Title :
A Stochastic Model for Pharmaceutical R&D Project Management in a Make-or-Buy Decision Setting
Author :
Zhao, Guozhen ; Chen, Wen
Author_Institution :
Bus. Sch., Dept. of Manage. & Global Bus., Rutgers Univ., Newark, NJ, USA
Abstract :
Managing a pharmaceutical R&D project is a complex undertaking that involves efforts from both business managers and scientists. The increasing complexity of exploratory activities in pharmaceutical innovation makes less likely that a project can stand alone. Project managers not only resort to in-house innovation but also external sources to propel a central project. In this paper, the authors propose a make-or-buy stochastic process model as an integrated project management tool with the goal of maximizing the successful probability of a prospective drug compound. The model illustrates the two-process-line practice in pharmaceutical R&D projects and combines this practice with the make-or-buy decision that managers always face in pharmaceuticals. Using this model, the authors discuss the decision strategies at different phases of a pharmaceutical R&D project and provide optimal solutions based on the remaining time of the project. A case study demonstrates the model´s effectiveness. The model offers potential benefits in terms of its ability to transform key learning into efficient and reliable managerial decision-making practices that are well aligned with drug innovation strategies.
Keywords :
decision making; drugs; innovation management; project management; stochastic processes; decision making; drug compound; integrated project management tool; make-or-buy decision setting; pharmaceutical R&D project management; pharmaceutical innovation; stochastic model; two-process-line practice; Drugs; Innovation management; Monitoring; Pharmaceutical technology; Project management; Research and development; Research and development management; Stochastic processes; Technological innovation; Uncertainty; Innovation process; make-or-buy decision; monitoring process; pharmaceutical R&D project; stochastic model;
Journal_Title :
Engineering Management, IEEE Transactions on
DOI :
10.1109/TEM.2009.2023136