Title :
Evidence based computational drug repositioning candidate screening pipeline design: Case Study
Author :
Qian Zhu ; Hongfang Liu ; Yuji Zhang ; Jiabei Wang
Author_Institution :
Dept. of Inf. Syst., Univ. of Maryland, Baltimore County, Baltimore, MD, USA
Abstract :
Traditional drug development is time and cost consuming process, conversely, drug repositioning is an emerging approach to discover novel usages of existing drugs with a better risk-versus-reward trade-off. Computational technology is playing a key role in drug repositioning to screening the best drug repositioning candidates from a large candidate library. Recent efforts made for computer aided drug repositioning are mostly focusing on applying/developing data mining algorithms against wild type of large scale of biomedical data. In this paper, we introduce a novel computational pipeline designed for drug repositioning candidate screening based on existing phenotypical association (disease-disease association) discovery and pathway enrichment analysis by exploring systems biology data relevant to the interested phenotypical association specifically. To demonstrate usability and evaluate efficacy of this novel pipeline, we successfully conducted a case study by identifying potential drug repositioning candidates for Alzheimer´s disease (AD) based on the studied phenotypical association between cancer and AD.
Keywords :
associative processing; bioinformatics; cancer; data mining; drugs; genetics; inference mechanisms; medical computing; medical disorders; neurophysiology; pipeline processing; AD drug repositioning candidate identification; Alzheimer disease; biomedical data; cancer-AD phenotypical association; case study; computational pipeline efficacy evaluation; computational pipeline usability; computational technology; computer aided drug repositioning; data mining algorithm application; data mining algorithm development; disease-disease association discovery; drug development; drug repositioning candidate library; drug repositioning candidate screening pipeline design; evidence based computational drug screening pipeline design; pathway enrichment analysis; phenotypical association discovery; risk-versus-reward trade-off; systems biology data; Cancer; Cancer drugs; Chemicals; Diseases; Pipelines; Systems biology; drug repositioning; pathway enrichment analysis; phenotypical association; systems biology;
Conference_Titel :
Systems Biology (ISB), 2014 8th International Conference on
Conference_Location :
Qingdao
DOI :
10.1109/ISB.2014.6990757