Predicting Covid-19 Preventive Healthy Behaviors Based on Dysfunctional Attitudes in Five Countries

2020 
Background: Dysfunctional attitudes are biased assumptions and beliefs that the subject has toward himself, his surroundings, and the future world Objectives: The present study aimed to predict COVID-19 preventive healthy behaviors based on dysfunctional attitudes in five countries Methods: This was a descriptive, correlational study, and the statistical population of the study included all individuals over the age of 18 years residing in Iran, Australia, England, Sweden, and Canada Subjects were selected by the voluntary sampling method in the Spring of 2020 In total, 498 electronic questionnaires encompassing three sections of demographic characteristics, dysfunctional attitude scale (1987), and COVID-19 preventive health behaviors questionnaire (2020) were completed online In addition, data analysis was performed in SPSS version 21 using Pearson’s correlation coefficient and stepwise multiple regression Results: In this study, there was a significant negative relationship between dysfunctional attitudes and COVID-19 preventive healthy behaviors (P < 0 001) In addition, perfectionism, gender, and age predicted healthy behaviors (P < 0/001) The results of the comparison of Iran with other countries also demonstrated a significant reverse correlation between dysfunctional attitudes and healthy behaviors (P < 0 001) Moreover, there was a significant association between marital status, age, level of education, gender (P < 0 001), and economic status (P < 0 05) with healthy behaviors in Iran while no significant relationship was observed in other countries studied in this regard Conclusions: It is suggested that workshops on changing dysfunctional attitudes and strengthening positive attitudes in community members be held in-person or via cyberspace before or during the occurrence of crises such as the COVID-19 outbreak
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