Target Identification., BenevolentAI, United Kingdom of Great Britain and Northern Ireland.
Expert Opin Drug Discov. 2021 Sep;16(9):1057-1069. doi: 10.1080/17460441.2021.1910673. Epub 2021 Apr 12.
Knowledge graphs have proven to be promising systems of information storage and retrieval. Due to the recent explosion of heterogeneous multimodal data sources generated in the biomedical domain, and an industry shift toward a systems biology approach, knowledge graphs have emerged as attractive methods of data storage and hypothesis generation.
In this review, the author summarizes the applications of knowledge graphs in drug discovery. They evaluate their utility; differentiating between academic exercises in graph theory, and useful tools to derive novel insights, highlighting target identification and drug repurposing as two areas showing particular promise. They provide a case study on COVID-19, summarizing the research that used knowledge graphs to identify repurposable drug candidates. They describe the dangers of degree and literature bias, and discuss mitigation strategies.
Whilst knowledge graphs and graph-based machine learning have certainly shown promise, they remain relatively immature technologies. Many popular link prediction algorithms fail to address strong biases in biomedical data, and only highlight biological associations, failing to model causal relationships in complex dynamic biological systems. These problems need to be addressed before knowledge graphs reach their true potential in drug discovery.
知识图谱已被证明是一种很有前途的信息存储和检索系统。由于生物医学领域中产生的异构多模态数据源的近期爆炸式增长,以及向系统生物学方法的行业转变,知识图谱已经成为有吸引力的数据存储和假设生成方法。
在这篇综述中,作者总结了知识图谱在药物发现中的应用。他们评估了它们的实用性;区分了图论中的学术练习和有用的工具,以得出新的见解,突出目标识别和药物再利用作为两个显示出特殊前景的领域。他们提供了一个关于 COVID-19 的案例研究,总结了使用知识图谱来识别可再利用药物候选物的研究。他们描述了度和文献偏差的危险,并讨论了缓解策略。
虽然知识图谱和基于图的机器学习确实显示出了前景,但它们仍然是相对不成熟的技术。许多流行的链接预测算法未能解决生物医学数据中的强烈偏差,并且仅突出了生物学关联,而未能在复杂的动态生物系统中建模因果关系。在知识图谱在药物发现中发挥其真正潜力之前,这些问题需要得到解决。