| Literature DB >> 35922860 |
Andrew Conway Morris1,2,3, Katharina Kohler4, Thomas De Corte5,6, Maurizio Cecconi7, Jan De Waele5,6, Ari Ercole4,8, Harm-Jan De Grooth9,10, Paul W G Elbers9, Pedro Povoa11,12,13, Rui Morais13, Despoina Koulenti14,15, Sameer Jog16, Nathan Nielsen17, Alasdair Jubb4,8.
Abstract
BACKGROUND: The COVID-19 pandemic presented major challenges for critical care facilities worldwide. Infections which develop alongside or subsequent to viral pneumonitis are a challenge under sporadic and pandemic conditions; however, data have suggested that patterns of these differ between COVID-19 and other viral pneumonitides. This secondary analysis aimed to explore patterns of co-infection and intensive care unit-acquired infections (ICU-AI) and the relationship to use of corticosteroids in a large, international cohort of critically ill COVID-19 patients.Entities:
Mesh:
Substances:
Year: 2022 PMID: 35922860 PMCID: PMC9347163 DOI: 10.1186/s13054-022-04108-8
Source DB: PubMed Journal: Crit Care ISSN: 1364-8535 Impact factor: 19.334
Fig. 1Distribution of values of inflammatory markers within the first 24 h of admission between patients with and without identified co-infection at ICU admission
Description of ICU-acquired infections identified in patients
| Site/class of infection | Rate per 1000 ICU days* | |
|---|---|---|
| Bacterial pulmonary infection | 2091 (44%) | 22.2/1000 ICU days |
| Fungal pulmonary infection | 447 (9%) | 4.7/1000 ICU days |
| Bacteraemia (not catheter related) | 708 (15%) | 7.5/1000 ICU days |
| Catheter/line-associated blood stream infection | 563 (12%) | 6/1000 ICU days |
| Urinary tract infection | 572 (12%) | 6.1/1000 ICU days |
| Abdominal infection | 88 (2%) | 0.9/1000 ICU days |
| Central nervous system infection | 20 (0.4%) | 0.2/1000 ICU days |
| Other ICU-acquired infection | 248 (5%) | 2.6/1000 ICU days |
*Rate per 1000 ICU days only includes patients with value for length of stay—459 (9%) patients were not included in the rate calculation
Demographic and clinical factors assessed for association with development of ICU-acquired infections, median (IQR) values shown for continuous and ordinal variables
| Parameter | ICU-acquired infection | No ICU-acquired infection | |
|---|---|---|---|
| Age | 62 (54–70) | 62 (52–71) | 0.975 |
| Percentage male | 73% | 69% | 0.003 |
| Comorbidity score | 1 (0–2) | 1 (0–1) | 0.0004 |
| Percentage receiving steroid treatment | 58% | 43% | < 0.001 |
| Ventilation severity score | 3 (2–3) | 2 (1–3) | < 0.001 |
| Mechanically ventilated at any time | 97% | 72% | < 0.001 |
| Ventilation duration (days) | 21 (14–31) | 10 (6–15) | < 0.001 |
| Vasopressor/inotrope at any time | 50% | 25% | < 0.01 |
| Renal replacement therapy at any time | 18% | 6% | < 0.01 |
Fig. 2Forest plot of steroid treatment by centre: Colour and dot size represent the percentage of overall patients that received steroid treatment, the forest plot shows the median and IQR of length of steroid treatment. Centres are ordered by the median length of time patients receive steroids
Fig. 3Propensity score (PS) matching for corticosteroid matching parameters compared to the input cohort. A density plots and histograms showing the effect of PS matching on distributions. B Covariance balance ‘love’ plot illustrating the effect of PS on standardised mean difference. C Numeric summary statistics following PS matching. Reporting percentages for categorical variables, mean for non-skewed parameters, and median for skewed parameters. Last two entries below the thick line are outcome measures and were not used for matching