Factors Predicting Acceptance and Recommendation of Covid-19 Vaccines Among Previously Infected Academic Dental Hospital Personnel; An Artificial Intelligence-Based Study

Author:

Abu-Hammad Osama12,Althagafi Nebras1,Abu-Hammad Shaden3,Eshky Rawah1,Abu-Hammad Abdalla4,Alhodhodi Aishah1,Abu-Hammad Malak5,Dar-Odeh Najla6

Affiliation:

1. College of Dentistry , Taibah University , Al Madinah Al Munawara 43353 , Saudi Arabia

2. School of Dentistry , University of Jordan , Amman , Jordan

3. Comprehensive Amman, Healthcare center , Amman , Jordan

4. School of Medicine , University of Jordan , Amman , Jordan

5. School of Medicine , Hashemite University , Zarqa , , Jordan

6. College of Dentistry , Taibah University , Al Madinah Al Munawara 43353 , Saudi Arabia ; School of Dentistry, University of Jordan, Amman 11942, Jordan

Abstract

Abstract Objectives The study aims to construct artificial neural networks that are capable of predicting willingness of previously infected academic dental hospital personnel (ADHP) to accept or recommend vaccines to family or patients. Methods: The study utilized data collected during a cross-sectional survey conducted among COVID-19 infected ADHP. A total of ten variables were used as input variables for the network and analysis was repeated 10 times to calculate variation in accuracy and validity of input variables. Three variables were determined by the best network to be the least important and consequently they were excluded and a new network was constructed using the remaining seven variables. Analysis was repeated 10 times to investigate variation of accuracy of predictions. Results: The best network showed a prediction accuracy that exceeded 90% during testing stage. This network was used to predict attitudes towards vacci-nation for a number of hypothetical subjects. The following factors were identified as predictors for undesirable vaccination attitudes: dental students who had an insufficient vaccine awareness, a long symptomatic period of illness, and who did not practice quarantine. Conclusions: It is concluded that vaccine awareness is the most important factor in predicting favorable vaccine attitudes. Vaccine awareness campaigns that target ADHP should give more attention to students than their faculty.

Publisher

Walter de Gruyter GmbH

Subject

General Earth and Planetary Sciences,General Environmental Science

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