Mining news media for understanding public health concerns

Author:

Zolnoori Maryam,Huang MingORCID,Patten Christi A.,Balls-Berry Joyce E.,Goudarzvand Somaieh,Brockman Tabetha A.,Sagheb Elham,Yao Lixia

Abstract

Abstract Introduction: News media play an important role in raising public awareness, framing public opinions, affecting policy formulation, and acknowledgment of public health issues. Traditional qualitative content analysis for news sentiments and focuses are time-consuming and may not efficiently convey sentiments nor the focuses of news media. Methods: We used descriptive statistics and state-of-art text mining to conduct sentiment analysis and topic modeling, to efficiently analyze over 3 million Reuters news articles during 2007–2017 for identifying their coverage, sentiments, and focuses for public health issues. Based on the top keywords from public health scientific journals, we identified 10 major public health issues (i.e., “air pollution,” “alcohol drinking,” “asthma,” “depression,” “diet,” “exercise,” “obesity,” “pregnancy,” “sexual behavior,” and “smoking”). Results: The news coverage for seven public health issues, “Smoking,” “Exercise,” “Alcohol drinking,” “Diet,” “Obesity,” “Depression,” and “Asthma” decreased over time. The news coverage for “Sexual behavior,” “Pregnancy,” and “Air pollution” fluctuated during 2007–2017. The sentiments of the news articles for three of the public health issues, “exercise,” “alcohol drinking,” and “diet” were predominately positive and associated such as “energy.” Sentiments for the remaining seven public health issues were mainly negative, linked to negative terms, e.g., diseases. The results of topic modeling reflected the media’s focus on public health issues. Conclusions: Text mining methods may address the limitations of traditional qualitative approaches. Using big data to understand public health needs is a novel approach that could help clinical and translational science awards programs focus on community-engaged research efforts to address community priorities.

Publisher

Cambridge University Press (CUP)

Subject

General Medicine

Reference73 articles.

1. Exercise Training in Patients with Heart Disease: Review of Beneficial Effects and Clinical Recommendations

2. 17. Apache Software Foundation. Apache Solr; 7.0.1; Retrieved from http://lucene.apache.org/solr/. Accessed October 5, 2017.

3. DataMed – an open source discovery index for finding biomedical datasets

4. Expert Opinion and Coherence Based Topic Modeling

5. 58. Crist, C . Kids with asthma often leave doctor’s office with unanswered questions. 2019; Retrieved from https://www.reuters.com/article/us-health-asthma-kids/kids-with-asthma-often-leave-doctors-office-with-unanswered-questions-idUSKCN1QF2TP.

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