• Social science & medicine · Nov 2020

    Resilience and demographic characteristics predicting distress during the COVID-19 crisis.

    • Shaul Kimhi, Hadas Marciano, Yohanan Eshel, and Bruria Adini.
    • Head of the Stress and Resilience Research Center, Tel-Hai College, Israel; Stress and Resilience Research Center, Tel-Hai College, and the Ergonomics and Human Factors Unit, University of Haifa, Israel. Electronic address: shaulkim@telhai.ac.il.
    • Soc Sci Med. 2020 Nov 1; 265: 113389.

    RationaleDue to lack of vaccine or cure, the COVID-19 pandemic presents a threat to all human beings, undermining people's basic sense of safety and increasing distress symptoms.ObjectiveTo investigate the extent to which individual resilience, well-being and demographic characteristics may predict two indicators of Coronavirus pandemic: distress symptoms and perceived danger.MethodTwo independent samples were employed: 1) 605 respondents recruited through an internet panel company; 2) 741 respondents recruited through social media, using snowball sampling. Both samples filled a structured online questionnaire. Correlations between psychological/demographic variables and distress and perceived danger were examined. Path analysis was conducted to identify predictive indicators of distress and perceived danger.ResultsSignificant negative correlations were found between individual/community resilience and sense of danger (-0.220 and -0.255 respectively; p < .001) and distress symptoms (- 0.398 and -0.544 respectively; p < .001). Significant positive correlations were found between gender, community size, economic difficulties and sense of danger (0.192, 0.117 and 0.244 respectively; p < .001). Gender and economic difficulties also positively correlated with distress symptoms (0.130 and 0.214 respectively; p < .001). Path analysis revealed that all paths were significant (p < .008 to .001) except between family income and distress symptoms (p = .12). The seven predictors explained 20% of sense of danger variance and 34% the distress symptoms variance. The most highly predictive indicators were the two psychological characteristics, individual resilience, and well-being. Age, gender, community size, and economic difficulties due to COVID-19 further add to predicting distress, while community and national resilience do not. .ConclusionsIndividual resilience and well-being have been found as the first and foremost predictors of COVID-19 anxiety. Though both predictors are complex and may be influenced by many factors, given the potential return of COVID-19 threat and other future health pandemic threats to our world, we must rethink and develop ways to reinforce them.Copyright © 2020 Elsevier Ltd. All rights reserved.

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