Examining The Association Of Academic Rank And Productivity With Metrics Of Twitter Utilization Amongst Kidney Cancer Specialists

Nicholas J. Salgia,Matthew Feng, Dhruv Prajapati, Richard Harwood, Michael Nissanoff,Yash Dara,Nora Ruel,Meghan M. Salgia,Sumanta K. Pal

KIDNEY CANCER(2020)

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Abstract
BACKGROUND: Twitter has emerged as an important platform for conversation surrounding cancer-related topics. As use has proliferated, a better classification of physicians engaging in cancer discussions on Twitter is warranted.OBJECTIVES: To better characterize the medical specialists involved in disseminating kidney cancer information on social media through academic and Twitter metrics.METHODS: Clinical practitioners with an expertise in kidney cancer were identified. Demographics, metrics of academic rank and productivity, and Twitter usage data were collected. Correlations were calculated for the generation of a model predictive of the number of Twitter followers. Analysis of the experts' Twitter content was performed.RESULTS: Among 59 kidney cancer experts identified, 14 (23.7%) were assistant professors, 24 (40.7%) were associate professors, and 21 (35.6%) were full professors. A total of 5424 tweets were analyzed, 86% of which were medically-related. We identified several differences between academic rank and Twitter variables. Associate professors registered a greater median number of followers subscribed to their Twitter accounts (2360) versus assistant professors (1253) and full professors (934) (p = 0.03) and a greater median number of accounts they themselves followed (752 vs. 290 vs. 235, respectively; p = 0.0009). Use of a more generalized approach (ANCOVA) showed that the most predictive variables for the number of followers are number of tweets, H-index, and percentage of medical tweets (R-2 = 0.70).CONCLUSIONS: This study supported correlations between metrics of academic and Twitter activity. The generation of a model to predict the number of followers on Twitter is novel - future work will validate this in other disease types.
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Key words
Twitter, kidney cancer, renal cell carcinoma, social media
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