Abstract
Background
The contents of traditional communication media and new internet social media reflect the interests of society. However, certain barriers and a lack of attention towards mental disorders have been previously observed.
Objective
The objective of this study is to measure the relevance of influential American mainstream media outlets for the distribution of psychiatric information and the interest generated in these topics among their Twitter followers.
Methods
We investigated tweets generated about mental health conditions and diseases among 15 mainstream general communication media outlets in the United States of America between January 2007 and December 2016. Our study strategy focused on identifying several psychiatric terms of primary interest. The number of retweets generated from the selected tweets was also investigated. As a control, we examined tweets generated about the main causes of death in the United States of America, the main chronic neurological degenerative diseases, and HIV.
Results
In total, 13,119 tweets about mental health disorders sent by the American mainstream media outlets were analyzed. The results showed a heterogeneous distribution but preferential accumulation for a select number of conditions. Suicide and gender dysphoria accounted for half of the number of tweets sent. Variability in the number of tweets related to each control disease was also found (5998). The number of tweets sent regarding each different psychiatric or organic disease analyzed was significantly correlated with the number of retweets generated by followers (1,030,974 and 424,813 responses to mental health disorders and organic diseases, respectively). However, the probability of a tweet being retweeted differed significantly among the conditions and diseases analyzed. Furthermore, the retweeted to tweet ratio was significantly higher for psychiatric diseases than for the control diseases (odds ratio 1.11, CI 1.07-1.14; P<.001).
Conclusions
American mainstream media outlets and the general public demonstrate a preferential interest for psychiatric diseases on Twitter. The heterogeneous weights given by the media outlets analyzed to the different mental health disorders and conditions are reflected in the responses of Twitter followers.
Keywords: Twitter, social media, psychiatry, mental health
Introduction
Mental health disorders occur frequently in the general population. In 2015, approximately 44 million Americans suffered from some type of mental illness, with depression and anxiety representing the most prevalent forms [1]. Mental health disorders lead to a poor quality of life and patient disability [2,3]. Furthermore, mortality is significantly higher among people with mental health disorders than it is among comparable populations, with a 10-year median of potential life lost [4,5]. Additionally, mental health diseases commonly provoke self-stigma, societal stigma, or both, which negatively affect patients’ disclosure of these psychiatric disorders [6,7]. Social regard for mental health disorders appears to be a key factor for the adequate consideration of these diseases, for the understanding and support received by psychiatric patients, and for the funding provided for medical investment and research of these disorders [8]. Thus, measurement of the social relevance of mental disorders is a fundamental objective for progressing the field of psychiatry [9].
Access to, and the diffusion of news information, has dramatically changed in recent years. In addition to traditional media, the internet and social media have become pivotal instruments for sharing knowledge [10-12]. Accordingly, the internet has radically modified how most people find, communicate, and share information regarding health and medical conditions, and its use and popularity have increased considerably [13]. Its relevance is further exemplified by the growing reliance on the internet as a source of information and health advice [14]. Social media is a relatively new health communication channel that enables interactions among large groups of people suffering from the same afflictions and promotes the ability to find and share information about health and medical conditions and receive health messages [15].
For example, Twitter is a social networking site that is one of the most popular and widely used forms of social media [16,17] in which users (“tweeters”) post status updates (ie, “tweets”) that are distributed to “followers.” These tweets are also made available to the public. This form of largely public conversation in which “short bursts” of inconsequential information are relayed in 140-character “tweets” seems an unlikely source for lifelong learning [18,19].
Mainstream media outlets, such as television, radio, newspapers, and online journals are considered to be sensors and drivers of society [20-22]. These media outlets use Twitter as a tool for news distribution and thus subsequently influence large groups of people in real time [23]. The analysis of distributed tweets could represent an effective indicator of “real-world performance” [24-26]. Furthermore, because Twitter has become more popular, different players in health and medicine have begun to realize its potential for acquiring and distributing medical information [27]. Moreover, the qualitative and quantitative relevance of tweets has been shown in various investigations, including analyses of the interests and feelings of the general population with respect to health and disease, the interactions between patients and doctors or health care providers, and the promotion of the scientific impact of medical research in the news media. However, the validity of Twitter as a reflection of public opinion has been challenged [28-32]. Furthermore, patient attitudes toward various medical topics, including vaccines, illnesses, pain, drug use, and oncological and cardiovascular disease have been analyzed [33-41]. Consequently, the analysis of distributed tweets about mental health disease by primary media channels and the frequency of retweets they generate may be an effective tool for assessing social and individual interest toward psychiatric diseases.
In this paper, we investigated the distribution of tweets about mental health diseases from highly recognized and relevant American communication media sources. More specifically, the study cites periodicals and various television and radio channels, which are used as sensors of societal attitudes towards psychiatric disease throughout the first decade of Twitter’s networking activity. Furthermore, we analyzed the interest generated among followers through the quantification of subsequent retweets. As a control, we simultaneously studied the number of tweets distributed by our selected social media platforms about diseases considered to be the main causes of death within the United States of America (USA) as well as tweets about HIV because of its recognized social relevance.
Methods
Communication Media Analyzed
In this study, we focused on tweets sent among a representative sample of primary American communications media outlets. We selected 15 general media outlets among those with the highest number of followers on Twitter, as estimated by their individual accounts, and ranked among those with highest social influence during the study duration [42-46]. Furthermore, we selected representative samples from different categories of media outlets to avoid potential bias. We included 6 newspapers (New York Times, Washington Post, Los Angeles Times, USA Today, Chicago Tribune, and New York Post), 5 TV or radio channels (NBC, CBS, Fox, CNN, and ABC), 1 general magazine (Time), 1 news agency (AP), and 2 online news outlets (BuzzFeed and Huffington Post).
Search Strategy
Our research strategy focused on searching for tweets that referred to common psychiatric terms of interest. We investigated all tweets sent from Twitter accounts, filtering them according to specific criteria using the following list of keywords: anxiety, phobias, posttraumatic stress disorder (PTSD), panic disorder, generalized anxiety disorder (GAD), obsessive compulsive disorder (OCD), depressive disorder, suicide, bipolar disorder, insomnia, schizophrenia, attention deficit hyperactivity disorder or hyperactivity (ADHD), alcoholism, drug addiction, gambling disorder, anorexia nervosa, bulimia, dysthymia, addictions, addictive, Asperger syndrome, autism, personality disorder, and gender dysphoria. Additionally, as controls, we used tweets focused on the main causes of death in the USA (prostate, lung, colorectal, and breast cancer, stroke, diabetes mellitus, and chronic obstructive pulmonary disease [COPD]), the main causes of chronic neurologic degenerative disease (Alzheimer and Parkinson diseases) [47,48], and HIV infection.
Search Tool Utilized
In this study, we used the Twitter Firehose data stream, which is managed by Gnip and allows access to 100% of all public tweets that match a set of “search” criteria (query) [49]. In our study, the search criteria were the previously indicated keywords, and the following is an example of a query: “depression -economic -great -tropical from:nytimes OR from:washingtonpost OR from:nypost OR from:latimes OR from:USATODAY OR from:chicagotribune OR from:CNN OR from:ABC OR from:NBCNews OR from:CBSNews OR from:FoxNews OR from:AP OR from:TIME OR from:HuffingtonPost OR from:BuzzFeed until:2017-01-01. Tweet Binder, the search engine we employed, uses automatic machine learning text analysis algorithms, and it also uses node.js and the PHP language, which enables an analysis of tweets in the json format (used by Gnip).
Next, all the collected tweets were individually inspected by 3 members of the research team to identify tweets deemed irrelevant for the purpose of this study. Tweets that included keywords not related to psychiatric content were excluded, such as those referring to suicide attacks, economic depression, etc. The content of the tweets was then specifically analyzed by 3 separate blinded members of the research team, and those with at least 2 coincidences were excluded. This process led to the creation of a more concise database that we could easily reference. Moreover, the number of tweets generated was stratified by month and year beginning in January 2007 and terminating in December 2016. We also analyzed the number of retweets that each tweet generated, which yielded a total database of 19,117 tweets and 1,455,787 retweets.
Statistical Analysis
A descriptive analysis of the number of tweets and retweets was performed for both the mental health and control conditions. The correlations among the observation time units (months) were evaluated using the Spearman rank test. To analyze the retweets generated by the disease-related tweets, odds ratios (ORs) were calculated for each of the studied diseases. The odds of the sum of all conditions (retweet to tweet ratio) was used as the baseline and confidence intervals were calculated using a Bonferroni-adjusted significance level (alpha) of .001. To evaluate the annual changes within and differences between the two groups, a multivariable generalized linear model (negative binomial regression) was performed for both tweets and retweets. Finally, seasonality was studied through the Seasonal Decomposition procedure of a multiplicative time series model. All statistical analyses were performed using SPSS v22 and STATA v14.
Results
Media Outlets Showed a Marked Interest in Mental Health Diseases and Tweet Patterns Generated Responses From Followers
We first analyzed the number of tweets generated by 15 mainstream American media outlets related to mental health disorders beginning in 2007 (soon after the launch of Twitter) through December 2016. As a control, we also included a parallel analysis of tweets related to the primary causes of death in the USA (prostate, lung, colorectal, and breast cancer; stroke, diabetes mellitus, and COPD), the two most relevant chronic neurologic degenerative diseases (Alzheimer and Parkinson disease), and HIV infection.
As shown in Table 1, 13,119 tweets were generated by the media about mental health disorders. The number of tweets about each of the analyzed diseases follows a heterogeneous pattern of distribution, with a preferential accumulation for a select number of conditions. Suicide and gender dysphoria accounted for half of the total number of tweets. The tweets related to highly prevalent anxiety and its different clinical forms only accounted for 11.39% (1494/13119) of the total number, and it was followed by depression, which accounted for 10.66% (1399/13119) of tweets. Mental health diseases characterized by child and adolescent incidence, such as autism, Asperger syndrome, ADHD, anorexia, and bulimia, accounted for 13.87% (1819/13119) of the total tweets generated. Additionally, 9.39% (1232/13119) of all tweets were related to addictive disorders, specifically alcoholism, drug abuse, and gambling disorders. Less than 8% of the analyzed tweets referred to the eight other diseases included in the study. Of note, bipolar disorder and schizophrenia, both of which are highly prevalent and disabling, only accounted for 0.63% (82/13119) and 1.33% (174/13119) of all generated tweets, respectively.
Table 1.
Mental health condition or disease | Tweet, n (%) | Retweet, n (%) | Spearman rho | P value | |
Suicide | 4124 (31.44) | 268,395 (26.03) | 0.876 | <.001 | |
Gender dysphoria | 2555 (19.48) | 238,298 (23.11) | 0.941 | <.001 | |
Total for anxiety disorders | 1494 (11.39) | 134,726 (13.07) | 0.907 | <.001 | |
|
Anxiety | 984 (7.50) | 92,042 (8.93) | 0.872 | <.001 |
|
PTSDa | 453 (3.45) | 39,243 (3.81) | 0.991 | <.001 |
|
Phobias | 34 (0.26) | 1018 (0.10) | 0.886 | <.001 |
|
GADb | 22 (0.17) | 2386 (0.23) | 0.172 | .064 |
|
Panic disorder | 1 (0.01) | 37 (<0.01) | –0.008 | .927 |
Depression | 1399 (10.66) | 11,067 (11.26) | 0.785 | <.001 | |
Autism spectrum disorders | 1337 (10.19) | 129,066 (12.52) | 0.870 | <.001 | |
|
Autism | 1253 (9.55) | 117,955 (11.44) | 0.860 | <.001 |
|
Asperger syndrome | 84 (0.64) | 11,111 (1.08) | 0.875 | <.001 |
Addictive disorders | 1232 (9.39) | 83,809 (8.13) | 0.822 | <.001 | |
|
Addictions | 933 (7.11) | 67,114 (6.51) | 0.798 | <.001 |
|
Alcoholism | 146 (1.11) | 7392 (0.72) | 0.865 | <.001 |
|
Drug addiction | 143 (1.09) | 8997 (0.87) | 0.865 | <.001 |
|
Gambling disorder | 10 (0.08) | 306 (0.03) | 0.933 | <.001 |
Anorexia and bulimia | 274 (2.09) | 11,792 (1.14) | 0.852 | <.001 | |
ADHDc | 208 (1.59) | 12,103 (1.17) | 0.853 | <.001 | |
Schizophrenia | 174 (1.33) | 15,232 (1.48) | 0.839 | <.001 | |
Insomnia | 128 (0.98) | 10,014 (0.97) | 0.825 | <.001 | |
Bipolar disorder | 82 (0.63) | 6946 (0.67) | 0.867 | <.001 | |
OCDd | 81 (0.62) | 3564 (0.35) | 0.907 | <.001 | |
Personality disorder | 31 (0.24) | 962 (0.09) | 0.038 | .684 | |
Dysthymia | 0 (0) | 0 (0) | N/Ae | N/A | |
Total for mental health disorders | 13,119 (100) | 1,030,974 (100) | 0.915 | <.001 |
aPTSD: posttraumatic stress disorder.
bGAD: generalized anxiety disorder.
cADHD: attention deficit hyperactivity disorder.
dOCD: obsessive-compulsive disorder.
eN/A: not applicable.
In the parallel control study, we measured the tweets distributed by American media on the diseases that are considered to be the main causes of death in the USA and paradigmatic examples of diseases with a demonstrated level of social interest (Table 2). In total, only 5998 tweets were generated by social media on this group of prevalent and severe diseases. The number of tweets focused on each individual disease analyzed also followed a heterogeneous pattern of distribution. A predominance of tweets was observed for a select number of conditions. In total, 31.06% (1863/5998) of the tweets referred to the four most lethal forms of cancer, although they mainly focused on breast cancer (1321/5998, 22.02%). HIV infection and Alzheimer disease received 22.79% (1367/5998) and 17.56% (1053/5998) of the tweets about organic disease generated by social media, respectively. Additionally, 28.59% (1715/5998) of the tweets were related to diabetes mellitus, stroke, Parkinson disease, and COPD. However, despite its prevalence, COPD only accounted for 0.08% (5/5998) of the tweets.
Table 2.
Control disease | Tweet, n (%) | Retweet, n (%) | Spearman rho | P value | |
Total for cancers | 1863 (31.06) | 109,697 (25.82) | 0.715 | <.001 | |
|
Breast cancer | 1321 (22.02) | 79,152 (18.63) | 0.763 | <.001 |
|
Prostate cancer | 326 (5.44) | 13,675 (3.22) | 0.648 | <.001 |
|
Lung cancer | 196 (3.27) | 16,425 (3.87) | 0.733 | <.001 |
|
Colorectal cancer | 20 (0.33) | 445 (0.10) | 0.845 | <.001 |
HIV | 1367 (22.79) | 110,919 (26.11) | 0.812 | <.001 | |
Alzheimer disease | 1053 (17.56) | 82,334 (19.38) | 0.828 | <.001 | |
Diabetes | 760 (12.67) | 47,354 (11.15) | 0.734 | <.001 | |
Stroke | 701 (11.69) | 44,328 (10.43) | 0.796 | <.001 | |
Parkinson disease | 249 (4.15) | 30,160 (7.10) | 0.873 | <.001 | |
COPDa | 5 (0.08) | 21 (<0.01) | 0.624 | <.001 | |
Total for control diseases | 5998 (100) | 424,813 (100) | 0.869 | <.001 |
aCOPD: chronic obstructive pulmonary disease.
Next, we investigated the impact of tweets about mental health and disease control among social media followers by analyzing the responses based on the number of retweets. In total, 1,030,974 retweets were related to the studied mental health diseases and 424,813 were related to the control organic diseases (Tables 1 and 2). We observed a significant correlation between the number of tweets referring to each individual mental health disorder and the number of subsequent retweets generated. The statistical significance of the correlations was similar for the control organic diseases. The percentages of tweets and retweets generated for each of the control diseases, mental health conditions, and psychiatric diseases are shown in a figure in Multimedia Appendix 1. A scatterplot of the tweets about mental health conditions, psychiatric diseases and control diseases as well as the number of retweets that they subsequently generated is also shown in the Multimedia Appendix 2.
We also investigated the retweets of disease-related tweets by analyzing the retweet to tweet ratio and absolute numbers for the mental health disorders and control diseases. We found that the retweet to tweet ratio for the psychiatric diseases was significantly higher than that found for the control diseases (OR 1.11, CI 1.07-1.14, P<.001). The analysis of the probabilities of retweeting a tweet related to a specific disease showed a marked heterogeneity between mental health and organic disorders (Figure 1). Among the mental health conditions and diseases, the tweets about suicide, addictive disorders, anorexia and bulimia, and ADHD had a statistically significantly lower probability of being retweeted. In contrast, the probability of being retweeted was significantly higher for tweets related to gender dysphoria, anxiety, and autism spectrum disorders. For the control diseases, we also found a heterogeneous pattern of retweet responses, with the highest statistically significant probability of being retweeted found for Parkinson disease. In contrast, the tweets about cancer, diabetes, and stroke had significantly lower probabilities of being retweeted.
Number of Mass Media Tweets and Follower Retweets Is Continuously Increasing
We analyzed the evolution of the number of tweets about mental health conditions and control diseases that were distributed by the mainstream American media outlets along the analyzed decade. We also studied the kinetics of the retweets that these tweets generated (Figure 2); and observed a steady and progressive increase in the number of tweets generated for mental health conditions and diseases by communication media across the analyzed years. Furthermore, there was an associated increase in the number of retweets sent by followers. Interestingly, a large increase in retweet responses was observed beginning in 2014. For the control diseases, an increase in the number of communication media generated tweets was observed between 2007 and 2012, and a steady level was reached by 2016. However, the number of generated retweets among nonpsychiatric control diseases also showed a continuous increase. To determine the effects of the year and type of disease, we ran generalized linear models for both tweets and retweets. In both models, these variables were statistically significant (P<.001). The output of the negative binomial regression parameters is included in the Multimedia Appendix 3.
We also investigated the number of tweets generated over continuous months about the mental health and control diseases. Temporal variability was observed in the frequency of tweets about psychiatric disease, with a significant increase in April and August and a decrease in February (Figure 3). Monthly variability in the tweets generated about organic control diseases was also observed, with a statistically significant increase in months July and October and a decrease in January. This monthly variability was also observed in the analysis of individual mental health conditions and diseases. The results obtained for gender dysphoria, depression, breast cancer, and HIV are shown as representative cases for both the mental health conditions and control diseases.
Discussion
Principal Findings
In this paper, we showed that American outlets show preferential interest in psychiatric disorders compared with prevalent and severe organic diseases. The elevated number of tweets sent by the analyzed media outlets about mental health conditions and diseases was heterogeneously distributed between the different clinical entities studied. The relative attention of media outlets for the different mental health disorders conditioned the retweet response of followers.
The important role of communication media outlets in generating popular opinion and emotions via information distribution has been clearly established in our society [50]. In addition to traditional forms of communication media, both the internet and social media have become particularly pivotal instruments for sharing knowledge and news. Along with this change in the pattern of access to and sharing of information, communicative mass media includes the use of social media for connecting to the public. Currently, the use of social media websites, such as Facebook and Twitter, is commonplace, with approximately 65% of American adults and 66% of British adults reporting ownership of at least one active social media account [51]. Likewise, Twitter is currently considered an equally effective channel for communication [52].
Communication Media and Psychiatry
Our work demonstrates that American classic communication media outlets show a relevant interest in psychiatric diseases, as measured by the number of tweets about mental health conditions and disorders with respect to those about a group of severe and prevalent nonpsychiatric diseases, including the main causes of death in the USA. In recent decades, the stigma associated with mental health-related disorders has been widespread as evidenced by our social behaviors [53,54]. This social attitude has had major adverse effects on the lives of people with mental health problems, conditions, and diseases [55]. Therefore, the interest of traditional communication media outlets in psychiatric diseases should decrease over time. However, our findings contradict this hypothesis. The number of tweets sent about the analyzed mental conditions and diseases was higher than that of the control group throughout the decade examined, and a continuously increasing trend was observed in recent years. Interestingly, the control diseases included the main causes of mortality in the USA, such as the most predominant malignant tumor causes of death (cancer), stroke, diabetes mellitus, chronic degenerative neurological diseases, and COPD [47,48]. The control group of diseases also included HIV infection, a disease that has maintained a high level of general interest in our society in recent decades [56,57]. In addition to the demonstrated interest in mental health conditions and diseases by mass media, we found that this interest is more focused on certain clinical entities.
Interestingly, the relative weight given to each disease as defined by the percentage of tweets received was not related to the actual prevalence of the disease (the prevalence of mental health conditions, psychiatric diseases, and control diseases are included in the Multimedia Appendix 4). Despite the low incidence of suicide and gender dysphoria, these topics accounted for half of the tweets generated by communication media. In contrast, anxiety and depression are highly prevalent in society but only accounted for a quarter of the total number of tweets. Furthermore, psychiatric diseases with a marked prevalence and associated morbidity, such as schizophrenia and bipolar disorder, only accounted for a marginal percentage of the tweets. This lack of correlation between the prevalence and the morbidity or mortality (or both) of a disease and its relative presence in the number tweets generated by communication media outlets was also observed in the control group. These results are aligned with previous results demonstrating that certain chronic diseases, such as hypertension, are “undertweeted” relative to their prevalence, whereas other chronic diseases, such as diabetes and heart failure, are “over-tweeted” relative to their prevalence [58].
Interest in Psychiatry on Twitter
The interest provoked by mental health disease-associated tweets sent by mass media organizations to the general public, as measured by the number of retweets generated by followers, is clearly relevant. The retweet frequency is a parameter that indicates the user interest in the topic of each tweet [59,60]. Our data demonstrate that the retweet to tweet ratio generated by mental health disease-related tweets was significantly higher than that of the control diseases. Thus, in addition to a correlation between the number of tweets sent about a specific disease and the retweet response provoked, the characteristics of the health disorder also modulate the interest and quantitative retweet response of the followers. This finding is clearly supported by the significantly higher possibility of retweeting a tweet on gender dysphoria, anxiety, and autism spectrum disorders and the decreased possibility of retweeting a tweet related to suicide, addictive disorders, anorexia and bulimia, and ADHD. Several reasons that are not mutually exclusive may explain this public behavior. First, the potential anonymity of Twitter might favor its use by people who present feelings of potential self-stigma. For example, tweeting about mental health conveys the notion of a “Twitter community” that allows communication to flourish, awareness to be raised, stigmas to be fought, and support to be both offered and received [51]. Twitter use allows for anonymity; thus, it is preferred by people with real or perceived personal and/or or social restrictions [61]. The reported use of Twitter by transgender individuals and allies to discuss health and social needs supports this statement [62]. Second, Twitter is becoming more popular in our society, and the average user profile is distributed across different age groups. However, Twitter is predominantly used by younger and middle-aged demographics [63,64]. Thus, the social media pattern of Twitter might indicate a modification in attitudes toward mental health diseases among these two generations. Furthermore, the age of the person affects their general interest in health-related matters [65]. Third, high rates of social media use are observed among individuals who experience mental health problems [66,67]. Fourth, health care professionals and provider communities may also show a greater interest in mental diseases and contribute to the dissemination of this information. However, the attitudes of professionals, such as general practitioners, towards these diseases cannot be considered optimal at the present time [68]. Additionally, certain mental health conditions, such as gender dysphoria and suicide, are topics that often appear in breaking social news and may easily go viral on Twitter. The information transmitted by mass media may be selected using different criteria, including content generally considered to be of public interest [69]. According to cultural selection theory, any selection of messages from communication media outlets will have a profound effect on society at large and can contribute to the modulation of individual and societal attitudes and knowledge [70]. Based on the frequency of tweets generated about mental health disorders found in this work, we conclude that mass media outlets do not support a quantitative stigmatic exclusion of psychiatric patients. However, the results observed for suicide should be further discussed. Suicide was one of the most frequently mentioned topics on Twitter by communication media outlets. Interestingly, the Werther effect of suicide reports in social media networks, such as Twitter, has been established [71]. Thus, the criteria applied for generating this increased frequency of suicide-related tweets by communication media outlets may require revision. Fortunately, a suicide-related tweet has a significantly reduced possibility of being retweeted by followers.
Limitations
This study has some limitations. The relevance of Twitter as a marker of social interest is a matter of controversy [24-26,28-32]. Furthermore, news media outlets do not necessarily reflect the interests of society [72]. Large media outlets can also have a different set of priorities than news media in general. The newsworthiness of health science articles has previously been reported [73-75].
Conclusions
In conclusion, our findings show a marked correlation between the number of tweets generated about a psychiatric or control disease and the number of retweets that are subsequently generated. These results could represent a coincidence between the interest of communication media outlets and the general population and/or merely the quantitative reactive response of followers to the tweets they receive. Interestingly, the frequency of retweeting a tweet related to suicide was less than expected, whereas that of gender dysphoria was greater. Moreover, there are contradictory results with respect to the association between mental health problems and social media, which indicates either the potential for harm or a significant improvement in social media engagement as previously described [71,76-78].
Acknowledgments
This work was partially supported by a grant from Comunidad de Madrid, Spain (B 2017/BMD-3804) and Instituto de Salud Carlos III (PI14/01935). We would like to thank Teresa Abrego for her analysis of Tweet Binder, SA (Pamplona, España).
Abbreviations
- ADHD
attention deficit hyperactivity disorder
- COPD
chronic obstructive pulmonary disease
- GAD
generalized anxiety disorder
- OCD
obsessive-compulsive disorder
- OR
odds ratio
- PTSD
posttraumatic stress disorder
- USA
United States of America
The percentages of tweets and retweets generated for each of the control diseases, mental health conditions, and psychiatric diseases.
A scatterplot of the tweets about mental health conditions, psychiatric diseases and control diseases as well as the number of retweets that they subsequently generated.
Output table for the negative binomial regression parameters.Estimated coefficients from IRR reports transformed into incidence-rate ratios.The standard errors (SEs) reported in the table were calculated using the robust or sandwich estimator of variance.
Prevalence of mental health conditions, psychiatric diseases, and control diseases.
Footnotes
Conflicts of Interest: None declared.
References
- 1.National Institute of Mental Health. Mental Illness http://www.nimh.nih.gov/health/statistics/prevalence/any-mental-illness-ami-among-adults.shtml .
- 2.Evans DL, Charney DS, Lewis L, Golden RN, Gorman JM, Krishnan KRR, Nemeroff CB, Bremner JD, Carney RM, Coyne JC, Delong MR, Frasure-Smith N, Glassman AH, Gold PW, Grant I, Gwyther L, Ironson G, Johnson RL, Kanner AM, Katon WJ, Kaufmann PG, Keefe FJ, Ketter T, Laughren TP, Leserman J, Lyketsos CG, McDonald WM, McEwen BS, Miller AH, Musselman D, O'Connor C, Petitto JM, Pollock BG, Robinson RG, Roose SP, Rowland J, Sheline Y, Sheps DS, Simon G, Spiegel D, Stunkard A, Sunderland T, Tibbits P, Valvo WJ. Mood disorders in the medically ill: scientific review and recommendations. Biol Psychiatry. 2005 Aug 01;58(3):175–89. doi: 10.1016/j.biopsych.2005.05.001.S0006-3223(05)00574-3 [DOI] [PubMed] [Google Scholar]
- 3.Murray CJL, Vos T, Lozano R, Naghavi M, Flaxman AD, Michaud C, Ezzati M, Shibuya K, Salomon JA, Abdalla S, Aboyans V, Abraham J, Ackerman I, Aggarwal R, Ahn SY, Ali MK, Alvarado M, Anderson HR, Anderson LM, Andrews KG, Atkinson C, Baddour LM, Bahalim AN, Barker-Collo S, Barrero LH, Bartels DH, Basáñez M, Baxter A, Bell ML, Benjamin EJ, Bennett D, Bernabé E, Bhalla K, Bhandari B, Bikbov B, Bin AA, Birbeck G, Black JA, Blencowe H, Blore JD, Blyth F, Bolliger I, Bonaventure A, Boufous S, Bourne R, Boussinesq M, Braithwaite T, Brayne C, Bridgett L, Brooker S, Brooks P, Brugha TS, Bryan-Hancock C, Bucello C, Buchbinder R, Buckle G, Budke CM, Burch M, Burney P, Burstein R, Calabria B, Campbell B, Canter CE, Carabin H, Carapetis J, Carmona L, Cella C, Charlson F, Chen H, Cheng AT, Chou D, Chugh SS, Coffeng LE, Colan SD, Colquhoun S, Colson KE, Condon J, Connor MD, Cooper LT, Corriere M, Cortinovis M, de VKC, Couser W, Cowie BC, Criqui MH, Cross M, Dabhadkar KC, Dahiya M, Dahodwala N, Damsere-Derry J, Danaei G, Davis A, De LD, Degenhardt L, Dellavalle R, Delossantos A, Denenberg J, Derrett S, Des JDC, Dharmaratne SD, Dherani M, Diaz-Torne C, Dolk H, Dorsey ER, Driscoll T, Duber H, Ebel B, Edmond K, Elbaz A, Ali SE, Erskine H, Erwin PJ, Espindola P, Ewoigbokhan SE, Farzadfar F, Feigin V, Felson DT, Ferrari A, Ferri CP, Fèvre EM, Finucane MM, Flaxman S, Flood L, Foreman K, Forouzanfar MH, Fowkes FGR, Fransen M, Freeman MK, Gabbe BJ, Gabriel SE, Gakidou E, Ganatra HA, Garcia B, Gaspari F, Gillum RF, Gmel G, Gonzalez-Medina D, Gosselin R, Grainger R, Grant B, Groeger J, Guillemin F, Gunnell D, Gupta R, Haagsma J, Hagan H, Halasa YA, Hall W, Haring D, Haro JM, Harrison JE, Havmoeller R, Hay RJ, Higashi H, Hill C, Hoen B, Hoffman H, Hotez PJ, Hoy D, Huang JJ, Ibeanusi SE, Jacobsen KH, James SL, Jarvis D, Jasrasaria R, Jayaraman S, Johns N, Jonas JB, Karthikeyan G, Kassebaum N, Kawakami N, Keren A, Khoo J, King CH, Knowlton LM, Kobusingye O, Koranteng A, Krishnamurthi R, Laden F, Lalloo R, Laslett LL, Lathlean T, Leasher JL, Lee YY, Leigh J, Levinson D, Lim SS, Limb E, Lin JK, Lipnick M, Lipshultz SE, Liu W, Loane M, Ohno SL, Lyons R, Mabweijano J, MacIntyre MF, Malekzadeh R, Mallinger L, Manivannan S, Marcenes W, March L, Margolis DJ, Marks GB, Marks R, Matsumori A, Matzopoulos R, Mayosi BM, McAnulty JH, McDermott MM, McGill N, McGrath J, Medina-Mora ME, Meltzer M, Mensah GA, Merriman TR, Meyer A, Miglioli V, Miller M, Miller TR, Mitchell PB, Mock C, Mocumbi AO, Moffitt TE, Mokdad AA, Monasta L, Montico M, Moradi-Lakeh M, Moran A, Morawska L, Mori R, Murdoch ME, Mwaniki MK, Naidoo K, Nair MN, Naldi L, Narayan KMV, Nelson PK, Nelson RG, Nevitt MC, Newton CR, Nolte S, Norman P, Norman R, O'Donnell M, O'Hanlon S, Olives C, Omer SB, Ortblad K, Osborne R, Ozgediz D, Page A, Pahari B, Pandian JD, Rivero AP, Patten SB, Pearce N, Padilla RP, Perez-Ruiz F, Perico N, Pesudovs K, Phillips D, Phillips MR, Pierce K, Pion S, Polanczyk GV, Polinder S, Pope CA, Popova S, Porrini E, Pourmalek F, Prince M, Pullan RL, Ramaiah KD, Ranganathan D, Razavi H, Regan M, Rehm JT, Rein DB, Remuzzi G, Richardson K, Rivara FP, Roberts T, Robinson C, De LFR, Ronfani L, Room R, Rosenfeld LC, Rushton L, Sacco RL, Saha S, Sampson U, Sanchez-Riera L, Sanman E, Schwebel DC, Scott JG, Segui-Gomez M, Shahraz S, Shepard DS, Shin H, Shivakoti R, Singh D, Singh GM, Singh JA, Singleton J, Sleet DA, Sliwa K, Smith E, Smith JL, Stapelberg NJC, Steer A, Steiner T, Stolk WA, Stovner LJ, Sudfeld C, Syed S, Tamburlini G, Tavakkoli M, Taylor HR, Taylor JA, Taylor WJ, Thomas B, Thomson WM, Thurston GD, Tleyjeh IM, Tonelli M, Towbin JA, Truelsen T, Tsilimbaris MK, Ubeda C, Undurraga EA, van DWMJ, van OJ, Vavilala MS, Venketasubramanian N, Wang M, Wang W, Watt K, Weatherall DJ, Weinstock MA, Weintraub R, Weisskopf MG, Weissman MM, White RA, Whiteford H, Wiebe N, Wiersma ST, Wilkinson JD, Williams HC, Williams SRM, Witt E, Wolfe F, Woolf AD, Wulf S, Yeh P, Zaidi AKM, Zheng Z, Zonies D, Lopez AD, AlMazroa MA, Memish ZA. Disability-adjusted life years (DALYs) for 291 diseases and injuries in 21 regions, 1990-2010: a systematic analysis for the Global Burden of Disease Study 2010. Lancet. 2012 Dec 15;380(9859):2197–223. doi: 10.1016/S0140-6736(12)61689-4.S0140-6736(12)61689-4 [DOI] [PubMed] [Google Scholar]
- 4.Chang C, Hayes RD, Perera G, Broadbent MTM, Fernandes AC, Lee WE, Hotopf M, Stewart R. Life expectancy at birth for people with serious mental illness and other major disorders from a secondary mental health care case register in London. PLoS One. 2011;6(5):e19590. doi: 10.1371/journal.pone.0019590. http://dx.plos.org/10.1371/journal.pone.0019590 .PONE-D-11-01943 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 5.Walker ER, McGee RE, Druss BG. Mortality in mental disorders and global disease burden implications: a systematic review and meta-analysis. JAMA Psychiatry. 2015 Apr;72(4):334–41. doi: 10.1001/jamapsychiatry.2014.2502. http://europepmc.org/abstract/MED/25671328 .2110027 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 6.Dickerson FB, Sommerville J, Origoni AE, Ringel NB, Parente F. Experiences of stigma among outpatients with schizophrenia. Schizophr Bull. 2002;28(1):143–55. doi: 10.1093/oxfordjournals.schbul.a006917. [DOI] [PubMed] [Google Scholar]
- 7.Drapalski AL, Lucksted A, Perrin PB, Aakre JM, Brown CH, DeForge BR, Boyd JE. A model of internalized stigma and its effects on people with mental illness. Psychiatr Serv. 2013 Mar 01;64(3):264–9. doi: 10.1176/appi.ps.001322012. [DOI] [PubMed] [Google Scholar]
- 8.Thornicroft G, Mehta N, Clement S, Evans-Lacko S, Doherty M, Rose D, Koschorke M, Shidhaye R, O'Reilly C, Henderson C. Evidence for effective interventions to reduce mental-health-related stigma and discrimination. Lancet. 2016 Mar 12;387(10023):1123–32. doi: 10.1016/S0140-6736(15)00298-6.S0140-6736(15)00298-6 [DOI] [PubMed] [Google Scholar]
- 9.Prince M, Patel V, Saxena S, Maj M, Maselko J, Phillips MR, Rahman A. No health without mental health. Lancet. 2007 Sep 08;370(9590):859–77. doi: 10.1016/S0140-6736(07)61238-0.S0140-6736(07)61238-0 [DOI] [PubMed] [Google Scholar]
- 10.McGowan BS, Wasko M, Vartabedian BS, Miller RS, Freiherr DD, Abdolrasulnia M. Understanding the factors that influence the adoption and meaningful use of social media by physicians to share medical information. J Med Internet Res. 2012;14(5):e117. doi: 10.2196/jmir.2138. http://www.jmir.org/2012/5/e117/ v14i5e117 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 11.Antheunis ML, Tates K, Nieboer TE. Patients' and health professionals' use of social media in health care: motives, barriers and expectations. Patient Educ Couns. 2013 Sep;92(3):426–31. doi: 10.1016/j.pec.2013.06.020.S0738-3991(13)00265-6 [DOI] [PubMed] [Google Scholar]
- 12.Melvin L, Chan T. Using Twitter in Clinical Education and Practice. J Grad Med Educ. 2014 Sep;6(3):581–2. doi: 10.4300/JGME-D-14-00342.1. http://europepmc.org/abstract/MED/26279790 .JGME-D-14-00342 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 13.Fox S, Duggan M. Pew Research Center. Washington, DC: Pew Internet and American Life Project; 2013. Health Online 2013 http://www.pewinternet.org/2013/01/15/health-online-2013/ [Google Scholar]
- 14.Hesse BW, Moser RP, Rutten LJ. Surveys of physicians and electronic health information. N Engl J Med. 2010 Mar 4;362(9):859–60. doi: 10.1056/NEJMc0909595.362/9/859 [DOI] [PubMed] [Google Scholar]
- 15.Moorhead SA, Hazlett DE, Harrison L, Carroll JK, Irwin A, Hoving C. A new dimension of health care: systematic review of the uses, benefits, and limitations of social media for health communication. J Med Internet Res. 2013;15(4):e85. doi: 10.2196/jmir.1933. http://www.jmir.org/2013/4/e85/ v15i4e85 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 16.Topf JM, Hiremath S. Social media, medicine and the modern journal club. Int Rev Psychiatry. 2015 Apr;27(2):147–54. doi: 10.3109/09540261.2014.998991. [DOI] [PubMed] [Google Scholar]
- 17.Twitter, Inc. 2015. [2017-12-04]. About Twitter https://about.twitter.com/en_us/company.html .
- 18.Peters ME, Uible E, Chisolm MS. A Twitter Education: Why Psychiatrists Should Tweet. Curr Psychiatry Rep. 2015 Dec;17(12):94. doi: 10.1007/s11920-015-0635-4.10.1007/s11920-015-0635-4 [DOI] [PubMed] [Google Scholar]
- 19.Sano D. Twitter creator Jack Dorsey illuminates the site's founding document. 2009 http://latimesblogs.latimes.com/technology/2009/02/twitter-
- 20.Lauridsen M, Sporrong S. How does media coverage effect the consumption of antidepressants? A study of the media coverage of antidepressants in Danish online newspapers 2010?2011. Res Soc Adm Pharm Internet. 2017:30130–30134. doi: 10.1016/j.sapharm.2017.07.011. http://www.rsap.org/article/S1551-7411(17)30130-4/fulltext . [DOI] [PubMed] [Google Scholar]
- 21.Hernandez JF, Mantel-Teeuwisse AK, van Thiel GJ, Belitser SV, Warmerdam J, de Valk V, Raaijmakers JAM, Pieters T. A 10-year analysis of the effects of media coverage of regulatory warnings on antidepressant use in The Netherlands and UK. PLoS One. 2012;7(9):e45515. doi: 10.1371/journal.pone.0045515. http://dx.plos.org/10.1371/journal.pone.0045515 .PONE-D-12-08496 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 22.Slothuus R, de Vreese CH. Political Parties, Motivated Reasoning, and Issue Framing Effects. The Journal of Politics. 2010 Jul;72(3):630–645. doi: 10.1017/S002238161000006X. [DOI] [Google Scholar]
- 23.Jansen BJ, Zhang M, Sobel K, Chowdury A. Twitter power: Tweets as electronic word of mouth. J. Am. Soc. Inf. Sci. 2009 Nov;60(11):2169–2188. doi: 10.1002/asi.21149. [DOI] [Google Scholar]
- 24.Asur S, Huberman B, editors Predicting the future with social media. IEEE/WIC/ACM International Conference on Web IntelligenceIntelligent Agent Technology (WI-IAT); IEEE/WIC/ACM International Conference on Web IntelligenceIntelligent Agent Technology (WI-IAT); 31 Aug.-3 Sept. 2010; Toronto, ON, Canada. IEEE; 2010. p. 2010. [DOI] [Google Scholar]
- 25.Bollen J, Mao H, Zeng X. Twitter mood predicts the stock market. Journal of Computational Science. 2011 Mar;2(1):1–8. doi: 10.1016/j.jocs.2010.12.007. [DOI] [Google Scholar]
- 26.Carr A. Fast Company. [2018-03-27]. Facebook, Twitter Election Results Prove Remarkably Accurate Internet https://www.fastcompany.com/1699853/facebook-twitter-election-results-prove-remarkably-accurate .
- 27.Kamel Boulos MN, Anderson PF. Preliminary survey of leading general medicine journals’ use of Facebook and Twitter. JCHLA. 2012 Aug;33(02):38–47. doi: 10.5596/c2012-010. [DOI] [Google Scholar]
- 28.Mitchell A, Hitlin P. Pew Research Center. [2018-05-15]. Twitter Reaction to Events Often at Odds with Overall Public Opinion Internet http://www.pewresearch.org/2013/03/04/twitter-reaction-to-events-often-at-odds-with-overall-public-opinion/
- 29.Tufekci Z. Big Questions for social media big data: Representativeness, validity and other methodological pitfalls. Big Questions for social media big data: Representativeness, validity and other methodological pitfalls; 8th International Conference on Weblogs and Social Media, ICWSM 2014; Jun 1-4 2014; Ann Arbor, United States. In: Proceedings of the 8th International Conference on Weblogs and Social Media, ICWSM 2014. The AAAI Press; 2014. p. 505. [Google Scholar]
- 30.Gayo-Avello D, Metaxas P, Mustafaraj E. Limits of Electoral Predictions using Twitter. Fifth International AAAI Conference on Weblogs and Social Media; July 17–21, 2011; Barcelona, Spain. 2011. Jan 17, http://digibuo.uniovi.es/dspace/handle/10651/11899 . [Google Scholar]
- 31.Cohen R, Ruths D. Classifying Political Orientation on Twitter: It’s Not Easy!. Seventh International AAAI Conference on Weblogs and Social Media; July 8–11, 2013; Cambridge, Massachusetts. Classifying political orientation on Twitter: It?s not easy! In: Proceedings of the 7th International Conference on Weblogs and Social Media, ICWSM 2013. AAAI press; 2013. Jul 8, p. 91. [Google Scholar]
- 32.Daniel Gayo-Avello I wanted to predict elections with twitter and all I got was this Lousy paper. Computers and Society. 2012:6441. [Google Scholar]
- 33.Robillard JM, Johnson TW, Hennessey C, Beattie BL, Illes J. Aging 2.0: health information about dementia on Twitter. PLoS One. 2013;8(7):e69861. doi: 10.1371/journal.pone.0069861. http://dx.plos.org/10.1371/journal.pone.0069861 .PONE-D-13-05677 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 34.Mowery J. Twitter Influenza Surveillance: Quantifying Seasonal Misdiagnosis Patterns and their Impact on Surveillance Estimates. Online J Public Health Inform. 2016;8(3):e198. doi: 10.5210/ojphi.v8i3.7011. http://europepmc.org/abstract/MED/28210419 .ojphi-08-e198 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 35.Quintana DS, Doan NT. Twitter Article Mentions and Citations: An Exploratory Analysis of Publications in the American Journal of Psychiatry. Am J Psychiatry. 2016 Feb 01;173(2):194. doi: 10.1176/appi.ajp.2015.15101341. [DOI] [PubMed] [Google Scholar]
- 36.Meng Y, Elkaim L, Wang J, Liu J, Alotaibi NM, Ibrahim GM, Fallah A, Weil AG, Valiante TA, Lozano AM, Rutka JT. Social media in epilepsy: A quantitative and qualitative analysis. Epilepsy Behav. 2017 Jun;71(Pt A):79–84. doi: 10.1016/j.yebeh.2017.04.033.S1525-5050(17)30233-0 [DOI] [PubMed] [Google Scholar]
- 37.Joseph AJ, Tandon N, Yang LH, Duckworth K, Torous J, Seidman LJ, Keshavan MS. #Schizophrenia: Use and misuse on Twitter. Schizophr Res. 2015 Jul;165(2-3):111–5. doi: 10.1016/j.schres.2015.04.009.S0920-9964(15)00182-6 [DOI] [PubMed] [Google Scholar]
- 38.Diug B, Kendal E, Ilic D. Evaluating the use of twitter as a tool to increase engagement in medical education. Educ Health (Abingdon) 2016;29(3):223–230. doi: 10.4103/1357-6283.204216. http://www.educationforhealth.net/article.asp?issn=1357-6283;year=2016;volume=29;issue=3;spage=223;epage=230;aulast=Diug .EducHealth_2016_29_3_223_204216 [DOI] [PubMed] [Google Scholar]
- 39.Sedrak MS, Cohen RB, Merchant RM, Schapira MM. Cancer Communication in the Social Media Age. JAMA Oncol. 2016 Jun 01;2(6):822–3. doi: 10.1001/jamaoncol.2015.5475.2497877 [DOI] [PubMed] [Google Scholar]
- 40.Nastasi A, Bryant T, Canner JK, Dredze M, Camp MS, Nagarajan N. Breast Cancer Screening and Social Media: a Content Analysis of Evidence Use and Guideline Opinions on Twitter. J Cancer Educ. 2018 Jun;33(3):695–702. doi: 10.1007/s13187-017-1168-9.10.1007/s13187-017-1168-9 [DOI] [PubMed] [Google Scholar]
- 41.Fox CS, Bonaca MA, Ryan JJ, Massaro JM, Barry K, Loscalzo J. A randomized trial of social media from Circulation. Circulation. 2015 Jan 06;131(1):28–33. doi: 10.1161/CIRCULATIONAHA.114.013509. http://circ.ahajournals.org/cgi/pmidlookup?view=long&pmid=25406308 .CIRCULATIONAHA.114.013509 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 42.The Statistics Portal | Statistic Internet. [2018-05-15]. Number of organizational Twitter feeds belonging to major news outlets in the United States in 2011 https://www.statista.com/statistics/207367/twitter-feeds-of-major-american-news-outlets/
- 43.Nur Bremmen memeburn. 2010. Sep 03, The 100 most influential news media Twitter accounts https://memeburn.com/2010/09/the-100-most-influential-news-media-twitter-accounts/
- 44.Mitchell A, Matsa K, Kiley J, Gottfried J. Pew Research Center. Pew Research Center; 2014. Oct 21, [2018-05-15]. Political Polarization & Media Habits http://www.journalism.org/2014/10/21/political-polarization-media-habits/ [Google Scholar]
- 45.Mitchell A, Page D. Pew Research Center. Pew Research Center; 2015. Apr 29, [2018-05-15]. State of the News Media 2015 http://www.journalism.org/files/2015/04/FINAL-STATE-OF-THE-NEWS-MEDIA.pdf . [Google Scholar]
- 46.Holcomb J, Gross K, Mitchell A. Pew Research Center. Pew Research Center; 2011. Nov 14, [2018-05-15]. How Mainstream Media Outlets Use Twitter http://www.journalism.org/2011/11/14/how-mainstream-media-outlets-use-twitter/ [Google Scholar]
- 47.Heron M. Deaths: Leading Causes for 2014. Natl Vital Stat Rep. 2016 Jun;65(5):1–96. https://www.cdc.gov/nchs/data/nvsr/nvsr65/nvsr65_5.pdf . [PubMed] [Google Scholar]
- 48.Kowal SL, Dall TM, Chakrabarti R, Storm MV, Jain A. The current and projected economic burden of Parkinson's disease in the United States. Mov Disord. 2013 Mar;28(3):311–8. doi: 10.1002/mds.25292. [DOI] [PubMed] [Google Scholar]
- 49.Morstatter F, Pfeffer J, Liu H, Carley K. Is the sample good enough? Comparing data from Twitter's streaming API with Twitter?s firehose. 7th International AAAI Conference on Weblogs and Social Media, ICWSM 2013; 2013/08/07; Cambridge, MA, United States. 2013. Aug 07, p. 2013. [Google Scholar]
- 50.Wakefield MA, Loken B, Hornik RC. Use of mass media campaigns to change health behaviour. Lancet. 2010 Oct 9;376(9748):1261–71. doi: 10.1016/S0140-6736(10)60809-4. http://europepmc.org/abstract/MED/20933263 .S0140-6736(10)60809-4 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 51.Berry N, Lobban F, Belousov M, Emsley R, Nenadic G, Bucci S. #WhyWeTweetMH: Understanding Why People Use Twitter to Discuss Mental Health Problems. J Med Internet Res. 2017 Apr 05;19(4):e107. doi: 10.2196/jmir.6173. http://www.jmir.org/2017/4/e107/ v19i4e107 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 52.Ferguson C, Inglis SC, Newton PJ, Cripps PJS, MacDonald PS, Davidson PM. Social media: a tool to spread information: a case study analysis of twitter conversation at the Cardiac Society of Australia & New Zealand 61st annual scientific meeting 2013. Collegian. 2014;21(2):89–93. doi: 10.1016/j.colegn.2014.03.002. [DOI] [PubMed] [Google Scholar]
- 53.Thornicroft G. Shunned: Discrimination Against People with Mental Illness. Oxford: Oxford University Press; 2006. [Google Scholar]
- 54.Evans-Lacko S, Courtin E, Fiorillo A, Knapp M, Luciano M, Park A, Brunn M, Byford S, Chevreul K, Forsman AK, Gulacsi L, Haro JM, Kennelly B, Knappe S, Lai T, Lasalvia A, Miret M, O'Sullivan C, Obradors-Tarragó C, Rüsch N, Sartorius N, Svab V, van WJ, Van AC, Wahlbeck K, Zlati A, ROAMER Consortium. McDaid D, Thornicroft G. The state of the art in European research on reducing social exclusion and stigma related to mental health: a systematic mapping of the literature. Eur Psychiatry. 2014 Aug;29(6):381–9. doi: 10.1016/j.eurpsy.2014.02.007.S0924-9338(14)00040-6 [DOI] [PubMed] [Google Scholar]
- 55.Corrigan PW, Larson JE, Rüsch N. Self-stigma and the “why try” effect: impact on life goals and evidence-based practices. World Psychiatry. 2009 Jun;8(2):75–81. doi: 10.1002/j.2051-5545.2009.tb00218.x. http://onlinelibrary.wiley.com/resolve/openurl?genre=article&sid=nlm:pubmed&issn=1723-8617&date=2009&volume=8&issue=2&spage=75 . [DOI] [PMC free article] [PubMed] [Google Scholar]
- 56.Acheson E. AIDS: A challenge for the public health. Lancet. 1986;327(8482):A. doi: 10.1016/S0140-6736(86)91736-8. [DOI] [PubMed] [Google Scholar]
- 57.Ayers JW, Althouse BM, Dredze M, Leas EC, Noar SM. News and Internet Searches About Human Immunodeficiency Virus After Charlie Sheen's Disclosure. JAMA Intern Med. 2016 Apr;176(4):552–4. doi: 10.1001/jamainternmed.2016.0003.2495274 [DOI] [PubMed] [Google Scholar]
- 58.Sinnenberg L, DiSilvestro CL, Mancheno C, Dailey K, Tufts C, Buttenheim AM, Barg F, Ungar L, Schwartz H, Brown D, Asch DA, Merchant RM. Twitter as a Potential Data Source for Cardiovascular Disease Research. JAMA Cardiol. 2016 Dec 01;1(9):1032–1036. doi: 10.1001/jamacardio.2016.3029. http://europepmc.org/abstract/MED/27680322 .2556216 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 59.Suh B, Hong L, Pirolli P, Chi E, editors Want to be retweeted? Large scale analytics on factors impacting retweet in twitter network. IEEE Second International Conference on Social Computing; 2010/10/10; Minneapolis, MN, USA. USA: IEEE; 2010. [Google Scholar]
- 60.Kwak H, Lee C, Park H, Moon S. What is twitter, a social network or a news media? In: Proceedings of the 19th International Conference on World Wide Web Internet. 19th International Conference on World Wide Web; 2010/04/26; Raleigh, NC, USA. 2010. Apr 26, p. 2010. http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.212.1490 . [Google Scholar]
- 61.Gillespie-Lynch K, Kapp SK, Shane-Simpson C, Smith DS, Hutman T. Intersections between the autism spectrum and the internet: perceived benefits and preferred functions of computer-mediated communication. Intellect Dev Disabil. 2014 Dec;52(6):456–69. doi: 10.1352/1934-9556-52.6.456. [DOI] [PubMed] [Google Scholar]
- 62.Simoncic TE, Kuhlman KR, Vargas I, Houchins S, Lopez-Duran NL. Facebook use and depressive symptomatology: Investigating the role of neuroticism and extraversion in youth. Computers in Human Behavior. 2014 Nov;40:1–5. doi: 10.1016/j.chb.2014.07.039. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 63.Sloan L, Morgan J, Burnap P, Williams M. Who tweets? Deriving the demographic characteristics of age, occupation and social class from twitter user meta-data. PLoS One. 2015;10(3):e0115545. doi: 10.1371/journal.pone.0115545. http://dx.plos.org/10.1371/journal.pone.0115545 .PONE-D-14-36461 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 64.Pew Research Center. 2015. Social Media Usage: 2005-2015 http://www.pewinternet.org/2015/10/08/social-networking-usage-2005-2015/
- 65.Deeks A, Lombard C, Michelmore J, Teede H. The effects of gender and age on health related behaviors. BMC Public Health. 2009;9:213. doi: 10.1186/1471-2458-9-213. http://www.biomedcentral.com/1471-2458/9/213 .1471-2458-9-213 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 66.Gowen K, Deschaine M, Gruttadara D, Markey D. Young adults with mental health conditions and social networking websites: seeking tools to build community. Psychiatr Rehabil J. 2012;35(3):245–50. doi: 10.2975/35.3.2012.245.250.U3J88872H807W474 [DOI] [PubMed] [Google Scholar]
- 67.Birnbaum ML, Rizvi AF, Confino J, Correll CU, Kane JM. Role of social media and the Internet in pathways to care for adolescents and young adults with psychotic disorders and non-psychotic mood disorders. Early Interv Psychiatry. 2017 Dec;11(4):290–295. doi: 10.1111/eip.12237. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 68.Manzanera R, Lahera G, Álvarez-Mon MA, Alvarez-Mon M. Maintained effect of a training program on attitudes towards depression in family physicians. Fam Pract. 2017 Jul 23;:61–66. doi: 10.1093/fampra/cmx071.4004812 [DOI] [PubMed] [Google Scholar]
- 69.Fog A. Mass Media. Cultural Selection. Dordrecht: Springer; 1999. [Google Scholar]
- 70.Pew Research Center: Journalism and Media Staff. Washington, DC: Pew Internet & American Life Project; 2008. Health news coverage in the US media http://www.journalism.org/2008/11/24/health-news-coverage-in-the-u-s-media/ [Google Scholar]
- 71.Niederkrotenthaler T, Fu KW, Yip PSF, Fong DYT, Stack S, Cheng Q, Pirkis J. Changes in suicide rates following media reports on celebrity suicide: a meta-analysis. J Epidemiol Community Health. 2012 Nov;66(11):1037–42. doi: 10.1136/jech-2011-200707.jech-2011-200707 [DOI] [PubMed] [Google Scholar]
- 72.Mitchell A, Simmons K, Matsa K, Silver L. Pew Research Center. Pew Research Center; 2018. Jan 11, [2018-05-15]. Publics Globally Want Unbiased News Coverage, but Are Divided on Whether Their News Media Deliver http://www.pewglobal.org/2018/01/11/publics-globally-want-unbiased-news-coverage-but-are-divided-on-whether-their-news-media-deliver/ [Google Scholar]
- 73.Zhang Y, Willis E, Paul MJ, Elhadad N, Wallace BC. Characterizing the (Perceived) Newsworthiness of Health Science Articles: A Data-Driven Approach. JMIR Med Inform. 2016 Sep 22;4(3):e27. doi: 10.2196/medinform.5353. http://medinform.jmir.org/2016/3/e27/ v4i3e27 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 74.O'Connor EM, Nason GJ, O'Kelly F, Manecksha RP, Loeb S. Newsworthiness vs scientific impact: are the most highly cited urology papers the most widely disseminated in the media? BJU Int. 2017 Dec;120(3):441–454. doi: 10.1111/bju.13881. [DOI] [PubMed] [Google Scholar]
- 75.Wright D, Young A, Iserman E, Maeso R, Turner S, Haynes RB, Milne R. The clinical relevance and newsworthiness of NIHR HTA-funded research: a cohort study. BMJ Open. 2014 May 07;4(5):e004556. doi: 10.1136/bmjopen-2013-004556. http://bmjopen.bmj.com/cgi/pmidlookup?view=long&pmid=24812191 .bmjopen-2013-004556 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 76.Lin LY, Sidani JE, Shensa A, Radovic A, Miller E, Colditz JB, Hoffman BL, Giles LM, Primack BA. Association Between Social Media Use and Depression Among U.S. Young Adults. Depress Anxiety. 2016 Apr;33(4):323–31. doi: 10.1002/da.22466. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 77.Rosen L, Whaling K, Rab S, Carrier L, Cheever N. Is Facebook creating ?iDisorders?? The link between clinical symptoms of psychiatric disorders and technology use, attitudes and anxiety. Comput Human Behav. 2013 May 05;29(3):1243–1254. [Google Scholar]
- 78.Mabe AG, Forney KJ, Keel PK. Do you “like” my photo? Facebook use maintains eating disorder risk. Int J Eat Disord. 2014 Jul;47(5):516–23. doi: 10.1002/eat.22254. [DOI] [PubMed] [Google Scholar]
Associated Data
This section collects any data citations, data availability statements, or supplementary materials included in this article.
Supplementary Materials
The percentages of tweets and retweets generated for each of the control diseases, mental health conditions, and psychiatric diseases.
A scatterplot of the tweets about mental health conditions, psychiatric diseases and control diseases as well as the number of retweets that they subsequently generated.
Output table for the negative binomial regression parameters.Estimated coefficients from IRR reports transformed into incidence-rate ratios.The standard errors (SEs) reported in the table were calculated using the robust or sandwich estimator of variance.
Prevalence of mental health conditions, psychiatric diseases, and control diseases.