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Mobilizing and integrating big data in studies of spatial and phylogenetic patterns of biodiversity

机译:在生物多样性的空间和系统发育模式研究中动员和整合大数据

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摘要

The current global challenges that threaten biodiversity are immense and rapidly growing. These biodiversity challenges demand approaches that meld bioinformatics, large-scale phylogeny reconstruction, use of digitized specimen data, and complex post-tree analyses (e.g. niche modeling, niche diversification, and other ecological analyses). Recent developments in phylogenetics coupled with emerging cyberinfrastructure and new data sources provide unparalleled opportunities for mobilizing and integrating massive amounts of biological data, driving the discovery of complex patterns and new hypotheses for further study. These developments are not trivial in that biodiversity data on the global scale now being collected and analyzed are inherently complex. The ongoing integration and maturation of biodiversity tools discussed here is transforming biodiversity science, enabling what we broadly term “next-generation” investigations in systematics, ecology, and evolution (i.e., “biodiversity science”). New training that integrates domain knowledge in biodiversity and data science skills is also needed to accelerate research in these areas. Integrative biodiversity science is crucial to the future of global biodiversity. We cannot simply react to continued threats to biodiversity, but via the use of an integrative, multifaceted, big data approach, researchers can now make biodiversity projections to provide crucial data not only for scientists, but also for the public, land managers, policy makers, urban planners, and agriculture.
机译:当前威胁生物多样性的全球挑战是巨大且迅速增长的。这些生物多样性挑战要求融合生物信息学,大规模系统发育重建,使用数字化标本数据以及复杂的后树分析(例如生态位建模,生态位多样化和其他生态分析)的方法。系统发育学的最新发展以及新兴的网络基础设施和新的数据源为动员和整合大量的生物数据提供了无与伦比的机会,从而推动了复杂模式和新假设的发现,需要进一步研究。这些发展并非微不足道,因为目前正在收集和分析的全球范围内的生物多样性数据具有内在的复杂性。这里讨论的生物多样性工具的不断整合和成熟正在改变生物多样性科学,使我们能够广泛地将其称为系统,生态和进化方面的“下一代”研究(即“生物多样性科学”)。还需要进行新的培训,将领域知识整合到生物多样性和数据科学技能中,以加快在这些领域的研究。综合生物多样性科学对全球生物多样性的未来至关重要。我们不能简单地对持续存在的对生物多样性的威胁做出反应,但是通过使用综合的,多方面的大数据方法,研究人员现在可以做出生物多样性预测,不仅为科学家,而且为公众,土地管理者,决策者提供重要数据,城市规划师和农业。

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