Publication: A framework to develop semiautomated surveillance of surgical site infections: An international multicenter study.
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Identifiers
Date
2019-12-30
Authors
van-Rooden, Stephanie M
Tacconelli, Evelina
Pujol, Miquel
Gomila, Aina
Kluytmans, Jan A J W
Romme, Jannie
Moen, Gonny
Couve-Deacon, Elodie
Bataille, Camille
Rodriguez-Baño, Jesus
Advisors
Journal Title
Journal ISSN
Volume Title
Publisher
Cambridge University Press
Abstract
Automated surveillance of healthcare-associated infections reduces workload and improves standardization, but it has not yet been adopted widely. In this study, we assessed the performance and feasibility of an easy implementable framework to develop algorithms for semiautomated surveillance of deep incisional and organ-space surgical site infections (SSIs) after orthopedic, cardiac, and colon surgeries. Retrospective cohort study in multiple countries. European hospitals were recruited and selected based on the availability of manual SSI surveillance data from 2012 onward (reference standard) and on the ability to extract relevant data from electronic health records. A questionnaire on local manual surveillance and clinical practices was administered to participating hospitals, and the information collected was used to pre-emptively design semiautomated surveillance algorithms standardized for multiple hospitals and for center-specific application. Algorithm sensitivity, positive predictive value, and reduction of manual charts requiring review were calculated. Reasons for misclassification were explored using discrepancy analyses. The study included 3 hospitals, in the Netherlands, France, and Spain. Classification algorithms were developed to indicate procedures with a high probability of SSI. Components concerned microbiology, prolonged length of stay or readmission, and reinterventions. Antibiotics and radiology ordering were optional. In total, 4,770 orthopedic procedures, 5,047 cardiac procedures, and 3,906 colon procedures were analyzed. Across hospitals, standardized algorithm sensitivity ranged between 82% and 100% for orthopedic surgery, between 67% and 100% for cardiac surgery, and between 84% and 100% for colon surgery, with 72%-98% workload reduction. Center-specific algorithms had lower sensitivity. Using this framework, algorithms for semiautomated surveillance of SSI can be successfully developed. The high performance of standardized algorithms holds promise for large-scale standardization.
Description
MeSH Terms
Algorithms
Digestive System Surgical Procedures
Europe
Humans
Internationality
Orthopedic Procedures
Retrospective Studies
Surgical Wound Infection
Digestive System Surgical Procedures
Europe
Humans
Internationality
Orthopedic Procedures
Retrospective Studies
Surgical Wound Infection
DeCS Terms
Algoritmos
Vigilancia en desastres
Sensibilidad y especificidad
Estándares de referencia
Carga de tabajo
Procedimientos ortopédicos
Cirugía torácica
Infección de la herida quirúrgi
Cirugía general
Radiología
Antibacterianos
Microbiología
Vigilancia en desastres
Sensibilidad y especificidad
Estándares de referencia
Carga de tabajo
Procedimientos ortopédicos
Cirugía torácica
Infección de la herida quirúrgi
Cirugía general
Radiología
Antibacterianos
Microbiología
CIE Terms
Keywords
Automation, Cardiac Surgical Procedures, Electronic Health Records, Hospitals, Sentinel Surveillance
Citation
van Rooden SM, Tacconelli E, Pujol M, Gomila A, Kluytmans JAJW, Romme J, et al. A framework to develop semiautomated surveillance of surgical site infections: An international multicenter study. Infect Control Hosp Epidemiol. 2020 Feb;41(2):194-201.