Roche Diagnostics, Scientific Information Services, Nonnenwald 2, 82377 Penzberg, Germany.
Humboldt-Universität zu Berlin, Wissensmanagement in der Bioinformatik, Rudower Chaussee 25, 12489 Berlin, Germany.
Drug Discov Today. 2016 Nov;21(11):1740-1744. doi: 10.1016/j.drudis.2016.07.008. Epub 2016 Jul 18.
The development of cancer drugs is time-consuming and expensive. In particular, failures in late-stage clinical trials are a major cost driver for pharmaceutical companies. This puts a high demand on methods that provide insights into the success chances of new potential medicines. In this study, we systematically analyze publication patterns emerging along the drug discovery process of targeted cancer therapies, starting from basic research to drug approval - or failure. We find clear differences in the patterns of approved drugs compared with those that failed in Phase II/III. Feeding these features into a machine learning classifier allows us to predict the approval or failure of a targeted cancer drug significantly better than educated guessing. We believe that these findings could lead to novel measures for supporting decision making in drug development.
癌症药物的研发既耗时又昂贵。特别是,晚期临床试验的失败是制药公司的主要成本驱动因素。这对能够深入了解新潜在药物成功机会的方法提出了很高的要求。在这项研究中,我们系统地分析了从基础研究到药物批准或失败的靶向癌症治疗药物发现过程中出现的出版模式。我们发现,已批准药物的模式与在 II/III 期临床试验中失败的药物模式有明显的差异。将这些特征输入到机器学习分类器中,使我们能够比有根据的猜测更准确地预测靶向癌症药物的批准或失败。我们相信,这些发现可以为药物开发中的决策支持提供新的措施。