A Pipeline to Understand Emerging Illness via Social Media Data Analysis: A Case Study on Breast Implant Illness
Vishal Dey, Peter Krasniak, Minh Nguyen, Clara Lee, Xia Ning

TL;DR
This study develops a social media data analysis pipeline using NLP and topic modeling to identify key attributes and emerging concerns related to breast implant illness, demonstrating social media's potential in early illness understanding.
Contribution
The paper introduces a novel pipeline combining NLP and topic modeling to analyze social media data for understanding emerging illnesses like BII, a method not previously applied in this context.
Findings
Identified topics related to toxicity, cancer, and mental health issues associated with BII.
Revealed common self-reported issues such as rupture, infection, pain, and fatigue.
Highlighted emerging concerns like autoimmune disorders and mental health problems linked to breast implants.
Abstract
Background: A new illness could first come to the public attention over social media before it is medically defined, formally documented or systematically studied. One example is a phenomenon known as breast implant illness (BII) that has been extensively discussed on social media, though vaguely defined in medical literature. Objectives: The objective of this study is to construct a data analysis pipeline to understand emerging illness using social media data, and to apply the pipeline to understand key attributes of BII. Methods: We conducted a pipeline of social media data analysis using Natural Language Processing (NLP) and topic modeling. We extracted mentions related to signs/symptoms, diseases/disorders and medical procedures using the Clinical Text Analysis and Knowledge Extraction System (cTAKES) from social media data. We mapped the mentions to standard medical concepts. We…
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