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Patient flow modeling and simulation to study HAI incidence in an Emergency Department.
Sara, Sarawat Murtaza; Thota, Ravi Chandra; Uddin, Yusuf Sarwar; Bani-Yaghoub, Majid; Sutkin, Gary; Abourraja, Mohamed Nezar.
Afiliação
  • Sara SM; University of Missouri Kansas-City, Kansas City 64110, USA.
  • Thota RC; University of Missouri Kansas-City, Kansas City 64110, USA.
  • Uddin YS; University of Missouri Kansas-City, Kansas City 64110, USA.
  • Bani-Yaghoub M; University of Missouri Kansas-City, Kansas City 64110, USA.
  • Sutkin G; University Missouri Kansas City School of Medicine, Kansas City 64108, USA.
  • Abourraja MN; AIRA Laboratory Hassan 1 University, Settat 5237, Morocco.
Smart Health ; 322024 Jun.
Article em En | MEDLINE | ID: mdl-38737391
ABSTRACT
Healthcare-associated infections (HAIs), or nosocomial infections, refer to patients getting new infections while getting treatment for an existing condition in a healthcare facility. HAI poses a significant challenge in healthcare delivery that results in higher rates of mortality and morbidity as well as a longer duration of hospital stay. While the real cause of HAI in a hospital varies widely and in most cases untraceable, it is popularly believed that patient flow in a hospital-which hospital units patients visit and where they spend the most time since their admission into the hospital-can trace back to HAI incidence in the hospital. Based on this observation, we, in this paper, model and simulate patient flow in an emergency department of a hospital and then utilize the developed model to study HAI incidence therein. We obtain (a) a flowchart of patient movement (admission to discharge) and (b) anonymous patient data from University Health Medical Center for a duration of 11 months (Aug 2022-June 2023). Based on these data, we develop and validate the patient flow model. Our model captures patient movement in different areas of a typical emergency department, such as triage, waiting room, and minor procedure rooms. We employ the discrete-event simulation (DES) technique to model patient flow and associated HAI infections using the simulation software, Anylogic. Our simulation results show that the rates of HAI incidence are proportional to both the specific areas patients occupy and the duration of their stay. By utilizing our model, hospital administrators and infection control teams can implement targeted strategies to reduce the incidence of HAI and enhance patient safety, ultimately leading to improved healthcare outcomes and more efficient resource allocation.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Revista: Smart Health Ano de publicação: 2024 Tipo de documento: Article País de afiliação: Estados Unidos

Texto completo: 1 Base de dados: MEDLINE Idioma: En Revista: Smart Health Ano de publicação: 2024 Tipo de documento: Article País de afiliação: Estados Unidos