TY - JOUR
T1 - A methylation clock model of mild SARS-CoV-2 infection provides insight into immune dysregulation
AU - Biobank Team
AU - Mao, Weiguang
AU - Miller, Clare M.
AU - Nair, Venugopalan D.
AU - Ge, Yongchao
AU - Amper, Mary Anne S.
AU - Cappuccio, Antonio
AU - George, Mary Catherine
AU - Goforth, Carl W.
AU - Guevara, Kristy
AU - Marjanovic, Nada
AU - Nudelman, German
AU - Pincas, Hanna
AU - Ramos, Irene
AU - Sealfon, Rachel S.G.
AU - Soares-Schanoski, Alessandra
AU - Vangeti, Sindhu
AU - Vasoya, Mital
AU - Weir, Dawn L.
AU - Zaslavsky, Elena
AU - Barcessat, Vanessa
AU - Tuballes, Kevin
AU - Del Valle, Diane Marie
AU - Nie, Kai
AU - Xie, Hui
AU - Chung, Grace
AU - Patel, Manishkumar
AU - Harris, Jocelyn
AU - Argueta, Kimberly
AU - Fehr, Jacques
AU - Gruberg, Barr
AU - Zaki, Nicholas
AU - Kim-Schulze, Seunghee
AU - Gnjatic, Sacha
AU - Merad, Miriam
AU - Letizia, Andrew G.
AU - Troyanskaya, Olga G.
AU - Sealfon, Stuart C.
AU - Chikina, Maria
N1 - Funding Information:
We thank the New York Genome Center for performing the NovaSeq sequencing assays and the University of Minnesota Genomics Center for processing Illumina EPIC methylation array and data collection. This work was supported by a grant (9700130) from the Defense Health Agency through the Naval Medical Research Center and by the Defense Advanced Research Projects Agency (contract number N6600119C4022). This research was supported in part by the University of Pittsburgh Center for Research Computing, RRID:SCR_022735, through the resources provided. Specifically, this work used the HTC cluster, which is supported by NIH award number S10OD028483. SG was partially supported by NIH grants and contracts CA224319, DK124165, 75N91020R00055, CA263705, and CA196521.
Publisher Copyright:
© 2023 The Authors. Published under the terms of the CC BY 4.0 license.
PY - 2023
Y1 - 2023
N2 - DNA methylation comprises a cumulative record of lifetime exposures superimposed on genetically determined markers. Little is known about methylation dynamics in humans following an acute perturbation, such as infection. We characterized the temporal trajectory of blood epigenetic remodeling in 133 participants in a prospective study of young adults before, during, and after asymptomatic and mildly symptomatic SARS-CoV-2 infection. The differential methylation caused by asymptomatic or mildly symptomatic infections was indistinguishable. While differential gene expression largely returned to baseline levels after the virus became undetectable, some differentially methylated sites persisted for months of follow-up, with a pattern resembling autoimmune or inflammatory disease. We leveraged these responses to construct methylation-based machine learning models that distinguished samples from pre-, during-, and postinfection time periods, and quantitatively predicted the time since infection. The clinical trajectory in the young adults and in a diverse cohort with more severe outcomes was predicted by the similarity of methylation before or early after SARS-CoV-2 infection to the model-defined postinfection state. Unlike the phenomenon of trained immunity, the postacute SARS-CoV-2 epigenetic landscape we identify is antiprotective.
AB - DNA methylation comprises a cumulative record of lifetime exposures superimposed on genetically determined markers. Little is known about methylation dynamics in humans following an acute perturbation, such as infection. We characterized the temporal trajectory of blood epigenetic remodeling in 133 participants in a prospective study of young adults before, during, and after asymptomatic and mildly symptomatic SARS-CoV-2 infection. The differential methylation caused by asymptomatic or mildly symptomatic infections was indistinguishable. While differential gene expression largely returned to baseline levels after the virus became undetectable, some differentially methylated sites persisted for months of follow-up, with a pattern resembling autoimmune or inflammatory disease. We leveraged these responses to construct methylation-based machine learning models that distinguished samples from pre-, during-, and postinfection time periods, and quantitatively predicted the time since infection. The clinical trajectory in the young adults and in a diverse cohort with more severe outcomes was predicted by the similarity of methylation before or early after SARS-CoV-2 infection to the model-defined postinfection state. Unlike the phenomenon of trained immunity, the postacute SARS-CoV-2 epigenetic landscape we identify is antiprotective.
KW - DNA methylation
KW - SARS-CoV-2
KW - machine learning model
KW - temporal dynamics
KW - trained immunity
UR - http://www.scopus.com/inward/record.url?scp=85150932037&partnerID=8YFLogxK
U2 - 10.15252/msb.202211361
DO - 10.15252/msb.202211361
M3 - Article
AN - SCOPUS:85150932037
SN - 1744-4292
JO - Molecular Systems Biology
JF - Molecular Systems Biology
ER -