利用知识图谱理解生态系统:高致病性禽流感的应用。

IF 2.4 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Bioinformatics advances Pub Date : 2025-02-05 eCollection Date: 2025-01-01 DOI:10.1093/bioadv/vbaf016
Hailey Robertson, Barbara A Han, Adrian A Castellanos, David Rosado, Guppy Stott, Ryan Zimmerman, John M Drake, Ellie Graeden
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引用次数: 0

摘要

动机:生态系统是复杂的。表示关于生态系统的异质知识是一项普遍的挑战,因为数据来自许多子学科,存在于不同的来源,并且只捕获支撑系统动力学的相互作用的子集。知识图已经成功地应用于组织异构数据和预测复杂系统中的新联系。虽然以前没有在生态学中广泛应用,但在系统动力学响应跨多个尺度的快速变化的时代,kg有很多可以提供的。结果:我们开发了一个KG,以证明该方法在高致病性禽流感(HPAI)的生态问题上的实用性。高致病性禽流感是一种具有广泛宿主范围、广泛地理分布和快速进化的高传染性病毒,具有大流行的潜力。我们描述了一个图表的发展,包括与HPAI相关的数据,包括病原体-宿主关联,物种分布和人口统计数据,使用定义数据集内部和之间关系的语义本体。我们使用该图表来执行一组概念验证分析,验证方法并识别高致病性生态模式。我们强调了KGs对生态学的推广价值,包括揭示先前已知关系和可测试假设的能力,以支持对生态系统的更深层次的机制理解。可用性和实现:数据和代码在MIT许可下可在GitHub上获得https://github.com/cghss-data-lab/uga-pipp。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Understanding ecological systems using knowledge graphs: an application to highly pathogenic avian influenza.

Motivation: Ecological systems are complex. Representing heterogeneous knowledge about ecological systems is a pervasive challenge because data are generated from many subdisciplines, exist in disparate sources, and only capture a subset of interactions underpinning system dynamics. Knowledge graphs (KGs) have been successfully applied to organize heterogeneous data and to predict new linkages in complex systems. Though not previously applied broadly in ecology, KGs have much to offer in an era when system dynamics are responding to rapid changes across multiple scales.

Results: We developed a KG to demonstrate the method's utility for ecological problems focused on highly pathogenic avian influenza (HPAI), a highly transmissible virus with a broad host range, wide geographic distribution, and rapid evolution with pandemic potential. We describe the development of a graph to include data related to HPAI including pathogen-host associations, species distributions, and population demographics, using a semantic ontology that defines relationships within and between datasets. We use the graph to perform a set of proof-of-concept analyses validating the method and identifying patterns of HPAI ecology. We underscore the generalizable value of KGs to ecology including ability to reveal previously known relationships and testable hypotheses in support of a deeper mechanistic understanding of ecological systems.

Availability and implementation: The data and code are available under the MIT License on GitHub at https://github.com/cghss-data-lab/uga-pipp.

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CiteScore
1.60
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