Novel Strategies for Predicting Healthcare-Associated Infections at Admission: Implications for Nursing Care.

Nurs Res

Philip Zachariah, MD, MSc, is Assistant Professor, Department of Pediatrics, Columbia University Vagelos College of Physicians and Surgeons, New York, New York. Elioth Sanabria, MS, is Graduate Research Assistant, Columbia University Fu Foundation School of Engineering and Applied Sciences, New York, New York. Jianfang Liu, PhD, MAS, is Assistant Professor, Quantitative Research (in Nursing), Columbia University School of Nursing, New York, New York. Bevin Cohen, PhD, MS, MPH, RN, is Associate Research Scientist, Columbia University School of Nursing, New York, New York. David Yao, PhD, is Piyasombatkul Family Professor, Columbia University Fu Foundation, New York, New York. Elaine Larson, PhD, RN, FAAN, CIC, is Professor, Columbia University School of Nursing, New York, New York.

Published: December 2020

Background: Accurate, real-time models to predict hospital adverse events could facilitate timely and targeted interventions to improve patient outcomes. Advances in computing enable the use of supervised machine learning (SML) techniques to predict hospital-onset infections.

Objectives: The purpose of this study was to trial SML methods to predict urinary tract infections (UTIs) during inpatient hospitalization at the time of admission.

Methods: In a large cohort of adult hospitalizations in three New York City acute care facilities (N = 897,344), we used two SML methods-neural networks and decision trees-to predict having a hospital-onset UTI using data available and accessible on the first day of admission at healthcare facilities in the United States.

Results: Performance for both neural network and decision tree models were superior compared to logistic regression methods. The decision tree model had a higher sensitivity compared to neural network, but a lower specificity.

Discussion: SML methods show potential for automated accurate UTI risk stratification using electronic data routinely available at admission; this could relieve nurses from the burden of having to complete and document additional risk assessment forms in the electronic medical record. Future studies should pilot and test interventions linked to the risk stratification results, such as short nursing educational modules or alerts triggered for high-risk patients.

Download full-text PDF

Source
http://dx.doi.org/10.1097/NNR.0000000000000449DOI Listing

Publication Analysis

Top Keywords

predict hospital-onset
8
sml methods
8
neural network
8
decision tree
8
risk stratification
8
novel strategies
4
strategies predicting
4
predicting healthcare-associated
4
healthcare-associated infections
4
infections admission
4

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!