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      Analysing microarray data in drug discovery using systems biology.

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      Expert opinion on drug discovery

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          Abstract

          The innovation of present drug design focuses on new targets. However, compound efficacy and safety in human metabolism, including toxicity and pharmacokinetic profiles, but not target selection, are the criteria that determine which drug candidates enter the clinic. Systems biology approaches to disease are developed from the idea that disease-perturbed regulatory networks differ from their normal counterparts. Microarray data analyses reveal global changes in gene or protein expression in response to genetic and environmental changes and, accordingly, are well suited to construct the normal, disease-perturbed and drug-affected networks, which are useful for drug discovery in the pharmaceutical industry. The integration of modelling, microarray data and systems biology approaches will allow for a true breakthrough in in silico absorption, distribution, metabolism, excretion and toxicity assessment in drug design. Therefore, drug discovery through systems biology by means of microarray analyses could significantly reduce the time and cost of new drug development.

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          Author and article information

          Journal
          Expert Opin Drug Discov
          Expert opinion on drug discovery
          1746-0441
          1746-0441
          May 2007
          : 2
          : 5
          Affiliations
          [1 ] National Tsing Hua University, Laboratory of Control and Systems Biology, 101, Sec 2, Kuang Fu Road, Hsinchu, 300, Taiwan.
          Article
          10.1517/17460441.2.5.755
          23488963
          830ae75e-fe7f-45c1-bf13-922a82710ea5
          History

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