Computer Science, Wayne State University, Detroit, MI, USA.
Department of Obstetrics and Gynecology, Wayne State University, Detroit, MI, USA.
Bioinformatics. 2018 Aug 15;34(16):2817-2825. doi: 10.1093/bioinformatics/bty133.
Identification of novel therapeutic effects for existing US Food and Drug Administration (FDA)-approved drugs, drug repurposing, is an approach aimed to dramatically shorten the drug discovery process, which is costly, slow and risky. Several computational approaches use transcriptional data to find potential repurposing candidates. The main hypothesis of such approaches is that if gene expression signature of a particular drug is opposite to the gene expression signature of a disease, that drug may have a potential therapeutic effect on the disease. However, this may not be optimal since it fails to consider the different roles of genes and their dependencies at the system level.
We propose a systems biology approach to discover novel therapeutic roles for established drugs that addresses some of the issues in the current approaches. To do so, we use publicly available drug and disease data to build a drug-disease network by considering all interactions between drug targets and disease-related genes in the context of all known signaling pathways. This network is integrated with gene-expression measurements to identify drugs with new desired therapeutic effects based on a system-level analysis method. We compare the proposed approach with the drug repurposing approach proposed by Sirota et al. on four human diseases: idiopathic pulmonary fibrosis, non-small cell lung cancer, prostate cancer and breast cancer. We evaluate the proposed approach based on its ability to re-discover drugs that are already FDA-approved for a given disease.
The R package DrugDiseaseNet is under review for publication in Bioconductor and is available at https://github.com/azampvd/DrugDiseaseNet.
Supplementary data are available at Bioinformatics online.
鉴定现有美国食品和药物管理局(FDA)批准药物的新治疗效果,即药物重新定位,是一种旨在大大缩短药物发现过程的方法,该过程成本高、速度慢且风险大。几种计算方法都使用转录组数据来寻找潜在的再利用候选药物。这种方法的主要假设是,如果特定药物的基因表达特征与疾病的基因表达特征相反,那么该药物可能对该疾病有潜在的治疗作用。然而,这可能并不理想,因为它没有考虑到基因在系统水平上的不同作用及其依赖性。
我们提出了一种系统生物学方法来发现已确立药物的新治疗作用,该方法解决了当前方法中的一些问题。为此,我们使用公开的药物和疾病数据,通过考虑药物靶点和疾病相关基因在所有已知信号通路背景下的所有相互作用,构建一个药物-疾病网络。该网络与基因表达测量相结合,基于系统级分析方法,识别具有新的理想治疗效果的药物。我们将所提出的方法与 Sirota 等人提出的药物重新定位方法在四种人类疾病(特发性肺纤维化、非小细胞肺癌、前列腺癌和乳腺癌)上进行了比较。我们根据其重新发现已批准用于特定疾病的药物的能力来评估所提出的方法。
DrugDiseaseNet 的 R 包正在 Bioconductor 上进行审查,以供发表,并可在 https://github.com/azampvd/DrugDiseaseNet 上获得。
补充数据可在 Bioinformatics 在线获得。