Transcriptomics of Acute DENV-specific CD8+ T Cells Does Not Support Qualitative Differences As Drivers of Disease Severity
La Jolla Inst Immunol LJI | Gen Sir John Kotelawala Def Univ | Univ Colombo | North Colombo Teaching Hosp | Natl Inst Infect Dis
Abstract
While several lines of evidence suggest a protective role of T cells against disease associated with Dengue virus (DENV) infection, their potential contribution to immunopathology in the acute phase of DENV infection remains controversial, and it has been hypothesized that the more severe form of the disease (dengue hemorrhagic fever, DHF) is associated with altered T cell responses. To address this question, we determined the transcriptomic profiles of DENV-specific CD8+ T cells in a cohort of 40 hospitalized dengue patients with either a milder form of the disease (dengue fever, DF) or a more severe disease form (dengue hemorrhagic fever, DHF). We found multiple transcriptomic signatures, one associated with DENV-specific interferon-gamma responding cells and two other gene signatures, one specifically associated with the acute phase and the other with the early convalescent phase. Additionally, we found no differences in quantity and quality of DENV-specific CD8+ T cells based on disease severity. Taken together with previous findings that did not detect altered DENV-specific CD4 T cell responses, the current analysis argues against alteration in DENV-specific T cell responses as being a correlate of immunopathology.
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Key words
CD8+ T cells,DENV,hemorrhagic disease,transcriptome,phenotypes
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