UNC Catalyst for Rare Diseases, Eshelman School of Pharmacy, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA.
Collaborations Pharmaceuticals, Inc., 840 Main Campus Drive, Lab 3510, Raleigh, NC, USA.
Sci Rep. 2020 Jul 31;10(1):12982. doi: 10.1038/s41598-020-70026-w.
Chordoma is a devastating rare cancer that affects one in a million people. With a mean-survival of just 6 years and no approved medicines, the primary treatments are surgery and radiation. In order to speed new medicines to chordoma patients, a drug repurposing strategy represents an attractive approach. Drugs that have already advanced through human clinical safety trials have the potential to be approved more quickly than de novo discovered medicines on new targets. We have taken two strategies to enable this: (1) generated and validated machine learning models of chordoma inhibition and screened compounds of interest in vitro. (2) Tested combinations of approved kinase inhibitors already being individually evaluated for chordoma. Several published studies of compounds screened against chordoma cell lines were used to generate Bayesian Machine learning models which were then used to score compounds selected from the NIH NCATS industry-provided assets. Out of these compounds, the mTOR inhibitor AZD2014, was the most potent against chordoma cell lines (IC 0.35 µM U-CH1 and 0.61 µM U-CH2). Several studies have shown the importance of the mTOR signaling pathway in chordoma and suggest it as a promising avenue for targeted therapy. Additionally, two currently FDA approved drugs, afatinib and palbociclib (EGFR and CDK4/6 inhibitors, respectively) demonstrated synergy in vitro (CI = 0.43) while AZD2014 and afatanib also showed synergy (CI = 0.41) against a chordoma cell in vitro. These findings may be of interest clinically, and this in vitro- and in silico approach could also be applied to other rare cancers.
软骨肉瘤是一种破坏性罕见的癌症,影响着每一百万人中的一人。由于平均生存时间仅为 6 年,且没有批准的药物,主要治疗方法是手术和放疗。为了将新药快速推向软骨肉瘤患者,药物重定位策略代表了一种有吸引力的方法。已经通过人体临床安全试验的药物有可能比针对新靶点的全新发现的药物更快获得批准。我们采取了两种策略来实现这一目标:(1)生成和验证软骨肉瘤抑制的机器学习模型,并在体外筛选有价值的化合物。(2)测试已批准的激酶抑制剂组合,这些抑制剂正在单独评估软骨肉瘤的疗效。已经使用针对软骨肉瘤细胞系筛选的化合物的几项已发表的研究来生成贝叶斯机器学习模型,然后使用这些模型对来自 NIH NCATS 行业提供的资产中选择的化合物进行评分。在这些化合物中,mTOR 抑制剂 AZD2014 对软骨肉瘤细胞系(IC 0.35µM U-CH1 和 0.61µM U-CH2)的抑制作用最强。几项研究表明,mTOR 信号通路在软骨肉瘤中很重要,并表明它是靶向治疗的有前途的途径。此外,两种目前已获 FDA 批准的药物,阿法替尼和帕博西尼(分别为 EGFR 和 CDK4/6 抑制剂)在体外显示出协同作用(CI = 0.43),而 AZD2014 和阿法替尼在体外也显示出协同作用(CI = 0.41)针对一种软骨肉瘤细胞。这些发现可能在临床上具有重要意义,这种体外和计算机模拟方法也可应用于其他罕见癌症。