Screening For 4mrgn In German Emergency Departments

H Dormann, L Eichelsdörfer, M V Karg,H Mang,A-K Schumacher

MEDIZINISCHE KLINIK-INTENSIVMEDIZIN UND NOTFALLMEDIZIN(2021)

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摘要
Background Multiresistant Gram-negative bacteria (MRGN) are a growing clinical problem. The practical implementation of the recommendation of the Commission for Hospital Hygiene and Infection Prevention (KRINKO) for screening according to 4MRGN (MRGN resistant to all four categories of antibiotics), however, varies considerably between emergency departments. Objectives This study is intended to give an overview of the status quo and the quality assurance of 4MRGN screening and to show possibilities for process optimization. Materials and methods In 2018, a web-based survey was conducted among emergency room directors and directors of clinics in the Association of Hospital Directors in Germany (VKD). Results The response rate of the 267 clinics surveyed was 31.1%. In all, 83.4% of the emergency rooms surveyed routinely screen for multiresistant pathogens. In 71.8% a standard procedure (SOP) is defined and 82.0% of the test criteria refer to the KRINKO recommendation. Only 39.7% of the clinics follow it without in-house adaptation. No clinic can give an exact number of actual risk patients per year. According to the median, 55 patients in an emergency room met the KRINKO screening criteria in 2017. Only 40 patients were screened for suspected 4MRGN. Quality assurance of the screening was performed by 41.0% of emergency departments. The responsibility lies mainly with the hygiene department. Conclusions Even if screenings are carried out as far as possible, there is a lack of standardization in the recording of case numbers and quality assurance. Therefore, it can be assumed that there are numerous individuals with undetected 4MRGN. As a quality indicator, SOPs could clearly assign responsibilities and improve infection hygiene.
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关键词
Surveillance, Multidrug resistance, Diagnostic screening programs, Emergency departments, Antibiotic resistance, microbial
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