Distinguishing features of Long COVID identified through immune profiling

Jon Klein(Yale University), Jamie Wood(Icahn School of Medicine at Mount Sinai), Jillian R. Jaycox(Yale University), Peiwen Lu(Yale University), Rahul M. Dhodapkar(Yale University), Jeff Gehlhausen(Yale University), Alexandra Tabachnikova(Yale University), Laura Tabacof(Icahn School of Medicine at Mount Sinai), Amyn A. Malik(Yale New Haven Health System), Kathy Kamath(Serimmune (United States)), Kerrie Greene(Yale University), Valter Silva Monteiro(Yale University), Mario A. Peña-Hernández(Yale University), Tianyang Mao(Yale University), Bornali Bhattacharjee(Yale University), Takehiro Takahashi(Yale University), Carolina Lucas(Yale University), Julio Silva(Yale University), Dayna McCarthy(Icahn School of Medicine at Mount Sinai), Erica Breyman(Icahn School of Medicine at Mount Sinai), Jenna Tosto‐Mancuso(Icahn School of Medicine at Mount Sinai), Yile Dai(Yale University), Emily S. Perotti(Yale University), Koray Akduman(Yale University), Tiffany J. Tzeng(Yale University), Lan Xu(Yale University), İnci Yıldırım(Yale New Haven Hospital), Harlan M. Krumholz(Yale New Haven Hospital), John Shon(Serimmune (United States)), Ruslan Medzhitov(Howard Hughes Medical Institute), Saad B. Omer(Yale University), David van Dijk(Yale New Haven Hospital), Aaron M. Ring(Yale University), David Putrino(Icahn School of Medicine at Mount Sinai), Akiko Iwasaki(Howard Hughes Medical Institute)
medRxiv
August 10, 2022
Cited by 239Open Access
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Abstract

SARS-CoV-2 infection can result in the development of a constellation of persistent sequelae following acute disease called post-acute sequelae of COVID-19 (PASC) or Long COVID 1–3 . Individuals diagnosed with Long COVID frequently report unremitting fatigue, post-exertional malaise, and a variety of cognitive and autonomic dysfunctions 1–3 ; however, the basic biological mechanisms responsible for these debilitating symptoms are unclear. Here, 215 individuals were included in an exploratory, cross-sectional study to perform multi-dimensional immune phenotyping in conjunction with machine learning methods to identify key immunological features distinguishing Long COVID. Marked differences were noted in specific circulating myeloid and lymphocyte populations relative to matched control groups, as well as evidence of elevated humoral responses directed against SARS-CoV-2 among participants with Long COVID. Further, unexpected increases were observed in antibody responses directed against non-SARS-CoV-2 viral pathogens, particularly Epstein-Barr virus. Analysis of circulating immune mediators and various hormones also revealed pronounced differences, with levels of cortisol being uniformly lower among participants with Long COVID relative to matched control groups. Integration of immune phenotyping data into unbiased machine learning models identified significant distinguishing features critical in accurate classification of Long COVID, with decreased levels of cortisol being the most significant individual predictor. These findings will help guide additional studies into the pathobiology of Long COVID and may aid in the future development of objective biomarkers for Long COVID.


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