Department of Medical Bioinformatics, University Medical Center Göttingen, Goldschmidtstraße 1, 37077 Göttingen, Germany.
Clinic for Pediatric Pneumology, Allergology and Neonatology, Hannover Medical School, Carl-Neuberg-Strasse 1, 30625 Hannover, Germany.
Int J Mol Sci. 2022 Oct 15;23(20):12351. doi: 10.3390/ijms232012351.
Cystic fibrosis is a genetic disease caused by mutation of the CFTR gene, which encodes a chloride and bicarbonate transporter in epithelial cells. Due to the vast range of geno- and phenotypes, it is difficult to find causative treatments; however, small-molecule therapeutics have been clinically approved in the last decade. Still, the search for novel therapeutics is ongoing, and thousands of compounds are being tested in different assays, often leaving their mechanism of action unknown. Here, we bring together a CFTR-specific compound database (CandActCFTR) and systems biology model (CFTR Lifecycle Map) to identify the targets of the most promising compounds. We use a dual inverse screening approach, where we employ target- and ligand-based methods to suggest targets of 309 active compounds in the database amongst 90 protein targets from the systems biology model. Overall, we identified 1038 potential target-compound pairings and were able to suggest targets for all 309 active compounds in the database.
囊性纤维化是一种由 CFTR 基因突变引起的遗传性疾病,该基因编码上皮细胞中的氯离子和碳酸氢盐转运蛋白。由于基因型和表型的广泛范围,很难找到病因治疗方法;然而,在过去十年中,小分子治疗药物已在临床上获得批准。尽管如此,对新型治疗方法的研究仍在继续,成千上万的化合物正在不同的测定中进行测试,其作用机制往往未知。在这里,我们将 CFTR 特异性化合物数据库(CandActCFTR)和系统生物学模型(CFTR 生命周期图)结合起来,以确定最有前途的化合物的靶标。我们使用双重反向筛选方法,即利用基于靶标和基于配体的方法,从系统生物学模型中的 90 个蛋白质靶标中,提出数据库中 309 种活性化合物的靶标。总的来说,我们确定了 1038 对潜在的靶标-化合物配对,并能够为数据库中的所有 309 种活性化合物提出靶标。