Linking prediction models to government ordinances to support hospital operations during the COVID-19 pandemic

Autor: Hayley B. Gershengorn, Monisha C Bhatia, Dipen J. Parekh, Bhavarth Shukla, Kymberlee J Manni, Tanira Ferreira, Samira Patel, Prem R. Warde
Jazyk: angličtina
Rok vydání: 2021
Předmět:
Computer science
Computer applications to medicine. Medical informatics
Population
R858-859.7
Staffing
Health Informatics
information systems
Efficiency
Organizational

Health informatics
03 medical and health sciences
0302 clinical medicine
Resource (project management)
Health Information Management
BMJ Health Informatics
Information system
medical informatics
Humans
Operations management
Discrete event simulation
education
Pandemics
030304 developmental biology
Original Research
0303 health sciences
education.field_of_study
business.industry
SARS-CoV-2
COVID-19
information management
Schedule (project management)
information science
Computer Science Applications
030220 oncology & carcinogenesis
Models
Organizational

Health Resources
business
Emergency Service
Hospital

Predictive modelling
Forecasting
Zdroj: BMJ Health & Care Informatics
BMJ Health & Care Informatics, Vol 28, Iss 1 (2021)
ISSN: 2632-1009
Popis: ObjectivesWe describe a hospital’s implementation of predictive models to optimise emergency response to the COVID-19 pandemic.MethodsWe were tasked to construct and evaluate COVID-19 driven predictive models to identify possible planning and resource utilisation scenarios. We used system dynamics to derive a series of chain susceptible, infected and recovered (SIR) models. We then built a discrete event simulation using the system dynamics output and bootstrapped electronic medical record data to approximate the weekly effect of tuning surgical volume on hospital census. We evaluated performance via a model fit assessment and cross-model comparison.ResultsWe outlined the design and implementation of predictive models to support management decision making around areas impacted by COVID-19. The fit assessments indicated the models were most useful after 30 days from onset of local cases. We found our subreports were most accurate up to 7 days after model run.DiscusssionOur model allowed us to shape our health system’s executive policy response to implement a ‘hospital within a hospital’—one for patients with COVID-19 within a hospital able to care for the regular non-COVID-19 population. The surgical schedule is modified according to models that predict the number of new patients with Covid-19 who require admission. This enabled our hospital to coordinate resources to continue to support the community at large. Challenges included the need to frequently adjust or create new models to meet rapidly evolving requirements, communication, and adoption, and to coordinate the needs of multiple stakeholders. The model we created can be adapted to other health systems, provide a mechanism to predict local peaks in cases and inform hospital leadership regarding bed allocation, surgical volumes, staffing, and supplies one for COVID-19 patients within a hospital able to care for the regular non-COVID-19 population.ConclusionPredictive models are essential tools in supporting decision making when coordinating clinical operations during a pandemic.
Databáze: OpenAIRE