ID 13698
File
Authors
Okada, Shinichi Department of Pediatrics, National Hospital Organization Yonago Medical Center Researchers DB KAKEN
Tomita, Katsuyuki Department of Respiratory Medicine, National Hospital Organization Yonago Medical Center
Inui, Genki Department of Respiratory Medicine, National Hospital Organization Yonago Medical Center
Ikeuchi, Tomoyuki Department of Respiratory Medicine, National Hospital Organization Yonago Medical Center
Touge, Hirokazu Department of Respiratory Medicine, National Hospital Organization Yonago Medical Center
Hasegawa, Junichi Department of Internal Medicine, National Hospital Organization Yonago Medical Center KAKEN
Yamasaki, Akira Division of Respiratory Medicine and Rheumatology, Department of Multidisciplinary Internal Medicine, School of Medicine, Faculty of Medicine, Tottori University Researchers DB KAKEN
Keywords
adverse effect
antibody
BNT162b2 vaccine
classification and regression tree
Abstract
Background: The BNT162b mRNA vaccine for coronavirus disease 2019, which is caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), mimics the immune response to natural infection. Few studies have predicted the adverse effects (AEs) after the second-dose vaccination. We present a predictive model for AEs and immune response after the second-dose of the BNT162b mRNA vaccine. Methods: To predict AEs, 282 healthcare workers (HCWs) were enrolled in this prospective observational study. The classification and regression tree (CART) model was established, and its predictive efficacy was assessed. To predict immune response, 282 HCWs were included in the analysis. Moreover, the factors affected by anti-SARS-CoV-2 spike protein RBD antibody (s-IgG) were evaluated using serum samples collected 2 months after the second-dose vaccination. The s-IgG level was assessed using Lumipulse G1200. Multiple regression analyses were conducted to evaluate variables associated with anti-s-IgG titer levels. Results: The most common AEs after the second-dose vaccination were pain (87.6%), redness (17.0%) at the injection site, fatigue (68.8%), headache (53.5%), and fever (37.5%). Based on the CART model, headache after the first-dose vaccination and age < 30 years were identified as the first and second discriminators for predicting the headache after the second-dose vaccination, respectively. In the multiple linear regression model, anti-s-IgG titer levels were associated with age, female sex, and AEs including headache and induration at the injection site after the second-dose vaccination. Conclusion: Headache after the first-dose vaccination can be a predictor of headache after the second-dose vaccination, and AEs are indicators of immune response.
Publisher
Tottori University Medical Press
Content Type
Journal Article
Link
ISSN
05135710
EISSN
13468049
NCID
AA00892882
Journal Title
Yonago Acta Medica
Current Journal Title
Yonago Acta Medica
Volume
65
Issue
1
Start Page
63
End Page
69
Published Date
2022-02-22
Publisher-DOI
Text Version
Publisher
Rights
(C) 2022 Tottori University Medical Press.
Citation
Yonago Acta Medica. 2022, 65(1), 63-69. doi10.33160/yam.2022.02.012
Department
Faculty of Medicine/Graduate School of Medical Sciences/University Hospital
Language
English