The study investigated mental health status of the students of public and private universities, their willingness to take vaccine against COVID-19, and its association with fear, anxiety, and depression. A cross-sectional electronic survey was conducted from July 26 to September 15, 2021, using a well-structured questionnaire among 504 university students. The average age of the participants was 22.92 ± 2.28 years and 76.98% of them were willing to vaccinate against COVID-19. The fear of COVID-19 was found mild, and depression level was demonstrated moderate among the students irrespective of the university types. Moreover, Masters/MPhil/PhD students and the students living in semi-urban areas had the highest rate of willingness to vaccinate. The study demonstrated that level of fear, anxiety, and depression was directly associated with increased willingness to vaccinate among the tertiary level students in Bangladesh. The outcome of this study sketched a positive association of knowledge and education with better management of pandemic in a society.

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http://dx.doi.org/10.1177/10105395241253029DOI Listing

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