Forecasting the Requirement for Nonelective Hospital Beds in the National Health Service of the United Kingdom : Model Development Study

©Kanan Shah, Akarsh Sharma, Chris Moulton, Simon Swift, Clifford Mann, Simon Jones. Originally published in JMIR Medical Informatics (https://medinform.jmir.org), 30.09.2021..

BACKGROUND: Over the last decade, increasing numbers of emergency department attendances and an even greater increase in emergency admissions have placed severe strain on the bed capacity of the National Health Service (NHS) of the United Kingdom. The result has been overcrowded emergency departments with patients experiencing long wait times for admission to an appropriate hospital bed. Nevertheless, scheduling issues can still result in significant underutilization of bed capacity. Bed occupancy rates may not correlate well with bed availability. More accurate and reliable long-term prediction of bed requirements will help anticipate the future needs of a hospital's catchment population, thus resulting in greater efficiencies and better patient care.

OBJECTIVE: This study aimed to evaluate widely used automated time-series forecasting techniques to predict short-term daily nonelective bed occupancy at all trusts in the NHS. These techniques were used to develop a simple yet accurate national health system-level forecasting framework that can be utilized at a low cost and by health care administrators who do not have statistical modeling expertise.

METHODS: Bed occupancy models that accounted for patterns in occupancy were created for each trust in the NHS. Daily nonelective midnight trust occupancy data from April 2011 to March 2017 for 121 NHS trusts were utilized to generate these models. Forecasts were generated using the three most widely used automated forecasting techniques: exponential smoothing; Seasonal Autoregressive Integrated Moving Average; and Trigonometric, Box-Cox transform, autoregressive moving average errors, and Trend and Seasonal components. The NHS Modernisation Agency's recommended forecasting method prior to 2020 was also replicated.

RESULTS: The accuracy of the models varied on the basis of the season during which occupancy was forecasted. For the summer season, percent root-mean-square error values for each model remained relatively stable across the 6 forecasted weeks. However, only the trend and seasonal components model (median error=2.45% for 6 weeks) outperformed the NHS Modernisation Agency's recommended method (median error=2.63% for 6 weeks). In contrast, during the winter season, the percent root-mean-square error values increased as we forecasted further into the future. Exponential smoothing generated the most accurate forecasts (median error=4.91% over 4 weeks), but all models outperformed the NHS Modernisation Agency's recommended method prior to 2020 (median error=8.5% over 4 weeks).

CONCLUSIONS: It is possible to create automated models, similar to those recently published by the NHS, which can be used at a hospital level for a large national health care system to predict nonelective bed admissions and thus schedule elective procedures.

Medienart:

E-Artikel

Erscheinungsjahr:

2021

Erschienen:

2021

Enthalten in:

Zur Gesamtaufnahme - volume:9

Enthalten in:

JMIR medical informatics - 9(2021), 9 vom: 30. Sept., Seite e21990

Sprache:

Englisch

Beteiligte Personen:

Shah, Kanan [VerfasserIn]
Sharma, Akarsh [VerfasserIn]
Moulton, Chris [VerfasserIn]
Swift, Simon [VerfasserIn]
Mann, Clifford [VerfasserIn]
Jones, Simon [VerfasserIn]

Links:

Volltext

Themen:

Bed occupancy
Clinical decision-making
Forecasting
Health care delivery
Journal Article
Models
Time-series analysis

Anmerkungen:

Date Revised 03.04.2024

published: Electronic

Citation Status PubMed-not-MEDLINE

doi:

10.2196/21990

funding:

Förderinstitution / Projekttitel:

PPN (Katalog-ID):

NLM33132489X