Characterizing Diabetes, Diet, Exercise, and Obesity Comments on Twitter
Amir Karami, Alicia A. Dahl, Gabrielle Turner-McGrievy, Hadi Kharrazi,, Jr., George Shaw

TL;DR
This study analyzes 4.5 million tweets to understand public opinions on diabetes, diet, exercise, and obesity, revealing key topic correlations and subtopics to aid health communication and intervention strategies.
Contribution
It introduces a multi-component semantic and linguistic framework for large-scale analysis of social media data related to DDEO health issues.
Findings
8% of tweets discussed diabetes
23.7% discussed diet
51.7% discussed obesity
Abstract
Social media provide a platform for users to express their opinions and share information. Understanding public health opinions on social media, such as Twitter, offers a unique approach to characterizing common health issues such as diabetes, diet, exercise, and obesity (DDEO), however, collecting and analyzing a large scale conversational public health data set is a challenging research task. The goal of this research is to analyze the characteristics of the general public's opinions in regard to diabetes, diet, exercise and obesity (DDEO) as expressed on Twitter. A multi-component semantic and linguistic framework was developed to collect Twitter data, discover topics of interest about DDEO, and analyze the topics. From the extracted 4.5 million tweets, 8% of tweets discussed diabetes, 23.7% diet, 16.6% exercise, and 51.7% obesity. The strongest correlation among the topics was…
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