Theoretical bounds and approximation of the probability mass function of future hospital bed demand

被引:5
作者
Davis, Samuel [1 ]
Fard, Nasser [1 ]
机构
[1] Northeastern Univ, 334 Snell Engn Ctr, Boston, MA 02115 USA
关键词
Bed demand forecast; Patient flow; Length of stay distributions; Adaptive staffing; LENGTH-OF-STAY; DISCRETE-EVENT SIMULATION; EMERGENCY-DEPARTMENT; CARE; ICU; CAPACITY; SURGERY; MODELS; TIME; IMPROVEMENT;
D O I
10.1007/s10729-018-9461-7
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Failing to match the supply of resources to the demand for resources in a hospital can cause non-clinical transfers, diversions, safety risks, and expensive under-utilized resource capacity. Forecasting bed demand helps achieve appropriate safety standards and cost management by proactively adjusting staffing levels and patient flow protocols. This paper defines the theoretical bounds on optimal bed demand prediction accuracy and develops a flexible statistical model to approximate the probability mass function of future bed demand. A case study validates the model using blinded data from a mid-sized Massachusetts community hospital. This approach expands upon similar work by forecasting multiple days in advance instead of a single day, providing a probability mass function of demand instead of a point estimate, using the exact surgery schedule instead of assuming a cyclic schedule, and using patient-level duration-varying length-of-stay distributions instead of assuming patient homogeneity and exponential length of stay distributions. The primary results of this work are an accurate and lengthy forecast, which provides managers better information and more time to optimize short-term staffing adaptations to stochastic bed demand, and a derivation of the minimum mean absolute error of an ideal forecast.
引用
收藏
页码:20 / 33
页数:14
相关论文
共 53 条
[11]   An operating room scheduling strategy to maximize the use of operating room block time: Computer simulation of patient scheduling and survey of patients' preferences for surgical waiting time [J].
Dexter, F ;
Macario, A ;
Traub, RD ;
Hopwood, M ;
Lubarsky, DA .
ANESTHESIA AND ANALGESIA, 1999, 89 (01) :7-20
[12]   Master surgery scheduling with consideration of multiple downstream units [J].
Fuegener, Andreas ;
Hans, Erwin W. ;
Kolisch, Rainer ;
Kortbeek, Nikky ;
Vanberkel, Peter T. .
EUROPEAN JOURNAL OF OPERATIONAL RESEARCH, 2014, 239 (01) :227-236
[13]   Using an Artificial Neural Networks (ANNs) Model for Prediction of Intensive Care Unit (ICU) Outcome and Length of Stay at Hospital in Traumatic Patients [J].
Gholipour, Changiz ;
Rahim, Fakher ;
Fakhree, Abolghasem ;
Ziapour, Behrad .
JOURNAL OF CLINICAL AND DIAGNOSTIC RESEARCH, 2015, 9 (04) :OC19-OC23
[14]  
Graue RyanM., 2013, Prediction and optimization techniques to streamline surgical scheduling
[15]  
Green LV, 2001, HEALTH SERV RES, V36, P421
[16]  
GRUEN R., 2001, Epidemiol. Infect, V126, P312
[17]   Discrete event simulation for performance modelling in health care: a review of the literature [J].
Gunal, M. M. ;
Pidd, M. .
JOURNAL OF SIMULATION, 2010, 4 (01) :42-51
[18]   Nurse staffing models, nursing hours, and patient safety outcomes [J].
Hall, LM ;
Doran, D ;
Pink, GH .
JOURNAL OF NURSING ADMINISTRATION, 2004, 34 (01) :41-45
[19]   Modelling variability in hospital bed occupancy [J].
Harrison G.W. ;
Shafer A. ;
Macky M. .
Health Care Management Science, 2005, 8 (4) :325-334
[20]   Length of stay and imminent discharge probability distributions from multistage models: variation by diagnosis, severity of illness, and hospital [J].
Harrison, Gary W. ;
Escobar, Gabriel J. .
HEALTH CARE MANAGEMENT SCIENCE, 2010, 13 (03) :268-279