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Integration of genomic and pharmacokinetic data to predict clinical outcomes in HIV-associated cryptococcal meningitis.

Publication ,  Journal Article
Stott, KE; Mohabir, JT; Bowers, K; Tenor, JL; Toffaletti, DL; Unsworth, J; Jimenez-Valverde, A; Ahmadu, A; Moyo, M; Gondwe, E; Chimang'anga, W ...
Published in: mBio
October 16, 2024

UNLABELLED: Cryptococcal meningitis causes an estimated 112,000 global deaths per annum. Genomic and phenotypic features of the infecting strain of Cryptococcus spp. have been associated with outcomes from cryptococcal meningitis. Additionally, population-level pharmacokinetic variability is well documented in these patient cohorts. The relative contribution of these factors to clinical outcomes is unknown. Based in Malawi, we conducted a sub-study of the phase 3 Ambition-CM trial (ISRCTN72509687), collecting plasma and cerebrospinal fluid at serial time points during the first 14 days of antifungal therapy. We explored the relative contribution of pathogen genotype, drug resistance phenotype, and pharmacokinetics on clinical outcomes including lumbar opening pressure, pharmacodynamic effect, and mortality. We report remarkable genomic homogeneity among infecting strains of Cryptococcus spp., within and between patients. There was no evidence of acquisition of antifungal resistance in our isolates. Genotypic features of the infecting strain were not consistently associated with adverse or favorable clinical outcomes. However, baseline fungal burden and early fungicidal activity (EFA) were associated with mortality. The strongest predictor of EFA was the level of exposure to amphotericin B. Our analysis suggests the most effective means of improving clinical outcomes from HIV-associated cryptococcal meningitis is to optimize exposure to potent antifungal therapy. IMPORTANCE: HIV-associated cryptococcal meningitis is associated with a high burden of mortality. Research into the different strain types causing this disease has yielded inconsistent findings in terms of which strains are associated with worse clinical outcomes. Our study suggests that the exposure of patients to potent anti-cryptococcal drugs has a more significant impact on clinical outcomes than the strain type of the infecting organism. Future research should focus on optimizing drug exposure, particularly in the context of novel anticryptococcal drugs coming into clinical use.

Duke Scholars

Published In

mBio

DOI

EISSN

2150-7511

Publication Date

October 16, 2024

Volume

15

Issue

10

Start / End Page

e0159224

Location

United States

Related Subject Headings

  • Treatment Outcome
  • Microbial Sensitivity Tests
  • Meningitis, Cryptococcal
  • Male
  • Malawi
  • Humans
  • HIV Infections
  • Genotype
  • Genomics
  • Female
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Stott, K. E., Mohabir, J. T., Bowers, K., Tenor, J. L., Toffaletti, D. L., Unsworth, J., … AMBITION Study Group. (2024). Integration of genomic and pharmacokinetic data to predict clinical outcomes in HIV-associated cryptococcal meningitis. MBio, 15(10), e0159224. https://doi.org/10.1128/mbio.01592-24
Stott, Katharine E., Jason T. Mohabir, Katharine Bowers, Jennifer L. Tenor, Dena L. Toffaletti, Jennifer Unsworth, Ana Jimenez-Valverde, et al. “Integration of genomic and pharmacokinetic data to predict clinical outcomes in HIV-associated cryptococcal meningitis.MBio 15, no. 10 (October 16, 2024): e0159224. https://doi.org/10.1128/mbio.01592-24.
Stott KE, Mohabir JT, Bowers K, Tenor JL, Toffaletti DL, Unsworth J, et al. Integration of genomic and pharmacokinetic data to predict clinical outcomes in HIV-associated cryptococcal meningitis. mBio. 2024 Oct 16;15(10):e0159224.
Stott, Katharine E., et al. “Integration of genomic and pharmacokinetic data to predict clinical outcomes in HIV-associated cryptococcal meningitis.MBio, vol. 15, no. 10, Oct. 2024, p. e0159224. Pubmed, doi:10.1128/mbio.01592-24.
Stott KE, Mohabir JT, Bowers K, Tenor JL, Toffaletti DL, Unsworth J, Jimenez-Valverde A, Ahmadu A, Moyo M, Gondwe E, Chimang’anga W, Chasweka M, Lawrence DS, Jarvis JN, Harrison T, Hope W, Lalloo DG, Mwandumba HC, Perfect JR, Cuomo CA, AMBITION Study Group. Integration of genomic and pharmacokinetic data to predict clinical outcomes in HIV-associated cryptococcal meningitis. mBio. 2024 Oct 16;15(10):e0159224.

Published In

mBio

DOI

EISSN

2150-7511

Publication Date

October 16, 2024

Volume

15

Issue

10

Start / End Page

e0159224

Location

United States

Related Subject Headings

  • Treatment Outcome
  • Microbial Sensitivity Tests
  • Meningitis, Cryptococcal
  • Male
  • Malawi
  • Humans
  • HIV Infections
  • Genotype
  • Genomics
  • Female