Litcius/Paper detail

A stochastic programming approach for chemotherapy appointment scheduling

Nur Banu Demir, Serhat Gul, Melih Çelik

2020Naval Research Logistics (NRL)32 citationsDOIOpen Access PDF

Abstract

Abstract Chemotherapy appointment scheduling is a challenging problem due to the uncertainty in premedication and infusion durations. In this paper, we formulate a two‐stage stochastic mixed integer programming model for the chemotherapy appointment scheduling problem under limited availability of nurses and infusion chairs. The objective is to minimize the expected weighted sum of nurse overtime, chair idle time, and patient waiting time. The computational burden to solve real‐life instances of this problem to optimality is significantly high, even in the deterministic case. To overcome this burden, we incorporate valid bounds and symmetry breaking constraints. Progressive hedging algorithm is implemented in order to solve the improved formulation heuristically. We enhance the algorithm through a penalty update method, cycle detection and variable fixing mechanisms, and a linear approximation of the objective function. Using numerical experiments based on real data from a major oncology hospital, we compare our solution approach with several scheduling heuristics from the relevant literature, generate managerial insights related to the impact of the number of nurses and chairs on appointment schedules, and estimate the value of stochastic solution to assess the significance of considering uncertainty.

Topics & Concepts

Mathematical optimizationHeuristicsComputer scienceScheduling (production processes)Job shop schedulingStochastic programmingDynamic priority schedulingLinear programmingNurse scheduling problemInteger programmingDynamic programmingIdleRandom variableStochastic optimizationRate-monotonic schedulingFair-share schedulingFlow shop schedulingStochastic modellingApproximation algorithmSingle-machine schedulingHealthcare Operations and Scheduling OptimizationScheduling and Timetabling SolutionsFacility Location and Emergency Management