
About
Dhiraj Murthy is a Professor of Media Studies, Sociology, and Information at the University of Texas at Austin. His research explores the intersections of social media and artificial intelligence with issues of race and ethnicity, health, virtual organizations, organizational communication, and natural disasters. He employs a diverse range of methodologies including qualitative, mixed methods, and computational approaches such as machine learning. Dr. Murthy has made significant scholarly contributions, having edited three journal special issues and authored over 100 articles, book chapters, and papers. He is the author of the book Social Media Cultures and the first scholarly book about Twitter, with the second edition published by Polity Press in 2018. His work has been recognized internationally, including being named one of the World’s Top 2% of Scientists in Stanford University’s 2023 list for Communication & Media Studies and Sociology.
Research topics
- Computer Science
- Political Science
- World Wide Web
- Business
- Natural Language Processing
- Computer Security
- Medicine
- Internet privacy
- Artificial Intelligence
- Machine Learning
- Medical education
- Psychology
- Public relations
- Nursing
- Database
Selected publications
2026-01-22
book-chapter1st authorCorrespondingJournal of Clinical and Translational Science · 2026-04-01
articleOpen accessObjectives/Goals: This is a scoping review of the use of generative AI (GenAI) for qualitative analysis in the health sciences. The primary objectives are to summarize the methods used for qualitative analysis based on the approach (e.g., inductive vs. deductive), metrics for examining GenAI’s performance by approach type, and best practices for improving performance. Methods/Study Population: We searched six databases (PubMed, EMBASE, CINAHL, Scopus, Web of Science, and PsycINFO) using a comprehensive search string tailored to each database. We identified 5,853 unique results, of which 223 were identified as potentially relevant after review of abstracts. We will conduct a full manuscript review for each potentially relevant result to confirm inclusion, including use of GenAI for qualitative analysis of physical or mental health text data where a full-length paper is available. Two study team members will review each manuscript to confirm inclusion prior to data extraction and coding. We will also enter each manuscript into Yale Clarity, a secure GenAI platform powered by multiple large language models (e.g., ChatGPT, Claude), to examine GenAI’s capacity to facilitate manuscript screening and coding. Results/Anticipated Results: We will code included articles for: the research topic area; type of qualitative data analyzed (interview, focus group, medical chart, text-based digital or social media content); type of study (original or secondary data, review); type of qualitative analysis (thematic analysis, content analysis, grounded theory); type of approach (inductive, deductive); steps in analytic process that generative AI was used (initial open coding and sense making, final coding based on established codebook, identification of overarching themes and narratives); GenAI platform(s) and large language model(s) used; types of GenAI prompts used to facilitate analyses; processes and measures/metrics to evaluate the accuracy and quality of GenAI’s results; outcomes and methods used to increase GenAI’s accuracy and/or quality. Discussion/Significance of Impact: Qualitative research is essential to understand patient perspectives and increase treatment effectiveness and accessibility for all. To actualize GenAI’s potential to facilitate rapid and large-scale qualitative analysis, we first need to understand its strengths, weaknesses, and best practices for maximizing GenAI’s accuracy and quality.
2026-03-18
article<sec> <title>UNSTRUCTURED</title> . </sec>
JMIR Research Protocols · 2026-04-02
articleOpen access[This corrects the article DOI: 10.2196/63584.].
Quantifying the spread of racist content on fringe social media: A case study of Parler
Big Data & Society · 2025-04-29
articleOpen accessCorrespondingFew studies characterize the diffusion of racist content on fringe social media platforms. We demonstrate how racism spread on Parler, a far right, un(der)-moderated social media platform, and that a single comment to a racist post increases the likelihood a person will generate and propagate new racist content. We found that racism on Parler was a social “contagion.” Using 50,375 posts from 2018 to 2021 that contained racist remarks, we quantified the spread of racism from the posts-to-comments (micro) and user-to-user (macro) levels. Comments on racist posts were 21 times more likely to be racist than comments on non-racist posts. On an average, Parler users posted 166% more racist content after an engagement with a racist post. At the posts-to-comments level, the spread of racist sentiment is alarming within ethnic subgroups (e.g. anti-Jewish-specific comments were 191 times more likely to appear on “anti-Jewish” posts; anti-Black-specific comments were 227 times more likely to appear on “anti-Black” posts). The spread of racist rhetoric between subgroups is also significant, albeit lower than within subgroups, suggesting a spillover effect. Aggregate user posting patterns also suggest that the spread of racist rhetoric between subgroups is lower, but significant. Our findings therefore suggest interventions should target users actively engaging with racist content. Furthermore, our study provides evidence that Parler served as a gateway platform that radicalized users toward racist content production, underscoring the urgency of intervention. Given the drawbacks of traditional moderation strategies, we propose additional interventions, policies, and structural changes for social media platforms to mitigate racism online.
PLoS ONE · 2025-01-24 · 4 citations
articleOpen access1st authorCorrespondingInstead of turning to emergency phone systems, social media platforms, such as Twitter, have emerged as alternative and sometimes preferred venues for members of the public in the US to communicate during hurricanes and other natural disasters. However, relevant posts are likely to be missed by responders given the volume of content on platforms. Previous work successfully identified relevant posts through machine-learned methods, but depended on human annotators. Our study indicates that a GPU-accelerated version of BERTopic, a transformer-based topic model, can be used without human training to successfully discern topics during multiple hurricanes. We use 1.7 million tweets from four US hurricanes over seven years and categorize identified topics as temporal constructs. Some of the more prominent topics related to disaster relief, user concerns, and weather conditions. Disaster managers can use our model, data, and constructs to be aware of the types of themes social media users are producing and consuming during hurricanes.
Humanizing digital governance: human-centered sociological scholarship into digital governance
Information Communication & Society · 2025-12-08
articleSenior authorExploring The Obesity Risks of Ultra-Processed Diets
International Journal of Pharma and Bio Sciences · 2025-01-17 · 1 citations
article1st authorCorrespondingA Dashboard Approach to Monitoring Mpox-Related Discourse and Misinformation on Social Media
ArXiv.org · 2025-05-26
preprintOpen accessSenior authorMpox (formerly monkeypox) is a zoonotic disease caused by an orthopoxvirus closely related to variola and remains a significant global public health concern. During outbreaks, social media platforms like X (formerly Twitter) can both inform and misinform the public, complicating efforts to convey accurate health information. To support local response efforts, we developed a researcher-focused dashboard for use by public health stakeholders and the public that enables searching and visualizing mpox-related tweets through an interactive interface. Following the CDC's designation of mpox as an emerging virus in August 2024, our dashboard recorded a marked increase in tweet volume compared to 2023, illustrating the rapid spread of health discourse across digital platforms. These findings underscore the continued need for real-time social media monitoring tools to support public health communication and track evolving sentiment and misinformation trends at the local level.
Automating remix: generative AI, creative labor, and the decay of aura
Information Communication & Society · 2025-12-29
articleThe widespread adoption of Generative Artificial Intelligence Technology (GenAI) is prompting researchers to re-evaluate the relationship between technology and human creativity. While the pervading assumption is that GenAI will transform and not replace human creativity, this prediction overlooks the longstanding disempowerment of many creative workers in technological assemblages. We examine GenAI by contextualizing it as technology that accelerates and newly interarticulates two continuing capitalist trends. First, GenAI intensifies distantiation – the process by which representational technologies introduce physical distance between creators, artifacts, and audiences – eroding the unique quality of presence Walter Benjamin referred to as ‘aura.’ Second, GenAI automates remix practices, deriving its content from already increasingly varied datasets of human creative outputs. Though GenAI is a new technology, the zeitgeist surrounding it obscures how it contributes to these ongoing processes. We argue that when GenAI continues task automation by hyper-accelerating both distantiation and remix, it also intensifies the precarity of creative labor by prioritizing hyper-efficiency over human creative work.
Recent grants
Frequent coauthors
- 17 shared
Alexander Gross
- 12 shared
Grace Kong
Yale University
- 11 shared
Keri K. Stephens
- 9 shared
Juhan Lee
- 9 shared
Hassan Dashtian
- 7 shared
Brett W. Robertson
University of South Carolina
- 6 shared
William Roth Smith
University of Tennessee at Knoxville
- 6 shared
Ishank Arora
University of Southern California
Labs
Education
PhD
University of Cambridge
- Resume-aware match score
- Save to shortlist
- AI-drafted outreach
See your match with Dhiraj Murthy
PhdFit ranks faculty by your research interests, methods, and publications — grounded in their actual work, not templates.
- Free to start
- No credit card
- 30-second signup