DGCNN 方法将来源于元基因组的分类群和功能信息联系起来,有助于深入了解全球土壤有机碳。

IF 7.8 1区 生物学 Q1 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Laura-Jayne Gardiner, Matthew Marshall, Katharina Reusch, Chris Dearden, Mark Birmingham, Anna Paola Carrieri, Edward O Pyzer-Knapp, Ritesh Krishna, Andrew L Neal
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引用次数: 0

摘要

元基因组学可深入了解样本中存在的微生物类群,并通过基因鉴定了解群落的功能潜力。然而,在下游分析中,分类信息和功能信息通常是分开考虑的。我们开发了可解释的机器学习(ML)方法来建立元基因组数据模型,将物种的生物学表征与其相关的基因编码功能结合到模型中。我们将我们的方法用于研究土壤有机碳(SOC)储量。首先,我们将多样化的全球土壤微生物组样本与环境数据相结合,提高了经典 ML 的预测性能,并为了解土壤微生物组在全球碳循环中的作用提供了新的视角。我们对经典 ML 模型识别出的预测类群进行了网络分析,为它们的生态意义提供了背景,将关注点从最具预测性的类群扩展到模型中的 "隐藏 "特征,而这些特征可能会被认为是使用标准可解释性方法预测性较低的类群。接下来,我们为单个微生物组开发了独特的图表示法,将微生物类群与其相关功能直接联系起来,从而能够通过深度图卷积神经网络(DGCNN)预测 SOC。DGCNNs 的解释区分了关键个体物种功能的重要性,提供了与 SOC 相关的基因组序列差异,如基因缺失/获取。这些方法确定了毛蕊花科(Verrucomicrobiaceae)的几个成员和一系列基因编码的功能(如与碳水化合物代谢有关的功能)对 SOC 储量的重要性以及有效的全球 SOC 预测因子。这些研究相对不足但分布广泛的生物可能在全球 SOC 动态中发挥重要作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DGCNN approach links metagenome-derived taxon and functional information providing insight into global soil organic carbon.

Metagenomics can provide insight into the microbial taxa present in a sample and, through gene identification, the functional potential of the community. However, taxonomic and functional information are typically considered separately in downstream analyses. We develop interpretable machine learning (ML) approaches for modelling metagenomic data, combining the biological representation of species with their associated genetically encoded functions within models. We apply our methods to investigate soil organic carbon (SOC) stocks. First, we combine a diverse global set of soil microbiome samples with environmental data, improving the predictive performance of classic ML and providing new insights into the role of soil microbiomes in global carbon cycling. Our network analysis of predictive taxa identified by classical ML models provides context for their ecological significance, extending the focus beyond just the most predictive taxa to 'hidden' features within the model that might be considered less predictive using standard methods for explainability. We next develop unique graph representations for individual microbiomes, linking microbial taxa to their associated functions directly, enabling predictions of SOC via deep graph convolutional neural networks (DGCNNs). Interpretation of the DGCNNs distinguished between the importance of functions of key individual species, providing genome sequence differences, e.g., gene loss/acquisition, that associate with SOC. These approaches identify several members of the Verrucomicrobiaceae family and a range of genetically encoded functions, e.g., related to carbohydrate metabolism, as important for SOC stocks and effective global SOC predictors. These relatively understudied but widespread organisms could play an important role in SOC dynamics globally.

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来源期刊
npj Biofilms and Microbiomes
npj Biofilms and Microbiomes Immunology and Microbiology-Microbiology
CiteScore
12.10
自引率
3.30%
发文量
91
审稿时长
9 weeks
期刊介绍: npj Biofilms and Microbiomes is a comprehensive platform that promotes research on biofilms and microbiomes across various scientific disciplines. The journal facilitates cross-disciplinary discussions to enhance our understanding of the biology, ecology, and communal functions of biofilms, populations, and communities. It also focuses on applications in the medical, environmental, and engineering domains. The scope of the journal encompasses all aspects of the field, ranging from cell-cell communication and single cell interactions to the microbiomes of humans, animals, plants, and natural and built environments. The journal also welcomes research on the virome, phageome, mycome, and fungome. It publishes both applied science and theoretical work. As an open access and interdisciplinary journal, its primary goal is to publish significant scientific advancements in microbial biofilms and microbiomes. The journal enables discussions that span multiple disciplines and contributes to our understanding of the social behavior of microbial biofilm populations and communities, and their impact on life, human health, and the environment.
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