Literature DB >> 25627763

Validation of an automated surveillance approach for drain-related meningitis: a multicenter study.

Maaike S M van Mourik1, Annet Troelstra1, Jan Willem Berkelbach van der Sprenkel2, Marischka C E van der Jagt-Zwetsloot3, Jolande H Nelson4, Piet Vos5, Mark P Arts6, Paul J W Dennesen7, Karel G M Moons8, Marc J M Bonten1.   

Abstract

OBJECTIVE Manual surveillance of healthcare-associated infections is cumbersome and vulnerable to subjective interpretation. Automated systems are under development to improve efficiency and reliability of surveillance, for example by selecting high-risk patients requiring manual chart review. In this study, we aimed to validate a previously developed multivariable prediction modeling approach for detecting drain-related meningitis (DRM) in neurosurgical patients and to assess its merits compared to conventional methods of automated surveillance. METHODS Prospective cohort study in 3 hospitals assessing the accuracy and efficiency of 2 automated surveillance methods for detecting DRM, the multivariable prediction model and a classification algorithm, using manual chart review as the reference standard. All 3 methods of surveillance were performed independently. Patients receiving cerebrospinal fluid drains were included (2012-2013), except children, and patients deceased within 24 hours or with pre-existing meningitis. Data required by automated surveillance methods were extracted from routine care clinical data warehouses. RESULTS In total, DRM occurred in 37 of 366 external cerebrospinal fluid drainage episodes (12.3/1000 drain days at risk). The multivariable prediction model had good discriminatory power (area under the ROC curve 0.91-1.00 by hospital), had adequate overall calibration, and could identify high-risk patients requiring manual confirmation with 97.3% sensitivity and 52.2% positive predictive value, decreasing the workload for manual surveillance by 81%. The multivariable approach was more efficient than classification algorithms in 2 of 3 hospitals. CONCLUSIONS Automated surveillance of DRM using a multivariable prediction model in multiple hospitals considerably reduced the burden for manual chart review at near-perfect sensitivity.

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Year:  2015        PMID: 25627763     DOI: 10.1017/ice.2014.5

Source DB:  PubMed          Journal:  Infect Control Hosp Epidemiol        ISSN: 0899-823X            Impact factor:   3.254


  4 in total

1.  The combination of decoy receptor 3 and soluble triggering receptor expressed on myeloid cells-1 for the diagnosis of nosocomial bacterial meningitis.

Authors:  Yong-Juan Liu; Li-Hua Shao; Jian Zhang; Shan-Ji Fu; Gang Wang; Feng-Zhe Chen; Feng Zheng; Rui-Ping Ma; Hai-Hong Liu; Xiao-Meng Dong; Li-Xian Ma
Journal:  Ann Clin Microbiol Antimicrob       Date:  2015-03-23       Impact factor: 3.944

2.  A diagnostic algorithm for the surveillance of deep surgical site infections after colorectal surgery.

Authors:  Tessa Mulder; Marjolein F Q Kluytmans-van den Bergh; Maaike S M van Mourik; Jannie Romme; Rogier M P H Crolla; Marc J M Bonten; Jan A J W Kluytmans
Journal:  Infect Control Hosp Epidemiol       Date:  2019-03-14       Impact factor: 3.254

3.  Toll-like receptor linked cytokine profiles in cerebrospinal fluid discriminate neurological infection from sterile inflammation.

Authors:  Simone M Cuff; Joseph P Merola; Jason P Twohig; Matthias Eberl; William P Gray
Journal:  Brain Commun       Date:  2020-12-17

4.  Electronically assisted surveillance systems of healthcare-associated infections: a systematic review.

Authors:  H Roel A Streefkerk; Roel Paj Verkooijen; Wichor M Bramer; Henri A Verbrugh
Journal:  Euro Surveill       Date:  2020-01
  4 in total

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