Cargando…

Hospital-onset bacteremia and fungemia: An evaluation of predictors and feasibility of benchmarking comparing two risk-adjusted models among 267 hospitals

OBJECTIVES: To evaluate the prevalence of hospital-onset bacteremia and fungemia (HOB), identify hospital-level predictors, and to evaluate the feasibility of an HOB metric. METHODS: We analyzed 9,202,650 admissions from 267 hospitals during 2015–2020. An HOB event was defined as the first positive...

Descripción completa

Detalles Bibliográficos
Autores principales: Yu, Kalvin C., Ye, Gang, Edwards, Jonathan R., Gupta, Vikas, Benin, Andrea L., Ai, ChinEn, Dantes, Raymund
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cambridge University Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9588439/
https://www.ncbi.nlm.nih.gov/pubmed/36082774
http://dx.doi.org/10.1017/ice.2022.211
_version_ 1784814130995134464
author Yu, Kalvin C.
Ye, Gang
Edwards, Jonathan R.
Gupta, Vikas
Benin, Andrea L.
Ai, ChinEn
Dantes, Raymund
author_facet Yu, Kalvin C.
Ye, Gang
Edwards, Jonathan R.
Gupta, Vikas
Benin, Andrea L.
Ai, ChinEn
Dantes, Raymund
author_sort Yu, Kalvin C.
collection PubMed
description OBJECTIVES: To evaluate the prevalence of hospital-onset bacteremia and fungemia (HOB), identify hospital-level predictors, and to evaluate the feasibility of an HOB metric. METHODS: We analyzed 9,202,650 admissions from 267 hospitals during 2015–2020. An HOB event was defined as the first positive blood-culture pathogen on day 3 of admission or later. We used the generalized linear model method via negative binomial regression to identify variables and risk markers for HOB. Standardized infection ratios (SIRs) were calculated based on 2 risk-adjusted models: a simple model using descriptive variables and a complex model using descriptive variables plus additional measures of blood-culture testing practices. Performance of each model was compared against the unadjusted rate of HOB. RESULTS: Overall median rate of HOB per 100 admissions was 0.124 (interquartile range, 0.00–0.22). Facility-level predictors included bed size, sex, ICU admissions, community-onset (CO) blood culture testing intensity, and hospital-onset (HO) testing intensity, and prevalence (all P < .001). In the complex model, CO bacteremia prevalence, HO testing intensity, and HO testing prevalence were the predictors most associated with HOB. The complex model demonstrated better model performance; 55% of hospitals that ranked in the highest quartile based on their raw rate shifted to a lower quartile when the SIR from the complex model was applied. CONCLUSIONS: Hospital descriptors, aggregate patient characteristics, community bacteremia and/or fungemia burden, and clinical blood-culture testing practices influence rates of HOB. Benchmarking an HOB metric is feasible and should endeavor to include both facility and clinical variables.
format Online
Article
Text
id pubmed-9588439
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Cambridge University Press
record_format MEDLINE/PubMed
spelling pubmed-95884392022-10-26 Hospital-onset bacteremia and fungemia: An evaluation of predictors and feasibility of benchmarking comparing two risk-adjusted models among 267 hospitals Yu, Kalvin C. Ye, Gang Edwards, Jonathan R. Gupta, Vikas Benin, Andrea L. Ai, ChinEn Dantes, Raymund Infect Control Hosp Epidemiol Original Article OBJECTIVES: To evaluate the prevalence of hospital-onset bacteremia and fungemia (HOB), identify hospital-level predictors, and to evaluate the feasibility of an HOB metric. METHODS: We analyzed 9,202,650 admissions from 267 hospitals during 2015–2020. An HOB event was defined as the first positive blood-culture pathogen on day 3 of admission or later. We used the generalized linear model method via negative binomial regression to identify variables and risk markers for HOB. Standardized infection ratios (SIRs) were calculated based on 2 risk-adjusted models: a simple model using descriptive variables and a complex model using descriptive variables plus additional measures of blood-culture testing practices. Performance of each model was compared against the unadjusted rate of HOB. RESULTS: Overall median rate of HOB per 100 admissions was 0.124 (interquartile range, 0.00–0.22). Facility-level predictors included bed size, sex, ICU admissions, community-onset (CO) blood culture testing intensity, and hospital-onset (HO) testing intensity, and prevalence (all P < .001). In the complex model, CO bacteremia prevalence, HO testing intensity, and HO testing prevalence were the predictors most associated with HOB. The complex model demonstrated better model performance; 55% of hospitals that ranked in the highest quartile based on their raw rate shifted to a lower quartile when the SIR from the complex model was applied. CONCLUSIONS: Hospital descriptors, aggregate patient characteristics, community bacteremia and/or fungemia burden, and clinical blood-culture testing practices influence rates of HOB. Benchmarking an HOB metric is feasible and should endeavor to include both facility and clinical variables. Cambridge University Press 2022-10 2022-09-09 /pmc/articles/PMC9588439/ /pubmed/36082774 http://dx.doi.org/10.1017/ice.2022.211 Text en © The Author(s) 2022 https://creativecommons.org/licenses/by/4.0/This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
spellingShingle Original Article
Yu, Kalvin C.
Ye, Gang
Edwards, Jonathan R.
Gupta, Vikas
Benin, Andrea L.
Ai, ChinEn
Dantes, Raymund
Hospital-onset bacteremia and fungemia: An evaluation of predictors and feasibility of benchmarking comparing two risk-adjusted models among 267 hospitals
title Hospital-onset bacteremia and fungemia: An evaluation of predictors and feasibility of benchmarking comparing two risk-adjusted models among 267 hospitals
title_full Hospital-onset bacteremia and fungemia: An evaluation of predictors and feasibility of benchmarking comparing two risk-adjusted models among 267 hospitals
title_fullStr Hospital-onset bacteremia and fungemia: An evaluation of predictors and feasibility of benchmarking comparing two risk-adjusted models among 267 hospitals
title_full_unstemmed Hospital-onset bacteremia and fungemia: An evaluation of predictors and feasibility of benchmarking comparing two risk-adjusted models among 267 hospitals
title_short Hospital-onset bacteremia and fungemia: An evaluation of predictors and feasibility of benchmarking comparing two risk-adjusted models among 267 hospitals
title_sort hospital-onset bacteremia and fungemia: an evaluation of predictors and feasibility of benchmarking comparing two risk-adjusted models among 267 hospitals
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9588439/
https://www.ncbi.nlm.nih.gov/pubmed/36082774
http://dx.doi.org/10.1017/ice.2022.211
work_keys_str_mv AT yukalvinc hospitalonsetbacteremiaandfungemiaanevaluationofpredictorsandfeasibilityofbenchmarkingcomparingtworiskadjustedmodelsamong267hospitals
AT yegang hospitalonsetbacteremiaandfungemiaanevaluationofpredictorsandfeasibilityofbenchmarkingcomparingtworiskadjustedmodelsamong267hospitals
AT edwardsjonathanr hospitalonsetbacteremiaandfungemiaanevaluationofpredictorsandfeasibilityofbenchmarkingcomparingtworiskadjustedmodelsamong267hospitals
AT guptavikas hospitalonsetbacteremiaandfungemiaanevaluationofpredictorsandfeasibilityofbenchmarkingcomparingtworiskadjustedmodelsamong267hospitals
AT beninandreal hospitalonsetbacteremiaandfungemiaanevaluationofpredictorsandfeasibilityofbenchmarkingcomparingtworiskadjustedmodelsamong267hospitals
AT aichinen hospitalonsetbacteremiaandfungemiaanevaluationofpredictorsandfeasibilityofbenchmarkingcomparingtworiskadjustedmodelsamong267hospitals
AT dantesraymund hospitalonsetbacteremiaandfungemiaanevaluationofpredictorsandfeasibilityofbenchmarkingcomparingtworiskadjustedmodelsamong267hospitals