Nicholson David N, Greene Casey S
Department of Systems Pharmacology and Translational Therapeutics, University of Pennsylvania, United States.
Department of Systems Pharmacology and Translational Therapeutics, Perelman School of Medicine, University of Pennsylvania, Childhood Cancer Data Lab, Alex's Lemonade Stand Foundation, United States.
Comput Struct Biotechnol J. 2020 Jun 2;18:1414-1428. doi: 10.1016/j.csbj.2020.05.017. eCollection 2020.
Knowledge graphs can support many biomedical applications. These graphs represent biomedical concepts and relationships in the form of nodes and edges. In this review, we discuss how these graphs are constructed and applied with a particular focus on how machine learning approaches are changing these processes. Biomedical knowledge graphs have often been constructed by integrating databases that were populated by experts via manual curation, but we are now seeing a more robust use of automated systems. A number of techniques are used to represent knowledge graphs, but often machine learning methods are used to construct a low-dimensional representation that can support many different applications. This representation is designed to preserve a knowledge graph's local and/or global structure. Additional machine learning methods can be applied to this representation to make predictions within genomic, pharmaceutical, and clinical domains. We frame our discussion first around knowledge graph construction and then around unifying representational learning techniques and unifying applications. Advances in machine learning for biomedicine are creating new opportunities across many domains, and we note potential avenues for future work with knowledge graphs that appear particularly promising.
知识图谱可支持多种生物医学应用。这些图谱以节点和边的形式表示生物医学概念及关系。在本综述中,我们讨论这些图谱是如何构建和应用的,特别关注机器学习方法如何改变这些过程。生物医学知识图谱通常是通过整合由专家手动策划填充的数据库构建而成,但我们现在看到自动化系统的使用更为广泛。有多种技术用于表示知识图谱,但机器学习方法常被用于构建可支持许多不同应用的低维表示。这种表示旨在保留知识图谱的局部和/或全局结构。可将其他机器学习方法应用于此表示,以在基因组学、制药和临床领域进行预测。我们首先围绕知识图谱构建展开讨论,然后围绕统一表示学习技术和统一应用进行讨论。生物医学机器学习的进展正在许多领域创造新机会,我们指出了知识图谱未来工作中特别有前景的潜在途径。