Zhang Ming, Schmitt-Ulms Gerold, Sato Christine, Xi Zhengrui, Zhang Yalun, Zhou Ye, St George-Hyslop Peter, Rogaeva Ekaterina
Tanz Centre for Research in Neurodegenerative Diseases, University of Toronto, Toronto, Ontario, Canada.
Department of Medicine, Division of Neurology, University of Toronto, Toronto, Ontario, Canada.
PLoS One. 2016 Dec 22;11(12):e0168812. doi: 10.1371/journal.pone.0168812. eCollection 2016.
Traditional drug development for Alzheimer's disease (AD) is costly, time consuming and burdened by a very low success rate. An alternative strategy is drug repositioning, redirecting existing drugs for another disease. The large amount of biological data accumulated to date warrants a comprehensive investigation to better understand AD pathogenesis and facilitate the process of anti-AD drug repositioning. Hence, we generated a list of anti-AD protein targets by analyzing the most recent publically available 'omics' data, including genomics, epigenomics, proteomics and metabolomics data. The information related to AD pathogenesis was obtained from the OMIM and PubMed databases. Drug-target data was extracted from the DrugBank and Therapeutic Target Database. We generated a list of 524 AD-related proteins, 18 of which are targets for 75 existing drugs-novel candidates for repurposing as anti-AD treatments. We developed a ranking algorithm to prioritize the anti-AD targets, which revealed CD33 and MIF as the strongest candidates with seven existing drugs. We also found 7 drugs inhibiting a known anti-AD target (acetylcholinesterase) that may be repurposed for treating the cognitive symptoms of AD. The CAD protein and 8 proteins implicated by two 'omics' approaches (ABCA7, APOE, BIN1, PICALM, CELF1, INPP5D, SPON1, and SOD3) might also be promising targets for anti-AD drug development. Our systematic 'omics' mining suggested drugs with novel anti-AD indications, including drugs modulating the immune system or reducing neuroinflammation that are particularly promising for AD intervention. Furthermore, the list of 524 AD-related proteins could be useful not only as potential anti-AD targets but also considered for AD biomarker development.
传统的阿尔茨海默病(AD)药物研发成本高昂、耗时漫长,且成功率极低。一种替代策略是药物重新定位,即将现有药物用于治疗另一种疾病。迄今为止积累的大量生物学数据需要进行全面研究,以更好地理解AD的发病机制,并促进抗AD药物重新定位的进程。因此,我们通过分析最新公开的“组学”数据,包括基因组学、表观基因组学、蛋白质组学和代谢组学数据,生成了一份抗AD蛋白靶点列表。与AD发病机制相关的信息来自OMIM和PubMed数据库。药物靶点数据从DrugBank和治疗靶点数据库中提取。我们生成了一份包含524种与AD相关蛋白的列表,其中18种是75种现有药物的靶点——有望重新用作抗AD治疗的新候选药物。我们开发了一种排名算法,对抗AD靶点进行优先级排序,结果显示CD33和MIF是七种现有药物的最强候选靶点。我们还发现7种抑制已知抗AD靶点(乙酰胆碱酯酶)的药物可能可重新用于治疗AD的认知症状。CAD蛋白以及通过两种“组学”方法涉及的8种蛋白(ABCA7、APOE、BIN1、PICALM、CELF1、INPP5D、SPON1和SOD3)也可能是抗AD药物研发的有前景的靶点。我们系统的“组学”挖掘揭示了具有新型抗AD适应症的药物,包括调节免疫系统或减轻神经炎症的药物,这些药物对AD干预特别有前景。此外,这份包含524种与AD相关蛋白的列表不仅可作为潜在的抗AD靶点,还可考虑用于AD生物标志物的开发。