» Articles » PMID: 37656705

Machine Learning to Predict Risk for Community-onset Staphylococcus Aureus Infections in Children Living in Southeastern United States

Overview
Journal PLoS One
Date 2023 Sep 1
PMID 37656705
Authors
Affiliations
Soon will be listed here.
Abstract

Staphylococcus aureus (S. aureus) is known to cause human infections and since the late 1990s, community-onset antibiotic resistant infections (methicillin resistant S. aureus (MRSA)) continue to cause significant infections in the United States. Skin and soft tissue infections (SSTIs) still account for the majority of these in the outpatient setting. Machine learning can predict the location-based risks for community-level S. aureus infections. Multi-year (2002-2016) electronic health records of children <19 years old with S. aureus infections were queried for patient level data for demographic, clinical, and laboratory information. Area level data (Block group) was abstracted from U.S. Census data. A machine learning ecological niche model, maximum entropy (MaxEnt), was applied to assess model performance of specific place-based factors (determined a priori) associated with S. aureus infections; analyses were structured to compare methicillin resistant (MRSA) against methicillin sensitive S. aureus (MSSA) infections. Differences in rates of MRSA and MSSA infections were determined by comparing those which occurred in the early phase (2002-2005) and those in the later phase (2006-2016). Multi-level modeling was applied to identify risks factors for S. aureus infections. Among 16,124 unique patients with community-onset MRSA and MSSA, majority occurred in the most densely populated neighborhoods of Atlanta's metropolitan area. MaxEnt model performance showed the training AUC ranged from 0.771 to 0.824, while the testing AUC ranged from 0.769 to 0.839. Population density was the area variable which contributed the most in predicting S. aureus disease (stratified by CO-MRSA and CO-MSSA) across early and late periods. Race contributed more to CO-MRSA prediction models during the early and late periods than for CO-MSSA. Machine learning accurately predicts which densely populated areas are at highest and lowest risk for community-onset S. aureus infections over a 14-year time span.

Citing Articles

Global insights into MRSA bacteremia: a bibliometric analysis and future outlook.

Lin J, Lai J, Chen J, Cai J, Yang Z, Yang L Front Microbiol. 2025; 15:1516584.

PMID: 39911705 PMC: 11794302. DOI: 10.3389/fmicb.2024.1516584.

References
1.
Morgan E, Hohmann S, Ridgway J, Daum R, David M . Decreasing Incidence of Skin and Soft-tissue Infections in 86 US Emergency Departments, 2009-2014. Clin Infect Dis. 2018; 68(3):453-459. PMC: 6939314. DOI: 10.1093/cid/ciy509. View

2.
Boucher H, Corey G . Epidemiology of methicillin-resistant Staphylococcus aureus. Clin Infect Dis. 2008; 46 Suppl 5:S344-9. DOI: 10.1086/533590. View

3.
Xu M, Cao C, Li Q, Jia P, Zhao J . Ecological Niche Modeling of Risk Factors for H7N9 Human Infection in China. Int J Environ Res Public Health. 2016; 13(6). PMC: 4924057. DOI: 10.3390/ijerph13060600. View

4.
Chaiyos J, Suwannatrai K, Thinkhamrop K, Pratumchart K, Sereewong C, Tesana S . MaxEnt modeling of soil-transmitted helminth infection distributions in Thailand. Parasitol Res. 2018; 117(11):3507-3517. DOI: 10.1007/s00436-018-6048-7. View

5.
Hota B, Ellenbogen C, Hayden M, Aroutcheva A, Rice T, Weinstein R . Community-associated methicillin-resistant Staphylococcus aureus skin and soft tissue infections at a public hospital: do public housing and incarceration amplify transmission?. Arch Intern Med. 2007; 167(10):1026-33. DOI: 10.1001/archinte.167.10.1026. View