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  1. Article: Early prediction of COVID-19 severity using extracellular vesicle COPB2.

    Fujita, Yu / Hoshina, Tokio / Matsuzaki, Juntaro / Yoshioka, Yusuke / Kadota, Tsukasa / Hosaka, Yusuke / Fujimoto, Shota / Kawamoto, Hironori / Watanabe, Naoaki / Sawaki, Kenji / Sakamoto, Yohei / Miyajima, Makiko / Lee, Kwangyole / Nakaharai, Kazuhiko / Horino, Tetsuya / Nakagawa, Ryo / Araya, Jun / Miyato, Mitsuru / Yoshida, Masaki /
    Kuwano, Kazuyoshi / Ochiya, Takahiro

    Journal of extracellular vesicles

    2021  Volume 10, Issue 8, Page(s) e12092

    Abstract: ... with the potential to serve as early predictive biomarkers for COVID-19 severity. As the best predictive marker, EV ... that these extracellular components may be key determinants and/or predictors of COVID-19 severity. To test our hypothesis ... these profiles and COVID-19 severity. Strikingly, we identified three distinct groups of markers (antiviral ...

    Abstract The clinical manifestations of COVID-19 vary broadly, ranging from asymptomatic infection to acute respiratory failure and death. But the predictive biomarkers for characterizing the variability are still lacking. Since emerging evidence indicates that extracellular vesicles (EVs) and extracellular RNAs (exRNAs) are functionally involved in a number of pathological processes, we hypothesize that these extracellular components may be key determinants and/or predictors of COVID-19 severity. To test our hypothesis, we collected serum samples from 31 patients with mild COVID-19 symptoms at the time of their admission for discovery cohort. After symptomatic treatment without corticosteroids, 9 of the 31 patients developed severe/critical COVID-19 symptoms. We analyzed EV protein and exRNA profiles to look for correlations between these profiles and COVID-19 severity. Strikingly, we identified three distinct groups of markers (antiviral response-related EV proteins, coagulation-related markers, and liver damage-related exRNAs) with the potential to serve as early predictive biomarkers for COVID-19 severity. As the best predictive marker, EV COPB2 protein, a subunit of the Golgi coatomer complex, exhibited significantly higher abundance in patients remained mild than developed severe/critical COVID-19 and healthy controls in discovery cohort (AUC 1.00 (95% CI: 1.00-1.00)). The validation set included 40 COVID-19 patients and 39 healthy controls, and showed exactly the same trend between the three groups with excellent predictive value (AUC 0.85 (95% CI: 0.73-0.97)). These findings highlight the potential of EV COPB2 expression for patient stratification and for making early clinical decisions about strategies for COVID-19 therapy.
    MeSH term(s) Biomarkers/blood ; COVID-19/blood ; COVID-19/immunology ; COVID-19/physiopathology ; Cell-Free Nucleic Acids/blood ; Coatomer Protein/blood ; Extracellular Vesicles/chemistry ; Humans ; Retrospective Studies ; SARS-CoV-2/physiology ; Severity of Illness Index
    Chemical Substances Biomarkers ; COPB2 protein, human ; Cell-Free Nucleic Acids ; Coatomer Protein
    Language English
    Publishing date 2021-06-02
    Publishing country United States
    Document type Journal Article ; Research Support, Non-U.S. Gov't
    ZDB-ID 2683797-3
    ISSN 2001-3078
    ISSN 2001-3078
    DOI 10.1002/jev2.12092
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  2. Article ; Online: Early Prediction of COVID-19 Severity Using Extracellular Vesicles and Extracellular RNAs

    Fujita, Y. / Hoshina, T. / Matsuzaki, J. / Kadota, T. / Fujimoto, S. / Kawamoto, H. / Watanabe, N. / Sawaki, K. / Sakamoto, Y. / Miyajima, M. / Lee, K. / Nakaharai, K. / Horino, T. / Nakagawa, R. / Araya, J. / Miyato, M. / Yoshida, M. / Kuwano, K. / Ochiya, T.

    Abstract: ... as early predictive biomarkers for COVID-19 severity. Among these markers, EV COPB2 has the best predictive ... that these extracellular components may be key determinants and/or predictors of COVID-19 severity. To test our hypothesis ... early clinical decisions about strategies for COVID-19 therapy. ...

    Abstract The clinical manifestations of COVID-19 vary broadly, ranging from asymptomatic infection to acute respiratory failure and death. But the predictive biomarkers for characterizing the variability are still lacking. Since emerging evidence indicates that extracellular vesicles (EVs) and extracellular RNAs (exRNAs) are functionally involved in a number of pathological processes, we hypothesize that these extracellular components may be key determinants and/or predictors of COVID-19 severity. To test our hypothesis, we collected serum samples from 31 patients with mild COVID-19 symptoms at the time of their admission. After standard therapy without corticosteroids, 9 of the 31 patients developed severe COVID-19 symptoms. We analyzed EV protein and exRNA profiles to look for correlations between these profiles and COVID-19 severity. Strikingly, we identified three distinct groups of markers (antiviral response-related EV proteins, coagulation-related markers, and liver damage-related exRNAs) with the potential to serve as early predictive biomarkers for COVID-19 severity. Among these markers, EV COPB2 has the best predictive value for severe deterioration of COVID-19 patients in this cohort. This type of information concerning functional extracellular component profiles could have great value for patient stratification and for making early clinical decisions about strategies for COVID-19 therapy.
    Keywords covid19
    Publisher MedRxiv; WHO
    Document type Article ; Online
    DOI 10.1101/2020.10.14.20212340
    Database COVID19

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  3. Article ; Online: Early Prediction of COVID-19 Severity Using Extracellular Vesicles and Extracellular RNAs

    Fujita, Yu / Hoshina, Tokio / Matsuzaki, Juntaro / Kadota, Tsukasa / Fujimoto, Shota / Kawamoto, Hironori / Watanabe, Naoaki / Sawaki, Kenji / Sakamoto, Yohei / Miyajima, Makiko / Lee, Kwangyole / Nakaharai, Kazuhiko / Horino, Tetsuya / Nakagawa, Ryo / Araya, Jun / Miyato, Mitsuru / Yoshida, Masaki / Kuwano, Kazuyoshi / Ochiya, Takahiro

    medRxiv

    Abstract: ... as early predictive biomarkers for COVID-19 severity. Among these markers, EV COPB2 has the best predictive ... that these extracellular components may be key determinants and/or predictors of COVID-19 severity. To test our hypothesis ... early clinical decisions about strategies for COVID-19 therapy. ...

    Abstract The clinical manifestations of COVID-19 vary broadly, ranging from asymptomatic infection to acute respiratory failure and death. But the predictive biomarkers for characterizing the variability are still lacking. Since emerging evidence indicates that extracellular vesicles (EVs) and extracellular RNAs (exRNAs) are functionally involved in a number of pathological processes, we hypothesize that these extracellular components may be key determinants and/or predictors of COVID-19 severity. To test our hypothesis, we collected serum samples from 31 patients with mild COVID-19 symptoms at the time of their admission. After standard therapy without corticosteroids, 9 of the 31 patients developed severe COVID-19 symptoms. We analyzed EV protein and exRNA profiles to look for correlations between these profiles and COVID-19 severity. Strikingly, we identified three distinct groups of markers (antiviral response-related EV proteins, coagulation-related markers, and liver damage-related exRNAs) with the potential to serve as early predictive biomarkers for COVID-19 severity. Among these markers, EV COPB2 has the best predictive value for severe deterioration of COVID-19 patients in this cohort. This type of information concerning functional extracellular component profiles could have great value for patient stratification and for making early clinical decisions about strategies for COVID-19 therapy.
    Keywords covid19
    Language English
    Publishing date 2020-10-16
    Publisher Cold Spring Harbor Laboratory Press
    Document type Article ; Online
    DOI 10.1101/2020.10.14.20212340
    Database COVID19

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