A multiobjective stochastic genetic algorithm for the pareto-optimal prioritization scheme design of real-time healthcare resource allocation

Publication date: Available online 21 September 2017 Source:Operations Research for Health Care Author(s): Wen-Hsin Feng, Zhouyang Lou, Nan Kong, Hong Wan Many critical or even life-saving healthcare resources such as cadaveric donor organs are scarce. Upon procurement of such resources, some priority rule is applied to make the allocation decisions. In this paper, we consider the problem of optimally designing a single-score based priority rule to rank patients for each unit of available resource in real-time. We address the cases where multiple potentially conflicting objectives are simultaneously considered and the optimality principles on these objectives are in the expectation sense. We thus propose a multiobjective stochastic genetic algorithm approach to obtain Pareto-optimal policies, i.e., determining the weights placed on different prioritization criteria. To accommodate the stochastic nature, we adapt a ranking-and-selection procedure to construct an elite chromosome set in each generation of the genetic algorithm, and use the elite chromosome set to improve the offspring generation. To ensure sufficient diversity in the population, we apply clustering to identify representative elite chromosomes. We use cadaveric liver allocation policy optimization as a proof-of-the-concept study, for which we consider both pre-transplant and post-transplant survival rates as the objectives. We incorporate a self-developed discrete-event simulation model into our optimizati...
Source: Operations Research for Health Care - Category: Hospital Management Source Type: research