Introduction

There has been an increasing push for broader communication of scientific work over the last few decades. Moving beyond poster sessions and conferences, many researchers understand that their findings are of interests to the communities involved in or affected by their work. Evidence shows that one of these highly active and interested groups is the autism community. Autism researchers may capitalize on the popularity of social media by sharing their work to generate discussion and obtain feedback from fellow researchers and autism community members. Posts on social media sites can also lead to increased news media coverage, which can allow research findings to be spread more widely (Jang et al., 2019). This dissemination can also be important because sharing research findings with the autism community increases the translation of findings into real world practice and knowledge, which makes the gap between research and implementation smaller (Clark & Adams, 2020). However, the extent to which these efforts to communicate research more broadly have led to measurable gains in historically prioritized metrics such as article downloads and citations remains unclear.

Among articles in other content areas such as plastic surgery and substance abuse, the association between social media shares and article downloads and citations has been shown to be modest (Asaad et al., 2020; Palamar & Strain, 2021). In comparison, news media coverage has been shown to be more highly associated with the number of citations (Anderson et al., 2020). To date, however, no studies have examined the effects of social media shares and news coverage on autism research article downloads and citations.

Thus, our objective was to determine how social media shares and news coverage are associated with research article downloads and citations among manuscripts published in three autism-focused journals: Autism, Journal of Autism and Developmental Disorders (JADD), and Autism Research. We hypothesized that the number of social media shares and news stories would be significantly associated with the number of article downloads and citations. Ultimately, this may advocate for the inclusion of a broader range of metrics for autism researchers to demonstrate the reach of their work. We also sought to describe characteristics of articles that were the most downloaded, cited, shared on social media, or covered in the media.

Methods

Article Sources

We included manuscripts published in Autism, the Journal of Autism and Developmental Disorders (JADD), and Autism Research. We chose these three journals because they have higher impact factors and more autism-specific published papers than other journals. We also chose to include three journals instead of one so that we could have more complete data surrounding downloads and citations for autism-specific papers.

Article Selection

We included articles published in 2019 to ensure that there was adequate time for work from each month throughout the year to be cited and downloaded. We did not include articles published in 2020, as our findings may have been confounded by the effects of the Covid-19 pandemic on the research publishing process (Harrop et al., 2021). We limited the manuscripts analyzed to original articles, review articles, and short reports. Articles that were excluded from analyses included letters to the editor, commentary, and corrections. In total, there were 729 articles included, with 182 articles from Autism, 401 from JADD, and 146 from Autism Research.

Data Extraction

The first author extracted data in June 2021 and entered it into a REDCap database. We obtained the following information from each journal’s website: (1) authorship; (2) initial online publication date; (3) official publication date; (4) open access status; and (5) article type (i.e., short report, original article, review article). The first author also noted each article’s primary methodology based on the abstract (i.e., quantitative, qualitative, mixed method, review paper). We extracted information on the number of public tweets on Twitter, public posts on Facebook, as well as the number of stories from news sources from Altmetric.com. News stories are detected by Altmetric.com if they are posted online and contain a direct link to the article or necessary information for text mining. Autism and JADD websites report the number of downloads per article. As this information is not provided on the Autism Research website, download information was provided by the journal’s editorial team. Citation information for each article was obtained from Google Scholar.

To describe the articles that were most downloaded, cited, and shared on social media, we classified articles into the Interagency Autism Coordinating Committee (IACC)’s Strategic Plan categories of: (1) Diagnosis/Screening, (2) Biology, (3) Risk Factors, (4) Treatments/Interventions, (5) Services, (6) Lifespan Issues, and (7) Surveillance/Infrastructure (IACC, 2018). We also recorded the populations that these articles studied.

Analyses

We calculated descriptive statistics, including frequencies and percentages, medians, and interquartile ranges. Our dependent variables were: (1) number of downloads; and (2) number of citations. Our primary independent variables were social media and news coverage, quantified by: (1) Twitter shares, (2) Facebook posts, and (3) news stories. We used a generalized linear model with a gamma distribution and log link to quantify the relationship between our dependent and independent variables, in accordance with standards for analyzing continuous, positively-skewed, non-negative data (Ng & Cribbie, 2017). We also classified articles in the 90th percentile for downloads as “highly downloaded” and articles in the 90th percentile for citations as “highly cited.” We used multivariable logistic regression to quantify the relative contributions of each independent variable to the odds being highly downloaded or highly cited. All multivariable analyses controlled for open access status, the number of months since initial online publication (i.e., e-publication ahead of print), and journal of origin. Relationships between the independent and dependent variables were considered statistically significant if the 95% confidence interval for the parameter estimate did not cross 1.0.

Institutional Review Board Approval

This analysis is not based on human subjects research so it was exempt from review from the authors’ institutional review boards.

Results

A description of included articles is shown in Table 1. Most articles used quantitative methods (82%) and were full-length (84%). Overall, 18% of the articles were open access. The three journals together had a median of 1110 downloads and 9 citations per article. 26% of the articles has been shared on a public wall on Facebook, and the median number of Tweets per article was 8.

Table 1 Description of included articles by journal

Our multivariable statistical models indicated every 10 Twitter shares yielded, on average, a 4.4% increase in the number of downloads and 5.2% increase in citations (Table 2). Articles with at least one Facebook post had 23.3% more downloads but did not significantly differ in the number of citations from those without. Articles with at least one news story had 56.9% more downloads and 39.3% more citations than those without.

Table 2 Association of social media shares and news media coverage with downloads or citations

Our multivariable logistic regression models indicated that for every 10 Twitter shares, there was 1.1 times greater odds of high downloads and 1.2 times greater odds of high citations (Table 2). Articles with at least one news story had 9.5 times greater odds of high downloads and 3.2 times greater odds of high citations. Having at least one Facebook post was not significantly associated with odds of high downloads or citations.

In describing the characteristics of the five most downloaded, cited, and shared articles (See Supplemental Table), the plurality were in the IACC categories of Diagnosis/Screening (symptomology) (28%) or Treatments/Interventions (28%), and most were focused on adults on the autism spectrum (60%). About 44% were quantitative and 32% were either qualitative or mixed methods. Eighty percent were open access. All of the top five downloaded articles were classified into the IACC categories of Diagnosis/Screening or Treatments/Interventions, but the five most cited articles represented a variety of IACC categories. Among the articles shared most in social and news media, most (73%) fit in the Services, Treatments/Interventions, or Infrastructure/Surveillance categories.

Discussion

In the past decade, there has been more research on social media use and its effects on article dissemination, including the effects on article downloads and citations (Palamar & Strain, 2021). Our paper provides the first analysis of the relationship between autism research dissemination on social and news media and downloads and citations. Even after controlling for open access, which is known to greatly increase the chance of article downloads and citations, we found that social media shares and news media coverage were significantly associated with more article downloads and citations. Specifically, our analyses showed that article downloads increased significantly with every 10 Twitter shares, at least one Facebook share, and any news media coverage (Table 2). Articles citations increased significantly with every 10 Twitter shares and any news media coverage.

Our findings also provide the first description, to our knowledge, of characteristics of autism research articles with most downloads, citations, social media shares, and news coverage. Interestingly, despite being the largest area of funding for autism research, studies on the biology of autism were not among the most downloaded, cited, or shared articles (Harris et al., 2021). In contrast, most of the highly downloaded, cited and shared articles focused on high-priority research areas identified by the IACC like treatments and interventions and services (IACC, 2018).

Autism is a popular topic of online discussion among researchers and the autism community. The autism community is incredibly active on social media, as autistic individuals spend more time using the internet and computer-mediated communication than non-autistic individuals (Kim, 2019; MacMullin et al., 2015). Widespread sharing of an article increases visibility among autism community members who, if interested, may download the article to learn more. Additionally, sharing an article via social media allows for engagement and opportunity for discussion with the autism community and researchers. Articles in this study tended to be shared most on Twitter, which is not surprising as it is the most used researcher posting cite (Dol et al., 2019) and is used by the autism community more than Facebook (van Schalkwyk et al., 2017).

Our results showed that having news media cover a research article had a large positive association with downloads and citations. However, relatively few articles in our study (< 10%) were covered in news media. The five articles that were most covered in news media (Supplemental Table) tended to be open access (80%), focus on autistic children and adolescents (100%), and cover topics like: (a) outcomes as a function of race or ethnicity (40%), or (b) novel treatments and interventions (40%). This result shows that despite increased focus on social media, news media still plays an important role in widespread reach of research findings and provides insights as to the types of articles most likely to receive media coverage.

Limitations

Given that data from the journal websites, Almetric.com, and Google Scholar, including information on downloads, citations, and social media shares, updates daily, double data entry was not possible. Almetric.com limits their information on social media shares to public posts; posts shared on private Twitter or Facebook pages would not be captured in our data. Almetric.com also does not include social media posts from other popular platforms, such as YouTube and Instagram, so our data may underestimate total social media shares. Our data are also limited to the three journals we studied. We chose to focus on three high-impact, credible journals that publish mostly or exclusively articles about autism. However, we recognize that there are other autism journals, with different focuses and audiences, so our results may not be generalizable in other journals. We also acknowledge there are other ways of sharing research, such as through oral and poster presentations at conferences, that were beyond the scope of this study but could be considered in future work.

Conclusion

The dissemination of autism research via social and news media is associated with more downloads and citations. Our results add to studies from other content areas, while providing the first examination of the relationship between media and article reach in autism research. Sharing information via media may be a way of quantifying the impact of an article more quickly, while traditional indicators, like citations, may take more time to accumulate due to lengthy peer-review and publication processes. Autism research articles should continue to be posted and shared online (i.e., Facebook, Twitter, and in news media) as it is linked with higher dissemination and allows for engagement and discussion with the autism community.