OMICmAge: An integrative multi-omics approach to quantify biological age with electronic medical records.
Qingwen ChenVarun B DwarakaNatàlia Carreras-GalloKevin MendezYulu ChenSofina BegumPriyadarshini KachrooNicole PrinceHannah WentTavis MendezAaron LinLogan TurnerMahdi MoqriSu H ChuRachel S KellyScott T WeissNicholas J W RattrayVadim N GladyshevElizabeth KarlsonCraig WheelockEwy A MathéAmber DahlinMichae J McGeachieRyan SmithJessica A Lasky-SuPublished in: bioRxiv : the preprint server for biology (2023)
Biological aging is a multifactorial process involving complex interactions of cellular and biochemical processes that is reflected in omic profiles. Using common clinical laboratory measures in ~30,000 individuals from the MGB-Biobank, we developed a robust, predictive biological aging phenotype, EMRAge , that balances clinical biomarkers with overall mortality risk and can be broadly recapitulated across EMRs. We then applied elastic-net regression to model EMRAge with DNA-methylation (DNAm) and multiple omics, generating DNAmEMRAge and OMICmAge, respectively. Both biomarkers demonstrated strong associations with chronic diseases and mortality that outperform current biomarkers across our discovery (MGB-ABC, n=3,451) and validation (TruDiagnostic, n=12,666) cohorts. Through the use of epigenetic biomarker proxies, OMICmAge has the unique advantage of expanding the predictive search space to include epigenomic, proteomic, metabolomic, and clinical data while distilling this in a measure with DNAm alone, providing opportunities to identify clinically-relevant interconnections central to the aging process.