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Stephen Harvey Zinner, M.D.

Concepts

This page shows the publications Stephen Zinner has written about Models, Theoretical.
Connection Strength

0.231
  1. Predicting antibiotic combination effects on the selection of resistant Staphylococcus aureus: In vitro model studies with linezolid and gentamicin. Int J Antimicrob Agents. 2018 Dec; 52(6):854-860.
    View in: PubMed
    Score: 0.076
  2. Bacterial antibiotic resistance studies using in vitro dynamic models: Population analysis vs. susceptibility testing as endpoints of mutant enrichment. Int J Antimicrob Agents. 2015 Sep; 46(3):313-8.
    View in: PubMed
    Score: 0.061
  3. Predicting bacterial resistance using the time inside the mutant selection window: possibilities and limitations. Int J Antimicrob Agents. 2014 Oct; 44(4):301-5.
    View in: PubMed
    Score: 0.057
  4. Predictors of bacterial resistance using in vitro dynamic models: area under the concentration-time curve related to either the minimum inhibitory or mutant prevention antibiotic concentration. J Antimicrob Chemother. 2016 Mar; 71(3):678-84.
    View in: PubMed
    Score: 0.016
  5. The impact of duration of antibiotic exposure on bacterial resistance predictions using in vitro dynamic models. J Antimicrob Chemother. 2009 Oct; 64(4):815-20.
    View in: PubMed
    Score: 0.010
  6. Linezolid pharmacodynamics with Staphylococcus aureus in an in vitro dynamic model. Int J Antimicrob Agents. 2009 Mar; 33(3):251-4.
    View in: PubMed
    Score: 0.010
Connection Strength

The connection strength for concepts is the sum of the scores for each matching publication.

Publication scores are based on many factors, including how long ago they were written and whether the person is a first or senior author.

Funded by the NIH National Center for Advancing Translational Sciences through its Clinical and Translational Science Awards Program, grant number UL1TR002541.