DocumentCode :
1784760
Title :
Integrative analysis of chemo-transcriptomic profiles for drug-feature specific gene expression signatures
Author :
Chang Sik Kim ; Qing Wen ; Shu-Dong Zhang
Author_Institution :
Centre for Cancer Res. & Cell Biol. (CCRCB), Queen´s Univ. Belfast (QUB), Belfast, UK
fYear :
2014
fDate :
2-5 Nov. 2014
Firstpage :
113
Lastpage :
118
Abstract :
One of the major challenges in systems biology is to understand the complex responses of a biological system to external perturbations or internal signalling depending on its biological conditions. Genome-wide transcriptomic profiling of cellular systems under various chemical perturbations allows the manifestation of certain features of the chemicals through their transcriptomic expression profiles. The insights obtained may help to establish the connections between human diseases, associated genes and therapeutic drugs. The main objective of this study was to systematically analyse cellular gene expression data under various drug treatments to elucidate drug-feature specific transcriptomic signatures. We first extracted drug-related information (drug features) from the collected textual description of DrugBank entries using text-mining techniques. A novel statistical method employing orthogonal least square learning was proposed to obtain drug-feature-specific signatures by integrating gene expression with DrugBank data. To obtain robust signatures from noisy input datasets, a stringent ensemble approach was applied with the combination of three techniques: resampling, leave-one-out cross validation, and aggregation. The validation experiments showed that the proposed method has the capacity of extracting biologically meaningful drug-feature-specific gene expression signatures. It was also shown that most of signature genes are connected with common hub genes by regulatory network analysis. The common hub genes were further shown to be related to general drug metabolism by Gene Ontology analysis. Each set of genes has relatively few interactions with other sets, indicating the modular nature of each signature and its drug-feature-specificity. Based on Gene Ontology analysis, we also found that each set of drug feature (DF)-specific genes were indeed enriched in biological processes related to the drug feature. The results of these experiments demonstrated the pot- ntial of the method for predicting certain features of new drugs using their transcriptomic profiles, providing a useful methodological framework and a valuable resource for drug development and characterization.
Keywords :
biological techniques; cellular biophysics; diseases; drugs; gene therapy; genomics; medical computing; ontologies (artificial intelligence); DF-specific gene expression signature; DrugBank data; Gene Ontology analysis; biological conditions; biological system; cellular gene expression data; cellular system; chemotranscriptomic profile; common hub genes; drug characterization; drug development; drug treatment; drug-feature specific signature; drug-feature specific transcriptomic signature; drug-related information; general drug metabolism; genome-wide transcriptomic profiling; human diseases; noisy input dataset; orthogonal least square learning; regulatory network analysis; robust signatures; signature gene; text-mining techniques; textual DrugBank description; therapeutic drug; transcriptomic expression profiles; Databases; Drugs; Feature extraction; Gene expression; Predictive models; Testing; Training; Connectivity Map; Drug feature; DrugBank data; Gene expression signature; Integrative analysis;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Bioinformatics and Biomedicine (BIBM), 2014 IEEE International Conference on
Conference_Location :
Belfast
Type :
conf
DOI :
10.1109/BIBM.2014.6999138
Filename :
6999138
Link To Document :
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