Title of article :
Optimizing Red Blood Cells Consumption Using Markov Decision Process
Author/Authors :
Khayat Rasoli, Mehran Department of Industrial Engineering - Bonab Branch, Islamic Azad University, Bonab , Nejad Attari, Mahdi Yousefi Department of Industrial Engineering - Bonab Branch, Islamic Azad University, Bonab , Ebadi Torkayesh, Ali Faculty of Engineering and Natural Sciences - Sabanci University, Istanbul, Turkey , Neishabouri Jami, Ensiyeh Department of Industrial Engineering - Bonab Branch, Islamic Azad University, Bonab
Abstract :
In healthcare systems, one of the important actions is related to perishable products such as red blood cells (RBCs) units that its consumption management in different periods can contribute greatly to the optimality of the system. In this paper, main goal is to enhance the ability of medical community to organize the RBCs units’ consumption in way to deliver the unit order timely with a focus on minimizing total costs of the system. In each medical center such as hospitals or clinics, decision makers consider a one-day period for their policy making about supply and demand of RBCs. Based on the inventory status of the previous day, decisions are made for following day. In this paper, we use Markov decision process (MDP) as a sequential decision-making approach for blood inventory problem considering red blood cells consumption. The proposed MDP model for RBCs consumption management is solved using sequential approximation algorithm. We perform a case study for the proposed model using blood consumption data of Zanjan, Iran. Results for several blood types are discussed accordingly. In terms of total cost of the system, LIFO-LIFO policy is best policy for RBCs consumption among all other policies. In order to analyze the importance of some parameters in the model, a sensitivity analysis is done over shortage cost.
Keywords :
Red Blood Cells , Markov Decision Process , Blood Supply Chain , Sequential Approximation Algorithm
Journal title :
Journal of Quality Engineering and Production Optimization