预测模型揭示的深海珊瑚和海绵微生物群落的假定过去、现在和未来的空间分布。

IF 5.1 Q1 ECOLOGY
ISME communications Pub Date : 2024-11-15 eCollection Date: 2024-01-01 DOI:10.1093/ismeco/ycae142
Kathrin Busch, Francisco Javier Murillo, Camille Lirette, Zeliang Wang, Ellen Kenchington
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引用次数: 0

摘要

了解生物多样性的空间分布格局是评估和确保海洋完整性和复原力的关键。特别是在深海中,现场监测需要复杂的仪器和大量的财政投资,建模方法对于从分散的数据点转向预测连续地图至关重要。这些建模方法通常在微生物水平上运行,但宿主相关微生物组的时空预测并不是目标。这是特别有问题的,因为先前的研究已经强调,宿主相关微生物可能显示的分布模式不仅与宿主生物地理不完全相关,而且与其他因素(如普遍的环境条件)也不完全相关。本文建立了一种新的模拟方法,并结合环境数据、宿主数据和微生物组数据,预测了深海海绵和珊瑚微生物组的时空分布格局。这种方法可以预测微生物组在尺度上的时空分布模式,这些尺度目前没有被传统的海上采样方法所覆盖。总之,我们提出的预测允许(i)识别过去、现在和未来的微生物生物多样性热点,(ii)基于性状的预测将微生物与微生物生物多样性联系起来,以及(iii)识别微生物群落组成(关键分类群)在环境梯度和不断变化的环境条件下的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Putative past, present, and future spatial distributions of deep-sea coral and sponge microbiomes revealed by predictive models.

Knowledge of spatial distribution patterns of biodiversity is key to evaluate and ensure ocean integrity and resilience. Especially for the deep ocean, where in situ monitoring requires sophisticated instruments and considerable financial investments, modeling approaches are crucial to move from scattered data points to predictive continuous maps. Those modeling approaches are commonly run on the macrobial level, but spatio-temporal predictions of host-associated microbiomes are not being targeted. This is especially problematic as previous research has highlighted that host-associated microbes may display distribution patterns that are not perfectly correlated not only with host biogeographies, but also with other factors, such as prevailing environmental conditions. We here establish a new simulation approach and present predicted spatio-temporal distribution patterns of deep-sea sponge and coral microbiomes, making use of a combination of environmental data, host data, and microbiome data. This approach allows predictions of microbiome spatio-temporal distribution patterns on scales that are currently not covered by classical sampling approaches at sea. In summary, our presented predictions allow (i) identification of microbial biodiversity hotspots in the past, present, and future, (ii) trait-based predictions to link microbial with macrobial biodiversity, and (iii) identification of shifts in microbial community composition (key taxa) across environmental gradients and shifting environmental conditions.

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