Leveraging genomic information to predict environmental preferences of bacteria.

IF 10.8 1区 环境科学与生态学 Q1 ECOLOGY ISME Journal Pub Date : 2024-01-08 DOI:10.1093/ismejo/wrae195
Josep Ramoneda, Michael Hoffert, Elias Stallard-Olivera, Emilio O Casamayor, Noah Fierer
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Abstract

Genomic information is now available for a broad diversity of bacteria, including uncultivated taxa. However, we have corresponding knowledge on environmental preferences (i.e. bacterial growth responses across gradients in oxygen, pH, temperature, salinity, and other environmental conditions) for a relatively narrow swath of bacterial diversity. These limits to our understanding of bacterial ecologies constrain our ability to predict how assemblages will shift in response to global change factors, design effective probiotics, or guide cultivation efforts. We need innovative approaches that take advantage of expanding genome databases to accurately infer the environmental preferences of bacteria and validate the accuracy of these inferences. By doing so, we can broaden our quantitative understanding of the environmental preferences of the majority of bacterial taxa that remain uncharacterized. With this perspective, we highlight why it is important to infer environmental preferences from genomic information and discuss the range of potential strategies for doing so. In particular, we highlight concrete examples of how both cultivation-independent and cultivation-dependent approaches can be integrated with genomic data to develop predictive models. We also emphasize the limitations and pitfalls of these approaches and the specific knowledge gaps that need to be addressed to successfully expand our understanding of the environmental preferences of bacteria.

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利用基因组信息预测细菌的环境偏好。
现在,我们已经掌握了包括未培殖类群在内的多种细菌的基因组信息。然而,我们对环境偏好(即细菌在氧气、pH 值、温度、盐度和其他环境条件梯度上的生长反应)的了解相对较少。我们对细菌生态的这些认识局限性制约了我们预测细菌群如何应对全球变化因素、设计有效的益生菌或指导培养工作的能力。我们需要创新的方法,利用不断扩大的基因组数据库来准确推断细菌的环境偏好,并验证这些推断的准确性。通过这样做,我们可以扩大对大多数仍未定性的细菌类群的环境偏好的定量了解。从这个角度出发,我们强调了从基因组信息推断环境偏好的重要性,并讨论了推断环境偏好的一系列潜在策略。我们特别举例说明了如何将独立于培养的方法和依赖于培养的方法与基因组数据相结合来开发预测模型。我们还强调了这些方法的局限性和陷阱,以及为成功扩大我们对细菌环境偏好的了解而需要解决的具体知识差距。
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来源期刊
ISME Journal
ISME Journal 环境科学-生态学
CiteScore
22.10
自引率
2.70%
发文量
171
审稿时长
2.6 months
期刊介绍: The ISME Journal covers the diverse and integrated areas of microbial ecology. We encourage contributions that represent major advances for the study of microbial ecosystems, communities, and interactions of microorganisms in the environment. Articles in The ISME Journal describe pioneering discoveries of wide appeal that enhance our understanding of functional and mechanistic relationships among microorganisms, their communities, and their habitats.
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