Mining Facebook Data of People with Rare Diseases: A Content-Based and Temporal Analysis

Author:

Subirats Laia,Reguera Natalia,Bañón Antonio,Gómez-Zúñiga Beni,Minguillón Julià,Armayones ManuelORCID

Abstract

This research characterized how Facebook deals with rare diseases. This characterization included a content-based and temporal analysis, and its purpose was to help users interested in rare diseases to maximize the engagement of their posts and to help rare diseases organizations to align their priorities with the interests expressed in social networks. This research used Netvizz to download Facebook data, word clouds in R for text mining, a log-likelihood measure in R to compare texts and TextBlob Python library for sentiment analysis. The Facebook analysis shows that posts with photos and positive comments have the highest engagement. We also observed that words related to diseases, attention, disability and services have a lot of presence in the decalogue of priorities (which serves for all associations to work on the same objectives and provides the lines of action to be followed by political decision makers) and little on Facebook, and words of gratitude are more present on Facebook than in the decalogue. Finally, the temporal analysis shows that there is a high variation between the polarity average and the hour of the day.

Publisher

MDPI AG

Subject

Health, Toxicology and Mutagenesis,Public Health, Environmental and Occupational Health

Reference37 articles.

1. Negotiating Prices of Drugs for Rare Diseaseshttp://www.who.int/bulletin/volumes/94/10/15-163519/en

2. Decalogue of Prioritieshttp://www.enfermedades-raras.orgimages/dia_mundial/pdf/Decalogoprioridades.pdf

3. Insights into rare diseases from social media surveys

4. Assessing the Viability of Social Media for Disseminating Evidence-Based Nutrition Practice Guideline Through Content Analysis of Twitter Messages and Health Professional Interviews: An Observational Study

5. Mining Facebook Data of People with Rare Diseases

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