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- 2011 Annual Meeting
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- Supply Chain Optimization
- (614c) A Holistic Framework for Drug Development and Capacity Planning In Novel Pharmaceutical Supply Chains
Existing approaches for simultaneous drug development and capacity planning were developed for traditional pharmaceutical supply chains in which the primary and secondary production facilities are operated in geographically different locations (Maravelias and Grossmann, 2001; Shah, 2004). Furthermore, the batch mode of manufacturing has dominated the pharmaceutical industry for decades. Recently, the Novartis-MIT Center for Continuous Manufacturing has embarked on an innovative project to shift from the batch mode of manufacturing to the continuous mode, where raw materials through the APIs to the finished products are produced seamlessly in an integrated facility. Such an integrated end-to-end production scheme is very promising for several reasons: a) low costs of inventory, logistics, and production, b) short supply-chain cycle times, c) less exposure to supply-chain disruptions, and d) resilient supply chain. Thus, the option of continuous manufacturing in the pharmaceutical industry brings in additional challenges and opportunities in the context of drug development and investment strategy.
In this work, we develop a holistic optimization under uncertainty framework to address drug development and capacity planning for pharmaceutical supply chains that employ novel integrated production schemes. Since the outcomes of clinical trials are uncertain, the problem naturally leads to a stochastic programming problem, which is formulated as a multi-period mixed-integer linear programming (MILP) model. However, the model size can grow dramatically with the number of scenarios, resulting in intractable large-scale MILP models. The underlying problem structure motivates a novel solution method to solve the above large-scale models, and we illustrate the application of the proposed framework using several problem instances.
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