A multi-omics recovery factor predicts long COVID in the IMPACC study.

Gisela Gabernet,Jessica Maciuch,Jeremy P Gygi,John F Moore,Annmarie Hoch,Caitlin Syphurs,Tianyi Chu,Naresh Doni Jayavelu,David B Corry,Farrah Kheradmand,Lindsey R Baden,Rafick-Pierre Sekaly,Grace A McComsey,Elias K Haddad,Charles B Cairns,Nadine Rouphael,Ana Fernandez-Sesma,Viviana Simon,Jordan P Metcalf,Nelson I Agudelo Higuita,Catherine L Hough,William B Messer,Mark M Davis,Kari C Nadeau,Bali Pulendran,Monica Kraft,Chris Bime,Elaine F Reed,Joanna Schaenman,David J Erle,Carolyn S Calfee,Mark A Atkinson,Scott C Brakenridge,Esther Melamed,Albert C Shaw,David A Hafler,Alison D Augustine,Patrice M Becker,Al Ozonoff,Steven E Bosinger,Walter Eckalbar,Holden T Maecker,Seunghee Kim-Schulze,Hanno Steen,Florian Krammer,Kerstin Westendorf,Impacc Network,Bjoern Peters,Slim Fourati,Matthew C Altman,Ofer Levy,Kinga K Smolen,Ruth R Montgomery,Joann Diray-Arce,Steven H Kleinstein,Leying Guan,Lauren Ir Ehrlich
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Abstract

BACKGROUND Following SARS-CoV-2 infection, ~10-35% of COVID-19 patients experience long COVID (LC), in which debilitating symptoms persist for at least three months. Elucidating biologic underpinnings of LC could identify therapeutic opportunities. METHODS We utilized machine learning methods on biologic analytes provided over 12-months after hospital discharge from >500 COVID-19 patients in the IMPACC cohort to identify a multi-omics "recovery factor", trained on patient-reported physical function survey scores. Immune profiling data included PBMC transcriptomics, serum O-link and plasma proteomics, plasma metabolomics, and blood CyTOF protein levels. Recovery factor scores were tested for association with LC, disease severity, clinical parameters, and immune subset frequencies. Enrichment analyses identified biologic pathways associated with recovery factor scores. RESULTS LC participants had lower recovery factor scores compared to recovered participants. Recovery factor scores predicted LC as early as hospital admission, irrespective of acute COVID-19 severity. Biologic characterization revealed increased inflammatory mediators, elevated signatures of heme metabolism, and decreased androgenic steroids as predictive and ongoing biomarkers of LC. Lower recovery factor scores were associated with reduced lymphocyte and increased myeloid cell frequencies. The observed signatures are consistent with persistent inflammation driving anemia and stress erythropoiesis as major biologic underpinnings of LC. CONCLUSION The multi-omics recovery factor identifies patients at risk of LC early after SARS-CoV-2 infection and reveals LC biomarkers and potential treatment targets. TRIAL REGISTRATION CLINICALTRIALS gov NCT04378777. FUNDING This study was funded by NIH, NIAID and NSF.
在IMPACC研究中,多组学恢复因子预测长COVID。
在SARS-CoV-2感染后,约10-35%的COVID-19患者会经历长时间的COVID (LC),其中衰弱症状持续至少三个月。阐明LC的生物学基础可以确定治疗机会。方法:我们利用机器学习方法对IMPACC队列中bbbb500名COVID-19患者出院后12个月内提供的生物分析数据进行分析,以确定多组学“恢复因子”,并根据患者报告的身体功能调查评分进行训练。免疫分析数据包括PBMC转录组学、血清O-link和血浆蛋白质组学、血浆代谢组学和血细胞tof蛋白水平。测试恢复因子得分与LC、疾病严重程度、临床参数和免疫亚群频率的关联。富集分析确定了与恢复因子评分相关的生物途径。结果slc参与者的恢复因子得分低于恢复的参与者。恢复因子评分早在入院时就预测了LC,与急性COVID-19严重程度无关。生物学特征显示炎症介质增加,血红素代谢特征升高,雄激素类固醇减少是LC的预测和持续的生物标志物。较低的恢复因子评分与淋巴细胞减少和髓细胞频率增加有关。观察到的特征与持续炎症驱动贫血和应激性红细胞生成作为LC的主要生物学基础是一致的。结论多组学恢复因子可识别SARS-CoV-2感染后早期存在LC风险的患者,揭示LC生物标志物和潜在治疗靶点。试验注册:clinicaltrialsgov NCT04378777。本研究由NIH, NIAID和NSF资助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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