In silico prediction of clinical efficacy.

Curr Opin Biotechnol

Entelos, Inc., 110 Marsh Drive, Foster City, CA 94404, USA.

Published: December 2006

Drug development is a high risk and costly process, and the ability to predict clinical efficacy in silico (in a computer) can save the pharmaceutical industry time and resources. Additionally, such an approach will result in more targeted, personalized therapies. To date, a number of in silico strategies have been developed to provide better information about the human response to novel therapies earlier in the drug development process. Some of the most prominent include physiological modeling of disease and disease processes, analytical tools for population pharmacodynamics, tools for the analysis of genomic expression data, Monte Carlo simulation technologies, and predictive biosimulation. These strategies are likely to contribute significantly to reducing the failure rate of drugs entering clinical trials.

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http://dx.doi.org/10.1016/j.copbio.2006.09.004DOI Listing

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