TY - JOUR
T1 - Metabolically re-modeling the drug pipeline
AU - Oberhardt, Matthew A.
AU - Yizhak, Keren
AU - Ruppin, Eytan
N1 - Funding Information: KY is partially supported by a fellowship from the Edmond J. Safra Bioinformatics Center at Tel-Aviv University and is grateful to the Azrieli Foundation for the award of an Azrieli Fellowship. MO gratefully acknowledges support from the Whitaker Foundation and from the Dan David Foundation . ER's research is supported by grants from the Israeli Science Foundation (ISF) , the Microme project ( EU FP7 ), and by the Israeli Centers of Research Excellence, Gene Regulation in Complex Human Disease Center ( 41/11 ).
PY - 2013/10
Y1 - 2013/10
N2 - Costs for drug development have soared, exposing a clear need for new R&D strategies. Systems biology has meanwhile emerged as an attractive vehicle for integrating omics data and other post-genomic technologies into the drug pipeline. One of the emerging areas of computational systems biology is constraint-based modeling (CBM), which uses genome-scale metabolic models (GSMMs) as platforms for integrating and interpreting diverse omics datasets. Here we review current uses of GSMMs in drug discovery, focusing on prediction of novel drug targets and promising lead compounds. We then expand our discussion to prediction of toxicity and selectivity of potential drug targets. We discuss successes as well as limitations of GSMMs in these areas. Finally, we suggest new ways in which GSMMs may contribute to drug discovery, offering our vision of how GSMMs may re-model the drug pipeline in years to come.
AB - Costs for drug development have soared, exposing a clear need for new R&D strategies. Systems biology has meanwhile emerged as an attractive vehicle for integrating omics data and other post-genomic technologies into the drug pipeline. One of the emerging areas of computational systems biology is constraint-based modeling (CBM), which uses genome-scale metabolic models (GSMMs) as platforms for integrating and interpreting diverse omics datasets. Here we review current uses of GSMMs in drug discovery, focusing on prediction of novel drug targets and promising lead compounds. We then expand our discussion to prediction of toxicity and selectivity of potential drug targets. We discuss successes as well as limitations of GSMMs in these areas. Finally, we suggest new ways in which GSMMs may contribute to drug discovery, offering our vision of how GSMMs may re-model the drug pipeline in years to come.
UR - http://www.scopus.com/inward/record.url?scp=84892974755&partnerID=8YFLogxK
U2 - https://doi.org/10.1016/j.coph.2013.05.006
DO - https://doi.org/10.1016/j.coph.2013.05.006
M3 - مقالة مرجعية
SN - 1471-4892
VL - 13
SP - 778
EP - 785
JO - Current Opinion in Pharmacology
JF - Current Opinion in Pharmacology
IS - 5
ER -