Critical Care Explorations (Feb 2024)

Association of Epigenetic Age and Outcome in Critically Ill Patients

  • Archana Sharma-Oates, PhD,
  • Jack Sullivan, PhD,
  • Daniel Pestana, MSc,
  • Claudia C. dos Santos, MD,
  • Alexandra Binnie, MD,
  • Janet M. Lord, PhD

DOI
https://doi.org/10.1097/CCE.0000000000001044
Journal volume & issue
Vol. 6, no. 2
p. e1044

Abstract

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OBJECTIVES:. DNA methylation can be used to determine an individual’s biological age, as opposed to chronological age, an indicator of underlying health status. This study aimed to assess epigenetic age in critically ill patients with and without sepsis to determine if higher epigenetic age is associated with admission diagnosis or mortality. DESIGN:. Secondary analysis of whole blood DNA methylation data generated from a nested case–control study of critically ill septic and nonseptic patients. SETTING:. Four tertiary care hospitals in Canada. INTERVENTIONS:. None. PATIENTS:. Critically ill patients with and without sepsis. MEASUREMENTS AND MAIN RESULTS:. Epigenetic age was derived from DNA methylation data using the Hannum and PhenoAge algorithms and deviation from the patient’s chronological age in years was determined. Of the 66 patients with sepsis, 34 were male (51.5%), the mean age was 65.03 years and 25 patients (37.8%) died before discharge. Of the 68 nonseptic patients, 47 were male (69.1%), the mean age was 64.92 years and 25 (36.7%) died before discharge. Epigenetic age calculated using the PhenoAge algorithm showed a significant age acceleration of 4.97 years in septic patients (p = 0.045), but no significant acceleration in nonseptic patients. Epigenetic age calculated using the Hannum algorithm showed no significant acceleration in the septic or nonseptic patients. Similarly, in the combined septic and nonseptic cohorts, nonsurvivors showed an epigenetic age acceleration of 7.62 years (p = 0.004) using the PhenoAge algorithm while survivors showed no significant age acceleration. Survivor status was not associated with age acceleration using the Hannum algorithm. CONCLUSIONS:. In critically ill patients, epigenetic age acceleration, as calculated by the PhenoAge algorithm, was associated with sepsis diagnosis and mortality.