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External validation of semi-automated surveillance algorithms for deep surgical site infections after colorectal surgery in an independent country

Background Automated surveillance methods that re-use electronic health record data are considered an attractive alternative to traditional manual surveillance. However, surveillance algorithms need to be thoroughly validated before being implemented in a clinical setting. With semi-automated survei...

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Published in:Antimicrobial resistance & infection control 2023-09, Vol.12 (1), p.1-96, Article 96
Main Authors: van der Werff, Suzanne D, Verberk, Janneke D.M, Buchli, Christian, van Mourik, Maaike S.M, Nauclér, Pontus
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description Background Automated surveillance methods that re-use electronic health record data are considered an attractive alternative to traditional manual surveillance. However, surveillance algorithms need to be thoroughly validated before being implemented in a clinical setting. With semi-automated surveillance patients are classified as low or high probability of having developed infection, and only high probability patients subsequently undergo manual record review. The aim of this study was to externally validate two existing semi-automated surveillance algorithms for deep SSI after colorectal surgery, developed on Spanish and Dutch data, in a Swedish setting. Methods The algorithms were validated in 225 randomly selected surgeries from Karolinska University Hospital from the period January 1, 2015 until August 31, 2020. Both algorithms were based on (re)admission and discharge data, mortality, reoperations, radiology orders, and antibiotic prescriptions, while one additionally used microbiology cultures. SSI was based on ECDC definitions. Sensitivity, specificity, positive predictive value, negative predictive value, and workload reduction were assessed compared to manual surveillance. Results Both algorithms performed well, yet the algorithm not relying on microbiological culture data had highest sensitivity (97.6, 95%CI: 87.4-99.6), which was comparable to previously published results. The latter algorithm aligned best with clinical practice and would lead to 57% records less to review. Conclusions The results highlight the importance of thorough validation before implementation in other clinical settings than in which algorithms were originally developed: the algorithm excluding microbiology cultures had highest sensitivity in this new setting and has the potential to support large-scale semi-automated surveillance of SSI after colorectal surgery. Keywords: Automated surveillance, Algorithms, Colorectal surgery, Healthcare-associated infections, Surgical site infections, Validation
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However, surveillance algorithms need to be thoroughly validated before being implemented in a clinical setting. With semi-automated surveillance patients are classified as low or high probability of having developed infection, and only high probability patients subsequently undergo manual record review. The aim of this study was to externally validate two existing semi-automated surveillance algorithms for deep SSI after colorectal surgery, developed on Spanish and Dutch data, in a Swedish setting. Methods The algorithms were validated in 225 randomly selected surgeries from Karolinska University Hospital from the period January 1, 2015 until August 31, 2020. Both algorithms were based on (re)admission and discharge data, mortality, reoperations, radiology orders, and antibiotic prescriptions, while one additionally used microbiology cultures. SSI was based on ECDC definitions. Sensitivity, specificity, positive predictive value, negative predictive value, and workload reduction were assessed compared to manual surveillance. Results Both algorithms performed well, yet the algorithm not relying on microbiological culture data had highest sensitivity (97.6, 95%CI: 87.4-99.6), which was comparable to previously published results. The latter algorithm aligned best with clinical practice and would lead to 57% records less to review. Conclusions The results highlight the importance of thorough validation before implementation in other clinical settings than in which algorithms were originally developed: the algorithm excluding microbiology cultures had highest sensitivity in this new setting and has the potential to support large-scale semi-automated surveillance of SSI after colorectal surgery. Keywords: Automated surveillance, Algorithms, Colorectal surgery, Healthcare-associated infections, Surgical site infections, Validation</description><identifier>ISSN: 2047-2994</identifier><identifier>EISSN: 2047-2994</identifier><identifier>DOI: 10.1186/s13756-023-01288-y</identifier><identifier>PMID: 37679824</identifier><language>eng</language><publisher>London: BioMed Central Ltd</publisher><subject>Algorithms ; Antibiotics ; Automated surveillance ; Automation ; Brief Report ; Classification ; Colorectal surgery ; Confidence intervals ; Disease control ; Disease prevention ; Drug resistance ; Electronic health records ; Electronic records ; Health aspects ; Healthcare-associated infections ; Hospitals ; Infection ; Medical records ; Microbiological culture ; Microbiology ; Mortality ; Nosocomial infections ; Patients ; Radiology ; Surgical site infections ; Sweden ; Validation ; Workloads</subject><ispartof>Antimicrobial resistance &amp; infection control, 2023-09, Vol.12 (1), p.1-96, Article 96</ispartof><rights>COPYRIGHT 2023 BioMed Central Ltd.</rights><rights>2023. 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Sensitivity, specificity, positive predictive value, negative predictive value, and workload reduction were assessed compared to manual surveillance. Results Both algorithms performed well, yet the algorithm not relying on microbiological culture data had highest sensitivity (97.6, 95%CI: 87.4-99.6), which was comparable to previously published results. The latter algorithm aligned best with clinical practice and would lead to 57% records less to review. Conclusions The results highlight the importance of thorough validation before implementation in other clinical settings than in which algorithms were originally developed: the algorithm excluding microbiology cultures had highest sensitivity in this new setting and has the potential to support large-scale semi-automated surveillance of SSI after colorectal surgery. 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Sensitivity, specificity, positive predictive value, negative predictive value, and workload reduction were assessed compared to manual surveillance. Results Both algorithms performed well, yet the algorithm not relying on microbiological culture data had highest sensitivity (97.6, 95%CI: 87.4-99.6), which was comparable to previously published results. The latter algorithm aligned best with clinical practice and would lead to 57% records less to review. Conclusions The results highlight the importance of thorough validation before implementation in other clinical settings than in which algorithms were originally developed: the algorithm excluding microbiology cultures had highest sensitivity in this new setting and has the potential to support large-scale semi-automated surveillance of SSI after colorectal surgery. Keywords: Automated surveillance, Algorithms, Colorectal surgery, Healthcare-associated infections, Surgical site infections, Validation</abstract><cop>London</cop><pub>BioMed Central Ltd</pub><pmid>37679824</pmid><doi>10.1186/s13756-023-01288-y</doi><oa>free_for_read</oa></addata></record>
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subjects Algorithms
Antibiotics
Automated surveillance
Automation
Brief Report
Classification
Colorectal surgery
Confidence intervals
Disease control
Disease prevention
Drug resistance
Electronic health records
Electronic records
Health aspects
Healthcare-associated infections
Hospitals
Infection
Medical records
Microbiological culture
Microbiology
Mortality
Nosocomial infections
Patients
Radiology
Surgical site infections
Sweden
Validation
Workloads
title External validation of semi-automated surveillance algorithms for deep surgical site infections after colorectal surgery in an independent country
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