Department of Mathematics, King's College London, London, United Kingdom ; Therametrics AG, Stans, Switzerland.
Department of Mathematics, King's College London, London, United Kingdom.
PLoS One. 2014 Jan 9;9(1):e84912. doi: 10.1371/journal.pone.0084912. eCollection 2014.
We introduce a methodology to efficiently exploit natural-language expressed biomedical knowledge for repurposing existing drugs towards diseases for which they were not initially intended. Leveraging on developments in Computational Linguistics and Graph Theory, a methodology is defined to build a graph representation of knowledge, which is automatically analysed to discover hidden relations between any drug and any disease: these relations are specific paths among the biomedical entities of the graph, representing possible Modes of Action for any given pharmacological compound. We propose a measure for the likeliness of these paths based on a stochastic process on the graph. This measure depends on the abundance of indirect paths between a peptide and a disease, rather than solely on the strength of the shortest path connecting them. We provide real-world examples, showing how the method successfully retrieves known pathophysiological Mode of Action and finds new ones by meaningfully selecting and aggregating contributions from known bio-molecular interactions. Applications of this methodology are presented, and prove the efficacy of the method for selecting drugs as treatment options for rare diseases.
我们介绍了一种方法,可有效地利用以自然语言表达的生物医学知识,将现有药物重新用于最初并非针对的疾病。利用计算语言学和图论的发展,定义了一种方法来构建知识的图形表示,然后自动分析该表示以发现药物和疾病之间的隐藏关系:这些关系是图中生物医学实体之间的特定路径,代表任何给定药理化合物的可能作用模式。我们基于图上的随机过程提出了一种用于衡量这些路径的可能性的方法。该度量取决于肽和疾病之间的间接路径的丰富程度,而不仅仅取决于连接它们的最短路径的强度。我们提供了实际示例,展示了该方法如何成功检索到已知的病理生理学作用模式,并通过有意义地选择和汇总来自已知生物分子相互作用的贡献来找到新的作用模式。介绍了该方法的应用,并证明了该方法选择药物作为治疗罕见疾病的治疗方法的有效性。