scholarly journals Covid-19 and population mental health in perspective

2021 ◽  
Vol 31 (Supplement_3) ◽  
Author(s):  
Sandro Galea

Abstract COVID-19 was accompanied by an increase in common mood-anxiety disorders in populations worldwide. This increase is consistent with what has been observed after other prior large-scale disasters but is larger in scale, scope, and duration. This has important implications both for our understanding of population mental health, and for how we may mitigate the mental health consequences of large-scale events.

Author(s):  
Michiko Ueda ◽  
Andrew Stickley ◽  
Hajime Sueki ◽  
Tetsuya Matsubayashi

AbstractThe ongoing COVID-19 pandemic may have detrimental mental health consequences. However, as yet, there is limited understanding of its impact on the mental health of the general population. The aim of this study is to examine the mental health of the Japanese general population by conducting the first systematic survey during the pandemic (N=1,000), with a particular focus on identifying the most vulnerable groups. Results from logistic regression analyses showed that the mental health of young and middle-aged individuals was significantly worse than that of older individuals during the pandemic. There was also some indication that individuals who were not currently working were significantly more likely to report a high level of anxiety and depressive symptoms. Part-time and temporary contract-based workers were also more likely to suffer from anxiety disorder. Our results highlight that monitoring the mental health of younger and economically vulnerable individuals may be especially important. In addition, they also indicate that population mental health might not only be affected by the direct health consequences of COVID-19, but also by the economic ramifications of the pandemic.


2020 ◽  
Vol 8 (3) ◽  
pp. 197-206
Author(s):  
Alvira Putri Calista ◽  
Ayun Sriatmi ◽  
Rani Tiyas Budiyanti

Imposing large-scale social restrictions has resulted in a transition of activity patterns in society. This change results in many activities that must be done at home, so that housewives try to adjust quickly to the situation. This demand raises mental health problems, which can also affect physical health, so that other people to provide support can be important value to housewives. This study aims to analyze the effect of social support and adaptation processes on the mental health status of housewives, including levels of depression, levels of anxiety disorders, and levels of stress because of large-scale social restrictions. This research is a survey research with quantitative methods and using a cross-sectional design. Respondents of this study were 100 housewives who were taken using accidental sampling. Collecting data using a questionnaire and analyzed using the Rank Spearman test. The results showed a relationship between social support with the level of depression (p-value = 0.014) and the level of anxiety disorders (p-value = 0.030), as well as the adaptation process with the level of depression (p-value = 0.002). There is a relationship between social support with the level of depression and the level of anxiety disorders in housewives, and the adaptation process with the level of depression in housewives. It is recommended that the East Jakarta City Government develop a program that involves selected communities to become mental health counselors. In addition, the puskesmas can make innovations in mental health efforts for families and optimize the role of mental health cadres.


2021 ◽  
Author(s):  
Tetsuya Matsubayashi ◽  
Yumi Ishikawa ◽  
Michiko Ueda

Background The economic crisis induced by the COVID-19 pandemic can have a serious impact on population mental health. This study seeks to understand whether the economic shocks associated with the pandemic have a differential impact by sex because the current pandemic may have disproportionally affected women compared to men. Methods We analyzed data from original online monthly surveys of the general population in Japan conducted between April 2020 and February 2021 (N=9000). We investigate whether individuals who had experienced a major job-related were more likely to have experienced depressive symptoms (PHQ-9) and anxiety disorders (GAD-7) during the pandemic and also if its effect varied by sex. Results The results of logistic regression suggest that depressive and anxiety symptoms were more prevalent among those who had recently experienced drastic changes in employment and working conditions, as well as among individuals with low income and those without college education. We also found that female respondents who had experienced a major employment-related change were more likely to have experienced both depression and anxiety disorders, but its effect on male workers was limited to depressive symptoms. Limitations We do not have data on the pre-COVID mental health conditions of our respondents, and our findings are descriptive. Some segments of the population may not be represented in our sample because our surveys were conducted online. Conclusions COVID-induced economic shocks can have a differential detrimental effect on mental health depending on the sex of workers. The mental health of female workers can be particularly vulnerable.


2019 ◽  
Author(s):  
Gareth J Griffith ◽  
Kelvyn Jones

AbstractMental health and its complexity, measurement and social determinants are increasingly important avenues of research for social scientists. Quantitative social science commonly investigates mental health as captured by population screening metrics. One of the most common of these metrics is the 12-Item General Health Questionnaire (GHQ-12). Despite its canonical use as an outcome of interest in social science, the traditional use of the summed scores of summed questionnaires carries empirical and substantive assumptions which are often not fully considered or justified in the research. We outline the implications of these assumptions and the restrictions imposed by traditional modelling techniques and advocate for a more nuanced approach to population mental health inference. We use novel Exploratory Structural Equation Modelling (ESEM) on a large, representative UK sample taken from the first wave of the Understanding Society Survey, totalling 40,452 respondents. We use this to exemplify the potential of traditional, restrictive assumptions to bias conclusions and policy recommendations. ESEM analysis identifies a 4-factor structure for the GHQ-12, including a newly proposed “Emotional Coping” dimension. This structure is then tested against leading proposed factor structures from the literature and is demonstrated to perform better across all metrics, under both Maximum Likelihood and Bayesian estimation. Moreover, the proposed factors are more substantively dissimilar than those retrieved from previous literature. The results highlight the inferential limitations of using simple summed scores for mental health measurement. Use of the highlighted methods in combination with population studies offers quantitative social scientists the opportunity to explore predictors and patterns of underlying processes of population mental health outcomes, explicitly addressing the complexity and measurement error inherent to mental health analysis.


2018 ◽  
Author(s):  
Jessica K. Morgan ◽  
James Trudeau ◽  
Joel K. Cartwright ◽  
Pamela K. Lattimore

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