Introduction
Background
Overcrowding in hospital wards is associated with a panoply of adverse consequences for patients and staff alike.1–4 Internal medicine wards in Israeli hospitals are notorious for being overcrowded, with an annual nationwide average occupation of 97% in 2018 and 2019.5 These wards are struggling with patients in the corridor and team burnout, which is reflected in reduced quality of care to the most vulnerable patients, and the increasing challenge in recruiting high quality and motivated medical staff. The key to improvement is a reduction in the occupancy of the wards, by minimising unnecessary emergency department (ED) admissions, employing rapid workup and early discharge with emphasis on ambulatory treatment when possible. These approaches result in shorter inpatient stays, reduced inpatient mortality and increased patient and staff satisfaction.6 7
The appropriateness of admissions-related decisions in the ED has a direct effect on overcrowding, and excess admissions are specifically associated with poorer clinical and organisational outcomes.8 9 Multiple non-medical factors can influence the decision to admit an ED attendee, including the workload of the ED, hospital bed occupancy rates, the hour and day of week, the date and its correspondence to public events, individual staff performance, and even the weather.10 11
By applying statistical inference techniques, it is possible to create models for the prediction of admission caseload, based on social, institutional, staffing and stochastic factors. Hitherto dozens of models have been published that attempt to forecast ED demand,12 13 as well as predicting admission likelihood for individual patients.14 Only a few make any attempt to forecast overall admission numbers.15–19 No study hitherto has attempted to include all available factors, and particularly estimates of staff performance, in modelling admissions. No study has used such models as tools for optimisation of staffing policies in order to reduce admissions. Furthermore, very few of the published studies of any type have specifically involved the Israeli hospital system which, as with any locale, has its own unique set of demographic and administrative challenges.
The aim of this paper is to demonstrate the creation and testing of a model for the prediction of admission numbers, to confirm the hypothesis that measures of staff performance are important inputs into such models and to demonstrate the feasibility of using such models as tools to optimise staff allocation and reduce admissions.
For the current study, we use 5 years’ of ED case records at Meir Medical Center, a busy secondary-level general hospital in central Israel. Using this data, we construct metrics for individual staff performance, as well as time series for historic arrival and admission numbers, ED caseload and other factors. Based on these, we construct models to predict both daily ED arrivals and daily admissions from the ED to the internal medicine wards. We also derive a tool that can produce an alert when any given day is likely to see an excessive number of admissions.