Integrated plasma proteomic and single-cell immune signaling network signatures demarcate mild, moderate, and severe COVID-19

整合血浆蛋白质组学和单细胞免疫信号网络特征可区分轻症、中症和重症 COVID-19

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作者:Dorien Feyaerts,Julien Hédou,Joshua Gillard,Han Chen,Eileen S Tsai,Laura S Peterson,Kazuo Ando,Monali Manohar,Evan Do,Gopal K R Dhondalay,Jessica Fitzpatrick,Maja Artandi,Iris Chang,Theo T Snow,R Sharon Chinthrajah,Christopher M Warren,Richard Wittman,Justin G Meyerowitz,Edward A Ganio,Ina A Stelzer,Xiaoyuan Han,Franck Verdonk,Dyani K Gaudillière,Nilanjan Mukherjee,Amy S Tsai,Kristen K Rumer,Danielle R Jacobsen,Zachary B Bjornson-Hooper,Sizun Jiang,Sergio Fragoso Saavedra,Sergio Iván Valdés Ferrer,J Daniel Kelly,David Furman,Nima Aghaeepour,Martin S Angst,Scott D Boyd,Benjamin A Pinsky,Garry P Nolan,Kari C Nadeau,Brice Gaudillière,David R McIlwain

Abstract

The biological determinants underlying the range of coronavirus 2019 (COVID-19) clinical manifestations are not fully understood. Here, over 1,400 plasma proteins and 2,600 single-cell immune features comprising cell phenotype, endogenous signaling activity, and signaling responses to inflammatory ligands are cross-sectionally assessed in peripheral blood from 97 patients with mild, moderate, and severe COVID-19 and 40 uninfected patients. Using an integrated computational approach to analyze the combined plasma and single-cell proteomic data, we identify and independently validate a multi-variate model classifying COVID-19 severity (multi-class area under the curve [AUC]training = 0.799, p = 4.2e-6; multi-class AUCvalidation = 0.773, p = 7.7e-6). Examination of informative model features reveals biological signatures of COVID-19 severity, including the dysregulation of JAK/STAT, MAPK/mTOR, and nuclear factor κB (NF-κB) immune signaling networks in addition to recapitulating known hallmarks of COVID-19. These results provide a set of early determinants of COVID-19 severity that may point to therapeutic targets for prevention and/or treatment of COVID-19 progression.

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