| Literature DB >> 32646458 |
Christian Munck1, Ravi U Sheth2, Edward Cuaresma3, Jessica Weidler4, Stephania L Stump4, Philip Zachariah5, David H Chong6, Anne-Catrin Uhlemann4, Julian A Abrams7, Harris H Wang2, Daniel E Freedberg8.
Abstract
BACKGROUND: The need for early antibiotics in the intensive care unit (ICU) is often balanced against the goal of antibiotic stewardship. Long-course antibiotics increase the burden of antimicrobial resistance within colonizing gut bacteria, but the dynamics of this process are not fully understood. We sought to determine how short-course antibiotics affect the antimicrobial resistance phenotype and genotype of colonizing gut bacteria in the ICU by performing a prospective cohort study with assessments of resistance at ICU admission and exactly 72 h later.Entities:
Keywords: Antibiotics; Antimicrobial resistance; Colonization; Healthcare-associated infection; Sepsis
Mesh:
Substances:
Year: 2020 PMID: 32646458 PMCID: PMC7350675 DOI: 10.1186/s13054-020-03061-8
Source DB: PubMed Journal: Crit Care ISSN: 1364-8535 Impact factor: 9.097
Baseline characteristics of the patients in the study, treatments received in the ICU, and clinical outcomes within 30 days
| Baseline characteristic | |
|---|---|
| Age (median years, IQR) | 64 (52–74) |
| Female | 21 (44%) |
| Admitted to ICU from hospital floor | 12 (25%) |
| Baseline immunosuppression | 18 (38%) |
| Primary reason for ICU admission, organized by organ system | |
| Cardiovascular/shock | 14 (29%) |
| Respiratory failure | 10 (21%) |
| Neurological | 7 (15%) |
| Gastrointestinal | 6 (13%) |
| Liver | 5 (10%) |
| Malignancy | 3 (6%) |
| Renal failure | 3 (6%) |
| Antibiotics | |
| Any antibiotics | 41 (85%) |
| Broad-spectrum antibiotics | 39 (81%) |
| Non-antibiotic interventions | |
| Enteral feeding | 36 (75%) |
| Opioids | 35 (73%) |
| Mechanical ventilation | 26 (54%) |
| Proton pump inhibitors | 22 (46%) |
| Hemodialysis | 6 (13%) |
| Culture-proven infections | 19 (40%) |
| MDR infections | 14 (29%) |
| Death | 11 (23%) |
Immunosuppression was defined as a history of solid organ transplant or as a receipt of ablative chemotherapy, steroids at the equivalent of ≥ 5 mg/day prednisone, antimetabolites, anti-TNFα agents, calcineurin inhibitors, or mycophenolate. Broad-spectrum antibiotics were β-lactam/β-lactamase inhibitor combination antibiotics, cephalosporins, fluoroquinolones, lincosamides (clindamycin), and monobactams (e.g., meropenem)
*See reference [17] for operationalization of culture-proven infections; MDR infections were the subset of culture-proven infections caused by MRSA, VRE, and Gram-negative bacteria with non-susceptibility to 3rd-generation cephalosporins
Fig. 1Receipt of antibiotics during the study. a Distribution of the number of patients receiving each antibiotic during the 72 h of the study. b Heatmap of pairwise antibiotic combinations. The numbers on the heatmap denote the number of patients receiving each drug pair during the 72 h of the study
Fig. 2Incidence of antimicrobial resistance phenotype at ICU admission and 72 h later, based on culture for β-lactam resistance in Gram-negative bacteria, MRSA, and VRE. There was no significant increase in resistance after 72 h although there were trends in that direction. Chi-squared or Fisher’s p values are shown
Fig. 3Change in antimicrobial resistance phenotype stratified by receipt of antibiotics. The vertical axis for each panel shows the number of patients who did (red) or did not (blue) test positive for resistance within an antibiotic class category. This data is then stratified on the horizontal axis by whether antibiotics within that same category were received (e.g., β-lactam resistance and receipt of β-lactam antibiotics). The panels are for a Gram-negative bacteria with β-lactam resistance, b vancomycin-resistant Enterococcus (VRE), and c methicillin-resistant Staphylococcus aureus (MRSA). In all panels, data is shown based on testing done after 72 h in the ICU for individuals that tested negative at admission. p values are for Fisher’s test, comparing resistance after 72 h based on receipt of antibiotics within the relevant category
Fig. 4Within-individual changes in antimicrobial resistance genotype are shown stratified by receipt of antibiotics. Rows are organized by antibiotic classes and columns show data for individual genes (left panels) and then summary data (right panels): a 48 β-lactam resistance genes and b combined data across all 48 genes; c 2 vancomycin resistance genes (vanC and vanB) and d combined data across the 2 genes; and e 5 macrolide resistance genes and f combined data across the 5 genes. Data has been calculated based on the difference in PCR CT values from admission to 72 h (i.e., admission CT value minus 72-h CT value for each gene). The within-individual dCT values are displayed as raw data with an overlay of box-and-whisker plots. None of the differences was statistically significant, comparing dCT values for those who received antibiotics within the relevant category to those who did not (e.g., comparing dCT values for β-lactam antibiotics for patients who received β-lactam antibiotics versus patients who did not receive β-lactam antibiotics)
Fig. 5Relationship between individuals’ resistance pattern at ICU admission compared to 72 h later, for antimicrobial resistance phenotype and genotype. a Heatmap depicting the percentage of patients with resistant isolates at 72 h that also had resistant isolates at admission. b Heatmap depicting the percentage of patients with resistance genes at 72 h that also had resistance genes at admission. For both heatmaps, horizontal axes are resistance at admission and vertical axes are resistance after 72 h. Bottom rows show (1) relative risk (RR) of testing positive for a resistance category at 72 h for those that were resistant to the same category at admission versus those who tested negative on admission and (2) p values for the same comparison. In panel b, the cases of RR = 0 reflect that no sample-pairs were positive on both admission and 72 h later