactions, with significant implications for the management and conservation of Antarctic marine resources. The Receiver Operating Characteristic (ROC) results indicated the highest model efficiency, for Cyanophyta (74%) among phytoplankton assemblages and Paralabidocera antarctica (83%) among copepod communities. The SDMs revealed distinct spatial heterogeneity in the Ross Sea area, with an average Relative Index of Occurrence values of 0.28 (min: 0; max: 0.65) for phytoplankton assemblages and 0.39 (min: 0; max: 0.71) for copepods. The results of this study are essential for a science-based management for one of the world’s most pristine ecosystems and addressing potential climate-induced alterations in species interactions. Our study emphasizes the importance of considering biological interactions in planktonic studies, employing open access and machine learning for measurable and repeatable distribution modelling, and providing crucial ecological insights for informed conservation strategies in the face of environmental change.
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来源期刊
Ecological Processes
Ecological Processes Environmental Science-Ecological Modeling
CiteScore
8.50
自引率
4.20%
发文量
64
审稿时长
13 weeks
期刊介绍: Ecological Processes is an international, peer-reviewed, open access journal devoted to quality publications in ecological studies with a focus on the underlying processes responsible for the dynamics and functions of ecological systems at multiple spatial and temporal scales. The journal welcomes manuscripts on techniques, approaches, concepts, models, reviews, syntheses, short communications and applied research for advancing our knowledge and capability toward sustainability of ecosystems and the environment. Integrations of ecological and socio-economic processes are strongly encouraged.
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