Title: Session One:
1Session One Introduction to Good Antimicrobial
prescribing Antibiotic Selection Laboratory
based perspective Alasdair MacGowan Bristol
Centre for Antimicrobial Research Evaluation
(BCARE) University of Bristol/North Bristol NHS
Trust Southmead Hospital
2- What can laboratory data inform?
- For the individual patient
- identification of the potential pathogen
antibiogram - site of infection for definitive therapy
- part of a risk assessment for empiric therapy
i.e. carriage - of a resistant isolate
- therapeutic drug monitoring, reduce toxicity
risk optimise - microbiological outcomes
- Epidemiological information
- risk factors for resistance evolution, extent,
geography of resistance - local, national, international
- based on lab generated data based on lab
derived clinical isolates
3- Key issues for antibiotic selection are
- data is epidemiologically relevant
- predict clinical outcomes
4Epidemiologically relevant data? Collection of
resistance data in the community
patients with infection patients presenting with
infection nurse specimen sent to
laboratory laboratory data (location, specimen
type, potential pathogen antibiogram)
other (NHS Direct) (Casualty) (? OTC)
GP
5- The pitfalls
- data skewed because patients who fail initial
therapy - more likely to be tested
- age bias towards young and old
- isolates from different diseases included
disproportionately, - i.e. sinusitis vs LRTI, exacerbation COPD vs
CAP - variation in methodology (CLSI vs EUCAST
breakpoints)
Livermore, MacGowan, Wale, 1998
6- Examples of bias (1)
- 1 in 35 episodes of chest infection results in
a sputum referral - sputum referral not age matched with LRTI
diagnosis
Lovering, unpublished
7- Examples of bias (2)
- not all specimens sent relate to infection
- lt50 MSU relate to UTI
- Impact on resistance assessment
- lab databases over estimate resistance
- ampicillin resistance in H.influenza 20 in lab
database - 11 in unselected patients who receive
antibiotics - MacGowan et al, 1998
- trimethoprim resistance 12-17 in E.coli from
patients with frequency - dysuria syndromes 25 in lab database
- McNulty, Lovering, unpublished
8- Hospital based surveillance
- generally on firmer ground i.e. bacteraemia
data - National resistance in bacteraemic isolates
9Informs collection of local data
10Informs collection of local data
11Does susceptibility testing predict outcome?
12Adequate and inadequate antimicrobial
chemotherapy
adequate therapy which is effective against the
micro-organism causing infection (based on
susceptibility testing) inadequate microbiologica
lly documented infection which is not being
adequately treated as? drug is not active
against the pathogen? pathogen is resistant to
the drug (based on susceptibility testing)
13Location ICU studies (1)
14ICU studies (2)
15Resistances Extended spectrum Blactamase
producing E.coli/Klebsiella (1) Kim et al,
2002142 bloodstream isolates in Korea, E.coli or
K.pneumoniae, strains MIC gt2mg/L to third
generation cephalosporins Patients treated with
extended spectrum cephalosporin
16Does susceptibility testing predict
outcome? YES NO
- ICU
- intra abdominal sepsis
- MRSA
- ESBL production
- P.aeruginosa
- penicillin non susceptible pneumococci
- P.aeruginosa
17Understanding the discrepancies
wild type distribution
wild type cut off
susceptibility result (MIC, mg/L)
S.pneumoniae
Pharmacodynamic index (TgtMIC Cmax/MIC AUC/MIC)
MRSA ESBL resistances which ?? MIC
Pharmacokinetics
P.aeruginosa efflux pumps VISA
Microbiological outcome
Clinical breakpoint
Clinical outcome
18- Laboratory based perspective on antibiotic
selection - provides epidemiological data for empirical
therapy - (beware bias)
- provides individual patient data to optimise
outcome - (needs to be placed in the correct context)
- provides strains for further study