Computational Content Analysis of Negative Tweets for Obesity, Diet, Diabetes, and Exercise
This work provides a framework for public health professionals to monitor public opinions on health topics, though it is incremental in applying existing text mining methods to new data.
The study analyzed 6 million tweets to characterize negative health sentiments related to diet, diabetes, exercise, and obesity, identifying prominent topics that align with existing literature on morbidity issues.
Social media based digital epidemiology has the potential to support faster response and deeper understanding of public health related threats. This study proposes a new framework to analyze unstructured health related textual data via Twitter users' post (tweets) to characterize the negative health sentiments and non-health related concerns in relations to the corpus of negative sentiments, regarding Diet Diabetes Exercise, and Obesity (DDEO). Through the collection of 6 million Tweets for one month, this study identified the prominent topics of users as it relates to the negative sentiments. Our proposed framework uses two text mining methods, sentiment analysis and topic modeling, to discover negative topics. The negative sentiments of Twitter users support the literature narratives and the many morbidity issues that are associated with DDEO and the linkage between obesity and diabetes. The framework offers a potential method to understand the publics' opinions and sentiments regarding DDEO. More importantly, this research provides new opportunities for computational social scientists, medical experts, and public health professionals to collectively address DDEO-related issues.