Graph Machine Learning (GML) is receiving growing interest within the pharmaceutical and biotechnology industries for its ability to model biomolecular structures, the functional relationships between them, and integrate multi-omic datasets - amongst other data types. Herein, we present a multidisciplinary academic-industrial review of the topic within the context of drug discovery and development. After introducing key terms and modelling approaches, we move chronologically through the drug development pipeline to identify and summarise work incorporating: target identification, design of small molecules and biologics, and drug repurposing. Whilst the field is still emerging, key milestones including repurposed drugs entering in vivo studies, suggest graph machine learning will become a modelling framework of choice within biomedical machine learning.
翻译:制药和生物技术行业对它建立生物分子结构模型的能力、它们之间的功能关系以及将多组数据集与其他数据类型相结合的能力越来越感兴趣。在这里,我们在药物发现和开发的背景下对这一专题进行了多学科学术-工业审查。在采用关键术语和建模方法之后,我们按时间顺序通过药物开发管道确定和总结工作,其中包括:目标识别、小分子和生物学设计以及药物再造。虽然该领域仍在出现,但关键里程碑包括进入活体研究的重新用途药物,建议图形机器学习将成为生物医学机器学习中选择的建模框架。