scholarly journals 2107. Decision Trees vs. Neural Networks for Supervised Machine Learning-Based Prediction of Healthcare-Associated Urinary Tract Infections

2018 ◽  
Vol 5 (suppl_1) ◽  
pp. S618-S618
Author(s):  
Philip Zachariah ◽  
Elioth Mirsha Sanabria Buenaventura ◽  
Jianfang Liu ◽  
Bevin Cohen ◽  
David Yao ◽  
...  
PLoS ONE ◽  
2021 ◽  
Vol 16 (3) ◽  
pp. e0248636
Author(s):  
Jens Kjølseth Møller ◽  
Martin Sørensen ◽  
Christian Hardahl

Background Healthcare associated infections (HAI) are a major burden for the healthcare system and associated with prolonged hospital stay, increased morbidity, mortality and costs. Healthcare associated urinary tract infections (HA-UTI) accounts for about 20–30% of all HAI’s, and with the emergence of multi-resistant urinary tract pathogens, the total burden of HA-UTI will most likely increase. Objective The aim of the current study was to develop two predictive models, using data from the index admission as well as historic data on a patient, to predict the development of UTI at the time of entry to the hospital and after 48 hours of admission (HA-UTI). The ultimate goal is to predict the individual patient risk of acquiring HA-UTI before it occurs so that health care professionals may take proper actions to prevent it. Methods Retrospective cohort analysis of approx. 300 000 adult admissions in a Danish region was performed. We developed models for UTI prediction with five machine-learning algorithms using demographic information, laboratory results, data on antibiotic treatment, past medical history (ICD10 codes), and clinical data by transformation of unstructured narrative text in Electronic Medical Records to structured data by Natural Language Processing. Results The five machine-learning algorithms have been evaluated by the performance measures average squared error, cumulative lift, and area under the curve (ROC-index). The algorithms had an area under the curve (ROC-index) ranging from 0.82 to 0.84 for the entry model (T = 0 hours after admission) and from 0.71 to 0.77 for the HA-UTI model (T = 48 hours after admission). Conclusion The study is proof of concept that it is possible to create machine-learning models that can serve as early warning systems to predict patients at risk of acquiring urinary tract infections during admission. The entry model and the HA-UTI models perform with a high ROC-index indicating a sufficient sensitivity and specificity, which may make both models instrumental in individualized prevention of UTI in hospitalized patients. The favored machine-learning methodology is Decision Trees to ensure the most transparent results and to increase clinical understanding and implementation of the models.


2021 ◽  
Vol 28 (2) ◽  
pp. 147-149
Author(s):  
F. Devrim ◽  
İ. Çağlar ◽  
N. Demiray ◽  
Y. Oruç ◽  
Y. Ayhan ◽  
...  

2018 ◽  
Vol 99 (1) ◽  
pp. 98-102
Author(s):  
O. Fasugba ◽  
J. Koerner ◽  
N. Bennett ◽  
S. Burrell ◽  
R. Laguitan ◽  
...  

2019 ◽  
Vol 6 (Supplement_2) ◽  
pp. S411-S411
Author(s):  
Jordan Ehni ◽  
Marie Moss ◽  
Brian Koll ◽  
Dana Mazo ◽  
Waleed Javaid ◽  
...  

Abstract Background Urinary tract infections (UTIs) continue to be one of the most common types of healthcare-associated infections (HAIs). Instrumentation of the urinary tract using devices such as indwelling urinary catheters (IUCs) is the leading cause of healthcare-associated UTIs. Every day that a patient has an IUC increases their risk of acquiring a UTI. After an increase in the number of catheter-associated urinary tract infections (CAUTIs), a mid-sized acute care hospital in the Northeast United States used an electronic surveillance system to monitor IUC order compliance and appropriateness in order to reduce IUC utilization and prevent CAUTIs. Methods Using an Infection Prevention (IP) electronic surveillance system, a line list was generated of patients who had an IUC documented in the urinary flow sheet of their electronic medical record. This list contained variables such as: catheter insert date, catheter order status, and catheter indication. IP staff sent this list in a daily e-mail to clinical leadership and front line staff over a 14 month period. The e-mail notified providers when their patients had an IUC without an order. Clinical staff was directed to discontinue the IUC if it was no longer indicated or to place a new IUC order if still indicated. The National Healthcare Safety Network (NHSN) CAUTI definition and data functions were used for the purposes of this study. Results A statistically significant (P = 0.017) reduction in the hospital CAUTI rate was found when a comparison was made between the 14-month pre-intervention baseline period (1.12 CAUTI per 1,000 catheter days) and the 14 month post-intervention period (0.29 CAUTI per 1,000 catheter days). A statistically significant decrease (P = 0.0004) in IUC utilization was also noted for the same time period, decreasing from 8.2 catheters per 100 patient-days to 7.8 catheters per 100 patient-days. Conclusion A significant reduction in CAUTIs and IUC utilization was seen over the 14-month IP-driven e-mail intervention. This study suggests that regular electronic communication of surveillance system information to providers may reduce CAUTIs. Disclosures All authors: No reported disclosures.


2020 ◽  
Vol 21 (S10) ◽  
Author(s):  
Alessio Mancini ◽  
Leonardo Vito ◽  
Elisa Marcelli ◽  
Marco Piangerelli ◽  
Renato De Leone ◽  
...  

Sign in / Sign up

Export Citation Format

Share Document