Out of Hours Workload Management: Bayesian Inference for Decision Support in Secondary Care
Overview
Authors
Affiliations
Objective: In this paper, we aim to evaluate the use of electronic technologies in out of hours (OoH) task-management for assisting the design of effective support systems in health care; targeting local facilities, wards or specific working groups. In addition, we seek to draw and validate conclusions with relevance to a frequently revised service, subject to increasing pressures.
Methods And Material: We have analysed 4 years of digitised demand-data extracted from a recently deployed electronic task-management system, within the Hospital at Night setting in two jointly coordinated hospitals in the United Kingdom. The methodology employed relies on Bayesian inference methods and parameter-driven state-space models for multivariate series of count data.
Results: Main results support claims relating to (i) the importance of data-driven staffing alternatives and (ii) demand forecasts serving as a basis to intelligent scheduling within working groups. We have displayed a split in workload patterns across groups of medical and surgical specialities, and sustained assertions regarding staff behaviour and work-need changes according to shifts or days of the week. Also, we have provided evidence regarding the relevance of day-to-day planning and prioritisation.
Conclusions: The work exhibits potential contributions of electronic tasking alternatives for the purpose of data-driven support systems design; for scheduling, prioritisation and management of care delivery. Electronic tasking technologies provide means to design intelligent systems specific to a ward, speciality or task-type; hence, the paper emphasizes the importance of replacing traditional pager-based approaches to management for modern alternatives.
Black G, Ramsay A, Simister R, Baim-Lance A, Eng J, Melnychuk M BMJ Qual Saf. 2023; 33(9):587-596.
PMID: 37336572 PMC: 11347214. DOI: 10.1136/bmjqs-2022-015620.
The Impact of Digital Transformation on Inpatient Care: Mixed Methods Study.
Koebe P, Bohnet-Joschko S JMIR Public Health Surveill. 2023; 9:e40622.
PMID: 37083473 PMC: 10163407. DOI: 10.2196/40622.
Out-of-hours task allocation: implications for foundation training and practice.
Bennett R, Fowler G Future Healthc J. 2022; 9(3):268-273.
PMID: 36561834 PMC: 9761446. DOI: 10.7861/fhj.2022-0040.