How representative is N.A.M.I.? Demographic comparisons of a national N.A.M.I. sample with members and non-members of Louisiana mental health support groups.

1996 ◽  
Vol 19 (4) ◽  
pp. 71-73 ◽  
Author(s):  
Robert D. Leighninger ◽  
Anthony H. Speier ◽  
Donna Mayeux
2020 ◽  
Vol 4 (Supplement_1) ◽  
pp. 337-337
Author(s):  
Candidus Nwakasi ◽  
Darlingtina Esiaka ◽  
Janardan Subedi

Abstract Being in prison increases the vulnerability to poor health, especially mental illnesses. This is evident in the documented health disparities between prison inmates and the general population. For example, suicide rates among inmates are higher than in the general population. There is an urgent need to understand how inmates experience mental well-being. This is important as some inmates serve long/life sentences and some will need to successfully re-integrate into the society. Although they have a constitutional right to health care access through the Eight Amendment, little is known of the health information and mental health support seeking patterns among inmates. The current study examined factors associated with the amount of health information accessed, and participation in mental health support groups in US prisons. Data (N= 645) from the Program for the International Assessment of Adult Competencies (2014) were analyzed using linear and logistic regressions. Sample weights were applied in the analyses. Results show statistically significant relationships between amount of health information acquired and age (66 years and above), race, health-status, readiness to learn, literacy skill, and numeracy skill. Social trust moderated the effect of education on the odds of participating in mental health support groups. Also, gender, work duration, attending substance abuse support and life skills groups were significant predictors. Our study may provide insight for stakeholders (e.g., policymakers, clinicians, social workers, and wardens, etc.) working in partnership to deliver a more tailored health interventions for inmates, by highlighting key contextual issues predicting mental health and well-being within prison settings.


2020 ◽  
Vol 32 (6-7) ◽  
pp. 320-327 ◽  
Author(s):  
Mila Nu Nu Htay ◽  
Swe Swe Latt ◽  
Khine Sandar Maung ◽  
Wai Wai Myint ◽  
Soe Moe

International migration has become a global phenomenon bringing with it complex and interrelated issues related to the physical and mental well-being of the people involved. This study investigated the mental well-being and factors associated with mental health among Myanmar migrant workers (MMW) in Malaysia. The cross-sectional study was conducted in Penang, Malaysia by using the WHO-5 Well-Being Index Scale (WHO-5) and the Mental Health subscale of 36 items in the Short Form Health Survey (SF-36). Among 192 migrant workers who were understudied, 79.2% had poor mental well-being according to the WHO-5 scale. The duration of stay in Malaysia and without receiving financial aid from their employers despite having a physical illness were significantly associated with poor mental well-being. Mental health support groups should target migrant workers for mental health education and find ways to provide assistance for them. Furthermore, premigration training should be delivered at the country of origin that also provides information on the availability of mental health support in the host country.


2020 ◽  
Author(s):  
Daniel Mark Low ◽  
Laurie Rumker ◽  
Tanya Talkar ◽  
John Torous ◽  
Guillermo Cecchi ◽  
...  

Background: The COVID-19 pandemic is exerting a devastating impact on mental health, but it is not clear how people with different types of mental health problems were differentially impacted as the initial wave of cases hit. Objective: We leverage natural language processing (NLP) with the goal of characterizing changes in fifteen of the world's largest mental health support groups (e.g., r/schizophrenia, r/SuicideWatch, r/Depression) found on the website Reddit, along with eleven non-mental health groups (e.g., r/PersonalFinance, r/conspiracy) during the initial stage of the pandemic. Methods: We create and release the Reddit Mental Health Dataset including posts from 826,961 unique users from 2018 to 2020. Using regression, we analyze trends from 90 text-derived features such as sentiment analysis, personal pronouns, and a “guns” semantic category. Using supervised machine learning, we classify posts into their respective support group and interpret important features to understand how different problems manifest in language. We apply unsupervised methods such as topic modeling and unsupervised clustering to uncover concerns throughout Reddit before and during the pandemic. Results: We find that the r/HealthAnxiety forum showed spikes in posts about COVID-19 early on in January, approximately two months before other support groups started posting about the pandemic. There were many features that significantly increased during COVID-19 for specific groups including the categories “economic stress”, “isolation”, and “home” while others such as “motion” significantly decreased. We find that support groups related to attention deficit hyperactivity disorder (ADHD), eating disorders (ED), and anxiety showed the most negative semantic change during the pandemic out of all mental health groups. Health anxiety emerged as a general theme across Reddit through independent supervised and unsupervised machine learning analyses. For instance, we provide evidence that the concerns of a diverse set of individuals are converging in this unique moment of history; we discover that the more users posted about COVID-19, the more linguistically similar (less distant) the mental health support groups became to r/HealthAnxiety (ρ = -0.96, P<.001). Using unsupervised clustering, we find the Suicidality and Loneliness clusters more than doubled in amount of posts during the pandemic. Specifically, the support groups for borderline personality disorder and post-traumatic stress disorder became significantly associated with the Suicidality cluster. Furthermore, clusters surrounding Self-Harm and Entertainment emerged. Conclusions: By using a broad set of NLP techniques and analyzing a baseline of pre-pandemic posts, we uncover patterns of how specific mental health problems manifest in language, identify at-risk users, and reveal the distribution of concerns across Reddit which could help provide better resources to its millions of users. We then demonstrate that textual analysis is sensitive to uncover mental health complaints as they arise in real time, identifying vulnerable groups and alarming themes during COVID-19, and thus may have utility during the ongoing pandemic and other world-changing events such as elections and protests from the present or the past.


2021 ◽  
Vol 4 (4) ◽  
pp. 1043
Author(s):  
Sinta Ningrum ◽  
Heru Nurasa ◽  
Enjat Munajat

Mental health is a condition that affects a person's thinking, feeling, and protecting yourself so you can succeed in your daily life. However, the amount of stigma and ignorance of the rights of mental health sufferers makes support groups want to carry out policy advocacy. The author conducted a study literature review on mental health policy advocacy that has been done by previous researchers to find out various programs or ways to advocate for mental health management. This SLR shows that advocacy efforts can be carried out by distributing content on social media, communicative discussions, and health literacy tools. Increasing mental health support for policy advocacy will make the government wiser towards mental health policies and also facilitate health services for people with mental disorders.


2016 ◽  
Vol 25 (1) ◽  
pp. 54-63
Author(s):  
Trish McBride ◽  
Jane Fuller

Recent US research has validated the benefits and therapeutic value of peer support groups as a treatment component for depression, as has a 2008 Australian study of a women’s mental health support group. As facilitators working weekly with ThroughBlue, a support group of women who have experience of depression, we had already discovered the truth of their findings. This paper is a description of the way this Wellington group works, and may be of use to others looking to set up or facilitate similar groups elsewhere.


10.2196/22635 ◽  
2020 ◽  
Vol 22 (10) ◽  
pp. e22635 ◽  
Author(s):  
Daniel M Low ◽  
Laurie Rumker ◽  
Tanya Talkar ◽  
John Torous ◽  
Guillermo Cecchi ◽  
...  

Background The COVID-19 pandemic is impacting mental health, but it is not clear how people with different types of mental health problems were differentially impacted as the initial wave of cases hit. Objective The aim of this study is to leverage natural language processing (NLP) with the goal of characterizing changes in 15 of the world’s largest mental health support groups (eg, r/schizophrenia, r/SuicideWatch, r/Depression) found on the website Reddit, along with 11 non–mental health groups (eg, r/PersonalFinance, r/conspiracy) during the initial stage of the pandemic. Methods We created and released the Reddit Mental Health Dataset including posts from 826,961 unique users from 2018 to 2020. Using regression, we analyzed trends from 90 text-derived features such as sentiment analysis, personal pronouns, and semantic categories. Using supervised machine learning, we classified posts into their respective support groups and interpreted important features to understand how different problems manifest in language. We applied unsupervised methods such as topic modeling and unsupervised clustering to uncover concerns throughout Reddit before and during the pandemic. Results We found that the r/HealthAnxiety forum showed spikes in posts about COVID-19 early on in January, approximately 2 months before other support groups started posting about the pandemic. There were many features that significantly increased during COVID-19 for specific groups including the categories “economic stress,” “isolation,” and “home,” while others such as “motion” significantly decreased. We found that support groups related to attention-deficit/hyperactivity disorder, eating disorders, and anxiety showed the most negative semantic change during the pandemic out of all mental health groups. Health anxiety emerged as a general theme across Reddit through independent supervised and unsupervised machine learning analyses. For instance, we provide evidence that the concerns of a diverse set of individuals are converging in this unique moment of history; we discovered that the more users posted about COVID-19, the more linguistically similar (less distant) the mental health support groups became to r/HealthAnxiety (ρ=–0.96, P<.001). Using unsupervised clustering, we found the suicidality and loneliness clusters more than doubled in the number of posts during the pandemic. Specifically, the support groups for borderline personality disorder and posttraumatic stress disorder became significantly associated with the suicidality cluster. Furthermore, clusters surrounding self-harm and entertainment emerged. Conclusions By using a broad set of NLP techniques and analyzing a baseline of prepandemic posts, we uncovered patterns of how specific mental health problems manifest in language, identified at-risk users, and revealed the distribution of concerns across Reddit, which could help provide better resources to its millions of users. We then demonstrated that textual analysis is sensitive to uncover mental health complaints as they appear in real time, identifying vulnerable groups and alarming themes during COVID-19, and thus may have utility during the ongoing pandemic and other world-changing events such as elections and protests.


2017 ◽  
Vol 83 (1) ◽  
pp. 101 ◽  
Author(s):  
N. Gailits ◽  
K. Mathias ◽  
E. Nouvet ◽  
P. Pillai ◽  
L. Schwartz

2010 ◽  
Vol 66 (3) ◽  
pp. 553-569 ◽  
Author(s):  
Jason W. Crabtree ◽  
S. Alexander Haslam ◽  
Tom Postmes ◽  
Catherine Haslam

2020 ◽  
Author(s):  
Daniel M Low ◽  
Laurie Rumker ◽  
Tanya Talkar ◽  
John Torous ◽  
Guillermo Cecchi ◽  
...  

BACKGROUND The COVID-19 pandemic is impacting mental health, but it is not clear how people with different types of mental health problems were differentially impacted as the initial wave of cases hit. OBJECTIVE The aim of this study is to leverage natural language processing (NLP) with the goal of characterizing changes in 15 of the world’s largest mental health support groups (eg, r/schizophrenia, r/SuicideWatch, r/Depression) found on the website Reddit, along with 11 non–mental health groups (eg, r/PersonalFinance, r/conspiracy) during the initial stage of the pandemic. METHODS We created and released the Reddit Mental Health Dataset including posts from 826,961 unique users from 2018 to 2020. Using regression, we analyzed trends from 90 text-derived features such as sentiment analysis, personal pronouns, and semantic categories. Using supervised machine learning, we classified posts into their respective support groups and interpreted important features to understand how different problems manifest in language. We applied unsupervised methods such as topic modeling and unsupervised clustering to uncover concerns throughout Reddit before and during the pandemic. RESULTS We found that the r/HealthAnxiety forum showed spikes in posts about COVID-19 early on in January, approximately 2 months before other support groups started posting about the pandemic. There were many features that significantly increased during COVID-19 for specific groups including the categories “economic stress,” “isolation,” and “home,” while others such as “motion” significantly decreased. We found that support groups related to attention-deficit/hyperactivity disorder, eating disorders, and anxiety showed the most negative semantic change during the pandemic out of all mental health groups. Health anxiety emerged as a general theme across Reddit through independent supervised and unsupervised machine learning analyses. For instance, we provide evidence that the concerns of a diverse set of individuals are converging in this unique moment of history; we discovered that the more users posted about COVID-19, the more linguistically similar (less distant) the mental health support groups became to r/HealthAnxiety (ρ=–0.96, <i>P</i>&lt;.001). Using unsupervised clustering, we found the suicidality and loneliness clusters more than doubled in the number of posts during the pandemic. Specifically, the support groups for borderline personality disorder and posttraumatic stress disorder became significantly associated with the suicidality cluster. Furthermore, clusters surrounding self-harm and entertainment emerged. CONCLUSIONS By using a broad set of NLP techniques and analyzing a baseline of prepandemic posts, we uncovered patterns of how specific mental health problems manifest in language, identified at-risk users, and revealed the distribution of concerns across Reddit, which could help provide better resources to its millions of users. We then demonstrated that textual analysis is sensitive to uncover mental health complaints as they appear in real time, identifying vulnerable groups and alarming themes during COVID-19, and thus may have utility during the ongoing pandemic and other world-changing events such as elections and protests.


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