KISS Hospital Infection Surveillance System (Krankenhaus-Infektions-Surveillance-System)
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1 (Krankenhaus-Infektions-Surveillance-System) NEO-KISS component Reference Data Prepared: 10 March 2010 National Reference Center for Nosocomial Infection Surveillance Hindenburgdamm Berlin Tel / Fax: / Last update: 10 March 2010
2 Birthweight class To 499 Total departments 140 Total patients 754 Total patient days 41,488 Average length of surveillance (days): Table 1: Device usage rate 1 Device Total device days Pooled average 25% quantile Median 75% quantile Vascular catheter 25, CVC 16, PVC 8, Mech. Ventilation 30, Intubation 14, CPAP 15, Antibiotics 19, Table 2: Incidence density 2 Type of infection Total infections Pooled average 25% quantile Median 75% quantile Severe HAI Pneumonia BSI NEC Device usage rate: Total device days / Total patient days x Incidence density: Total infections / Total patient days x Severe HAI (Hospital-associated infection): Total BSI and Reference data -1-
3 Table 3: Device-associated infection rates 4 Dev.-assoc. infection Total dev.-assoc. infections Pooled average 25% quantile Median 75% quantile Vascular catheterassoc. BSI 2, CVC-assoc. BSI 1, PVC-assoc. BSI Mech. ventilationassoc Intubation-assoc CPAP-assoc Device-associated infection rate: Total device-associated infection / Total device days x 1000 Reference data -2-
4 Birthweight class 500 to 999 Total departments 198 Total patients 9,226 Total patient days 454,978 Average length of surveillance (days): Table 1: Device usage rate 1 Device Total device days Pooled average 25% quantile Median 75% quantile Vascular catheter 241, CVC 138, PVC 103, Mech. Ventilation 264, Intubation 97, CPAP 166, Antibiotics 157, Table 2: Incidence density 2 Type of infection Total infections Pooled average 25% quantile Median 75% quantile Severe HAI 3 3, Pneumonia BSI 2, NEC Device usage rate: Total device days / Total patient days x Incidence density: Total infections / Total patient days x Severe HAI (Hospital-associated infection): Total BSI and Reference data -3-
5 Table 3: Device-associated infection rates 4 Dev.-assoc. infection Total dev.-assoc. infections Pooled average 25% quantile Median 75% quantile Vascular catheterassoc. BSI 2, CVC-assoc. BSI PVC-assoc. BSI Mech. Ventilationassoc Intubation-assoc CPAP-assoc Device-associated infection rate: Total device-associated infection / Total device days x 1000 Reference data -4-
6 Birthweight class 1000 to 1499 Total departments 207 Total patients 14,321 Total patient days 404,571 Average length of surveillance (days): Table 1: Device usage rate 1 Device Total device days Pooled average 25% quantile Median 75% quantile Vascular catheter 189, CVC 68, PVC 121, Mech. Ventilation 104, Intubation 26, CPAP 77, Antibiotics 93, Table 2: Incidence density 2 Type of infection Total infections Pooled average 25% quantile Median 75% quantile Severe HAI 3 1, Pneumonia BSI 1, NEC Device usage rate: Total device days / Total patient days x Incidence density: Total infections / Total patient days x Severe HAI (Hospital-associated infection): Total BSI and Reference data -5-
7 Table 3: Device-associated infection rates 4 Dev.-assoc. infection Total dev.-assoc. infections Pooled average 25% quantile Median 75% quantile Vascular catheterassoc. BSI 1, CVC-assoc. BSI PVC-assoc. BSI Mech. Ventilationassoc Intubation-assoc CPAP-assoc Device-associated infection rate: Total device-associated infection / Total device days x 1000 Reference data -6-
8 Pathogen distribution Table 1: Pneumonia pathogens (Total infections = 596) Pathogen Total infections with/out pathogen Total infections with/out pathogen per 100 infections (%) Total pathogens per 100 pathogens (%) No pathogen detected KNS URE ENT ENB ECO SAU KLE PAE CAN SON Pathogens in table Total pathogens Reference data -7-
9 Pathogen distribution Table 2: BSI pathogens (Total infections = 4,486) Pathogen Total infections with/out pathogen Total infections with/out pathogen per 100 infections (%) Total pathogens per 100 pathogens (%) No pathogen detected 2, KNS 1, SAU ENT ENB ECO SON KLE CAN SER ANB Total pathogens in table 2,199 91,13 Total pathogens 2, Reference data -8-
10 Reference data statistics Total neonatolgy departments that contributed at least one data set to reference data: 209 Distribution of neonatology levels of care (self-assigned, as defined by German law) Perinatal center LEVEL 1 (highest risk patients): 152 Perinatal center LEVEL 2 (wide spectrum intermediary care for high risk patients): 43 Centers with emphasis on perinatal care (wide spectrum postnatal care for infants in hospitals): 6 Maternity hospitals (centers only for mature births without significant risk): 8 Reference data -9-
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