Division of Systems Medicine, Department of Pediatrics, Stanford University School of Medicine, 251 Campus Drive, Stanford, CA 94305-5415, USA.
Sci Transl Med. 2011 Aug 17;3(96):96ra77. doi: 10.1126/scitranslmed.3001318.
The application of established drug compounds to new therapeutic indications, known as drug repositioning, offers several advantages over traditional drug development, including reduced development costs and shorter paths to approval. Recent approaches to drug repositioning use high-throughput experimental approaches to assess a compound's potential therapeutic qualities. Here, we present a systematic computational approach to predict novel therapeutic indications on the basis of comprehensive testing of molecular signatures in drug-disease pairs. We integrated gene expression measurements from 100 diseases and gene expression measurements on 164 drug compounds, yielding predicted therapeutic potentials for these drugs. We recovered many known drug and disease relationships using computationally derived therapeutic potentials and also predict many new indications for these 164 drugs. We experimentally validated a prediction for the antiulcer drug cimetidine as a candidate therapeutic in the treatment of lung adenocarcinoma, and demonstrate its efficacy both in vitro and in vivo using mouse xenograft models. This computational method provides a systematic approach for repositioning established drugs to treat a wide range of human diseases.
将已有的药物化合物应用于新的治疗用途,即药物重定位,与传统药物开发相比具有多个优势,包括降低开发成本和缩短审批途径。最近的药物重定位方法采用高通量实验方法来评估化合物的潜在治疗特性。在这里,我们提出了一种基于药物-疾病对的分子标记物综合测试的系统计算方法来预测新的治疗用途。我们整合了来自 100 种疾病的基因表达测量值和 164 种药物化合物的基因表达测量值,为这些药物预测了治疗潜力。我们使用计算得出的治疗潜力恢复了许多已知的药物和疾病关系,并且还预测了这些 164 种药物的许多新用途。我们通过使用小鼠异种移植模型在体外和体内实验验证了抗溃疡药物西咪替丁作为治疗肺腺癌的候选治疗药物的预测,并证明了其疗效。这种计算方法为治疗广泛的人类疾病而重新定位已建立的药物提供了一种系统的方法。