MicrobiomeKG:通过知识图谱连接微生物组研究和宿主健康。

IF 2.3
Frontiers in systems biology Pub Date : 2025-08-29 eCollection Date: 2025-01-01 DOI:10.3389/fsysb.2025.1544432
Skye L Goetz, Amy K Glen, Gwênlyn Glusman
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引用次数: 0

摘要

微生物群是一个由数万亿微生物组成的复杂群落,分布在人体的各个部位,在维持宿主的健康和福祉方面发挥着关键作用。了解微生物群与其宿主之间的相互作用为促进健康的潜在策略提供了有价值的见解,包括针对微生物群的干预措施。我们已经创建了MicrobiomeKG,这是一个微生物组研究的知识图谱,它将各种分类群和微生物途径与宿主健康联系起来。这种新颖的知识图谱从支持已发表的微生物组论文的补充表中派生出算法生成的知识断言。通过从补充表中识别知识断言并将其表示为知识图,我们将这些有价值的内容转换为一种理想的假设生成格式。为了解决研究背景、方法和报告标准的高度异质性,我们利用神经网络实现了一个标准化的边缘评分系统,我们使用它来执行中心性分析。我们提出了三个用例:通过微生物分类群将蠕虫感染与非酒精性脂肪肝疾病联系起来,探索Alistipes属与炎症之间的联系,以及确定双歧杆菌属与注意缺陷多动障碍之间的最核心联系。MicrobiomeKG部署用于综合分析和假设生成,包括编程和通过生物医学数据翻译生态系统。通过弥合数据差距和促进发现新的生物学关系,MicrobiomeKG将通过更深入地了解微生物对人类健康和疾病机制的贡献,帮助推进个性化医疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

MicrobiomeKG: bridging microbiome research and host health through knowledge graphs.

MicrobiomeKG: bridging microbiome research and host health through knowledge graphs.

MicrobiomeKG: bridging microbiome research and host health through knowledge graphs.

MicrobiomeKG: bridging microbiome research and host health through knowledge graphs.

The microbiome represents a complex community of trillions of microorganisms residing in various body parts and plays critical roles in maintaining host health and wellbeing. Understanding the interactions between microbiota and their host offers valuable insights into potential strategies for promoting health, including microbiome-targeted interventions. We have created MicrobiomeKG, a knowledge graph for microbiome research, that bridges various taxa and microbial pathways with host health. This novel knowledge graph derives algorithmically generated knowledge assertions from the supplementary tables that support published microbiome papers. By identifying knowledge assertions from supplementary tables and expressing them as knowledge graphs, we are casting this valuable content into a format that is ideal for hypothesis generation. To address the high heterogeneity of study contexts, methodologies, and reporting standards, we leveraged neural networks to implement a standardized edge scoring system, which we use to perform centrality analyses. We present three example use cases: linking helminth infections with non-alcoholic fatty-liver disease via microbial taxa, exploring connections between the Alistipes genus and inflammation, and identifying the Bifidobacterium genus as the most central connection with attention deficit hyperactivity disorder. MicrobiomeKG is deployed for integrative analysis and hypothesis generation, both programmatically and via the Biomedical Data Translator ecosystem. By bridging data gaps and facilitating the discovery of new biological relationships, MicrobiomeKG will help advance personalized medicine through a deeper understanding of the microbial contributions to human health and disease mechanisms.

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