TY - JOUR
T1 - Planning for demand failure
T2 - A dynamic lot size model for clinical trial supply chains
AU - Fleischhacker, Adam J.
AU - Zhao, Yao
N1 - Funding Information:
This research is supported by the grant CMMI-0747779 from the National Science Foundation . We thank Dr. Indranil Nandi from Sandoz Inc., A Novartis Company, and Lee Resnick from Deloitte Consulting LLP for informative discussions on drug development processes and clinical trial practices. We also thank seminar participants for their feedback at the “Clinical Trials Supply Management for Pharmaceuticals” conference held in Philadelphia, June 23–25, 2008.
PY - 2011/6/16
Y1 - 2011/6/16
N2 - This paper examines the optimal production lot size decisions for clinical trial supply chains. One unique aspect of clinical trial supply chains is the risk of failure, meaning that the investigational drug is proven unsafe or ineffective during human testing and the trial is halted. Upon failure, any unused inventory is essentially wasted and needs to be destroyed. To avoid waste, manufacturers could produce small lot sizes. However, high production setup costs lead manufacturers to opt for large lot sizes and few setups. To optimally balance this tradeoff of waste and destruction versus production inefficiency, this paper generalizes the Wagner-Whitin model (W-W model) to incorporate the risk of failure. We show that this stochastic model, referred to as the failure-risk model, is equivalent to the deterministic W-W model if one adjusts the cost parameters properly to reflect failure and destruction costs. We find that increasing failure rates lead to reduced lot sizes and that properly incorporating the risk of failure into clinical trial drug production can lead to substantial cost savings as compared to the W-W model without the properly adjusted parameters.
AB - This paper examines the optimal production lot size decisions for clinical trial supply chains. One unique aspect of clinical trial supply chains is the risk of failure, meaning that the investigational drug is proven unsafe or ineffective during human testing and the trial is halted. Upon failure, any unused inventory is essentially wasted and needs to be destroyed. To avoid waste, manufacturers could produce small lot sizes. However, high production setup costs lead manufacturers to opt for large lot sizes and few setups. To optimally balance this tradeoff of waste and destruction versus production inefficiency, this paper generalizes the Wagner-Whitin model (W-W model) to incorporate the risk of failure. We show that this stochastic model, referred to as the failure-risk model, is equivalent to the deterministic W-W model if one adjusts the cost parameters properly to reflect failure and destruction costs. We find that increasing failure rates lead to reduced lot sizes and that properly incorporating the risk of failure into clinical trial drug production can lead to substantial cost savings as compared to the W-W model without the properly adjusted parameters.
KW - Clinical trials
KW - Dynamic programming
KW - Lot sizing
KW - Production
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U2 - 10.1016/j.ejor.2011.01.004
DO - 10.1016/j.ejor.2011.01.004
M3 - Article
AN - SCOPUS:79952183348
SN - 0377-2217
VL - 211
SP - 496
EP - 506
JO - European Journal of Operational Research
JF - European Journal of Operational Research
IS - 3
ER -