EMD Serono Research and Development Inc., 45A Middlesex Turnpike, Billerica, MA, 01821, USA.
BMC Bioinformatics. 2021 Oct 29;22(1):527. doi: 10.1186/s12859-021-04342-x.
In the pharmaceutical industry, competing for few validated drug targets there is a drive to identify new ways of therapeutic intervention. Here, we attempted to define guidelines to evaluate a target's 'fitness' based on its node characteristics within annotated protein functional networks to complement contingent therapeutic hypotheses.
We observed that targets of approved, selective small molecule drugs exhibit high node centrality within protein networks relative to a broader set of investigational targets spanning various development stages. Targets of approved drugs also exhibit higher centrality than other proteins within their respective functional class. These findings expand on previous reports of drug targets' network centrality by suggesting some centrality metrics such as low topological coefficient as inherent characteristics of a 'good' target, relative to other exploratory targets and regardless of its functional class. These centrality metrics could thus be indicators of an individual protein's 'fitness' as potential drug target. Correlations between protein nodes' network centrality and number of associated publications underscored the possibility of knowledge bias as an inherent limitation to such predictions.
Despite some entanglement with knowledge bias, like structure-oriented 'druggability' assessments of new protein targets, centrality metrics could assist early pharmaceutical discovery teams in evaluating potential targets with limited experimental proof of concept and help allocate resources for an effective drug discovery pipeline.
在制药行业,为了争夺少数经过验证的药物靶点,人们正在寻找新的治疗干预方法。在这里,我们试图根据注释的蛋白质功能网络中目标的节点特征来定义评估目标“适合度”的准则,以补充偶然的治疗假设。
我们观察到,相对于涵盖各种开发阶段的广泛的研究目标,已批准的选择性小分子药物的靶点在蛋白质网络中具有较高的节点中心度。已批准药物的靶点在其各自的功能类别内也比其他蛋白质具有更高的中心度。这些发现扩展了先前关于药物靶点网络中心度的报告,表明一些中心度指标(如低拓扑系数)相对于其他探索性靶点,是“好”靶点的固有特征,而与其功能类别无关。因此,这些中心度指标可以作为个体蛋白质作为潜在药物靶点的“适合度”的指标。蛋白质节点网络中心度与相关文献数量之间的相关性强调了知识偏见作为此类预测固有局限性的可能性。
尽管存在一些与知识偏见的纠缠,如针对新蛋白质靶点的基于结构的“可成药性”评估,但中心度指标可以帮助早期药物发现团队评估那些具有有限实验概念验证的潜在靶点,并帮助为有效的药物发现管道分配资源。