| Literature DB >> 26471373 |
Kayse Lee Maass1, Boying Liu2, Mark S Daskin2, Mary Duck2,3, Zhehui Wang2, Rama Mwenesi2,3, Hannah Schapiro2.
Abstract
Increased nurse-to-patient ratios are associated negatively with increased costs and positively with improved patient care and reduced nurse burnout rates. Thus, it is critical from a cost, patient safety, and nurse satisfaction perspective that nurses be utilized efficiently and effectively. To address this, we propose a stochastic programming formulation for nurse staffing that accounts for variability in the patient census and nurse absenteeism, day-to-day correlations among the patient census levels, and costs associated with three different classes of nursing personnel: unit, pool, and temporary nurses. The decisions to be made include: how many unit nurses to employ, how large a pool of cross-trained nurses to maintain, how to allocate the pool nurses on a daily basis, and how many temporary nurses to utilize daily. A genetic algorithm is developed to solve the resulting model. Preliminary results using data from a large university hospital suggest that the proposed model can save a four-unit pool hundreds of thousands of dollars annually as opposed to the crude heuristics the hospital currently employs.Entities:
Keywords: Absenteeism; Genetic Algorithm; Nurse staffing; Stochastic
Mesh:
Year: 2015 PMID: 26471373 DOI: 10.1007/s10729-015-9345-z
Source DB: PubMed Journal: Health Care Manag Sci ISSN: 1386-9620