Bioinformatics Center, Institute for Chemical Research, Kyoto University, Gokasho Uji, Kyoto 611-0011, Japan.
Bioinformatics. 2012 Sep 15;28(18):i522-i528. doi: 10.1093/bioinformatics/bts383.
Identifying the emergence and underlying mechanisms of drug side effects is a challenging task in the drug development process. This underscores the importance of system-wide approaches for linking different scales of drug actions; namely drug-protein interactions (molecular scale) and side effects (phenotypic scale) toward side effect prediction for uncharacterized drugs.
We performed a large-scale analysis to extract correlated sets of targeted proteins and side effects, based on the co-occurrence of drugs in protein-binding profiles and side effect profiles, using sparse canonical correlation analysis. The analysis of 658 drugs with the two profiles for 1368 proteins and 1339 side effects led to the extraction of 80 correlated sets. Enrichment analyses using KEGG and Gene Ontology showed that most of the correlated sets were significantly enriched with proteins that are involved in the same biological pathways, even if their molecular functions are different. This allowed for a biologically relevant interpretation regarding the relationship between drug-targeted proteins and side effects. The extracted side effects can be regarded as possible phenotypic outcomes by drugs targeting the proteins that appear in the same correlated set. The proposed method is expected to be useful for predicting potential side effects of new drug candidate compounds based on their protein-binding profiles.
Datasets and all results are available at http://web.kuicr.kyoto-u.ac.jp/supp/smizutan/target-effect/.
Software is available at the above supplementary website.
yamanishi@bioreg.kyushu-u.ac.jp, or goto@kuicr.kyoto-u.ac.jp.
在药物开发过程中,识别药物副作用的出现和潜在机制是一项具有挑战性的任务。这凸显了系统方法在将药物作用的不同尺度(即药物-蛋白质相互作用(分子尺度)和副作用(表型尺度))联系起来以预测未表征药物的副作用方面的重要性。
我们基于药物在蛋白质结合谱和副作用谱中的共现,使用稀疏典型相关分析,进行了大规模分析,以提取靶向蛋白和副作用的相关集。对具有两种谱的 658 种药物和 1368 种蛋白质和 1339 种副作用进行了分析,得出了 80 个相关集。使用 KEGG 和基因本体论的富集分析表明,大多数相关集都显著富集了参与相同生物途径的蛋白质,即使它们的分子功能不同。这使得我们可以从生物角度解释药物靶向蛋白和副作用之间的关系。提取的副作用可以被视为靶向出现在同一相关集中的蛋白质的药物的可能表型结果。所提出的方法有望基于其蛋白质结合谱预测新候选药物化合物的潜在副作用。
数据集和所有结果均可在 http://web.kuicr.kyoto-u.ac.jp/supp/smizutan/target-effect/ 上获得。
软件可在上述补充网站上获得。