Detailed Information on Publication Record
2021
Universal Predictors of Dental Students’ Attitudes towards COVID-19 Vaccination: Machine Learning-Based Approach
RIAD, Abanoub, Yi HUANG, Huthaifa ABDULQADER, Mariana MORGADO, Silvi DOMNORI et. al.Basic information
Original name
Universal Predictors of Dental Students’ Attitudes towards COVID-19 Vaccination: Machine Learning-Based Approach
Authors
RIAD, Abanoub (818 Egypt, guarantor, belonging to the institution), Yi HUANG (156 China, belonging to the institution), Huthaifa ABDULQADER, Mariana MORGADO, Silvi DOMNORI, Michal KOŠČÍK (203 Czech Republic, belonging to the institution), José João MENDES, Miloslav KLUGAR (203 Czech Republic, belonging to the institution) and Elham KATEEB
Edition
Vaccines, Basel, MDPI, 2021, 2076-393X
Other information
Language
English
Type of outcome
Článek v odborném periodiku
Field of Study
30102 Immunology
Country of publisher
Switzerland
Confidentiality degree
není předmětem státního či obchodního tajemství
References:
Impact factor
Impact factor: 4.961
RIV identification code
RIV/00216224:14110/21:00122571
Organization unit
Faculty of Medicine
UT WoS
000726871300001
Keywords in English
COVID-19 vaccines; decision making; decision trees; dental education; international association of dental students; machine learning; mass vaccination; regression analysis
Tags
International impact, Reviewed
Změněno: 1/2/2022 11:32, Mgr. Tereza Miškechová
Abstract
V originále
Background: young adults represent a critical target for mass-vaccination strategies of COVID-19 that aim to achieve herd immunity. Healthcare students, including dental students, are perceived as the upper echelon of health literacy; therefore, their health-related beliefs, attitudes and behaviors influence their peers and communities. The main aim of this study was to synthesize a data-driven model for the predictors of COVID-19 vaccine willingness among dental students. Methods: a secondary analysis of data extracted from a recently conducted multi-center and multi-national cross-sectional study of dental students’ attitudes towards COVID-19 vaccination in 22 countries was carried out utilizing decision tree and regression analyses. Based on previous literature, a proposed conceptual model was developed and tested through a machine learning approach to elicit factors related to dental students’ willingness to get the COVID-19 vaccine. Results: machine learning analysis suggested five important predictors of COVID-19 vaccination willingness among dental students globally, i.e., the economic level of the country where the student lives and studies, the individual’s trust of the pharmaceutical industry, the individual’s misconception of natural immunity, the individual’s belief of vaccines risk-benefit-ratio, and the individual’s attitudes toward novel vaccines. Conclusions: according to the socio-ecological theory, the country’s economic level was the only contextual predictor, while the rest were individual predictors. Future research is recommended to be designed in a longitudinal fashion to facilitate evaluating the proposed model. The interventions of controlling vaccine hesitancy among the youth population may benefit from improving their views of the risk-benefit ratio of COVID-19 vaccines. Moreover, healthcare students, including dental students, will likely benefit from increasing their awareness of immunization and infectious diseases through curricular amendments.
Links
LTC20031, research and development project |
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MUNI/A/1608/2020, interní kód MU |
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MUNI/IGA/1543/2020, interní kód MU |
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