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Population approaches in drug development

Report on an expert meeting to discuss population pharmacokinetic/pharmacodynamic software

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Abstract

An expert meeting to discuss population pharmacokinetic/pharmacodynamic software was held in Brussels in November 1993 under the auspices of the European Co-operation in Science and Technology (COST), Medicine (B1) programme.

Recently developed statistical methods offer the possibility of gaining integrated information on pharmacokinetics and response from relatively sparse observational data obtained directly in patients who are being treated with the drug under development. These methods can minimize the need to exclude patient groups and also allow analysis of a variety of unbalanced designs that frequently arise in the evaluation of the relationships between dose or concentration on the one hand and efficacy or safety on the other relationships that do not readily lend themselves to other forms of statistical analysis.

The purpose of the Brussels meeting was to evaluate the state of both existing software and software under development, and to specify the needs and wishes of potential users of such software. It was apparent from the meeting that software development for population data analysis is currently a very active area of investigation and that several very good packages are already available, with more in development.

The general consensus of the meeting was that well validated, easy to use software was essential to the implementation of the population approach to drug development.

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Participants: L.Aarons (UK), L.Balant (Switzerland), P.Bechtel (France), A.Boobis (UK), R.Bruno (France), H.Fluhler (Switzerland), R.Gomeni (France), U.Gundert-Remy (Germany), A.Iliadis (France), M.Karlsson (Sweden), P.Kremers (Belgium), L.Lacey (UK), P.Maire (France), A.Mallet (France), G.Pacifici (Italy), K.Pithan (CEC), J.Rodriguez (Spain), M.Rowland (UK), J-L.Steimer (Switzerland), A.Thomson (UK) J. van Bree (Switzerland), S.Vozeh (Switzerland), J.Wakefield (UK), B.Whiting (UK), A.Zipfel (France)

All authors were members of the COST-B1 Working Party on Population Approaches

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Aarons, L., Balant, L.P., Mentré, F. et al. Population approaches in drug development. Eur J Clin Pharmacol 46, 389–391 (1994). https://doi.org/10.1007/BF00191898

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  • DOI: https://doi.org/10.1007/BF00191898

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