Abstract

BackgroundThe increasing use of social media and mHealth apps has generated new opportunities for health care consumers to share information about their health and well-being. Information shared through social media contains not only medical information but also valuable information about how the survivors manage disease and recovery in the context of daily life.ObjectiveThe objective of this study was to determine the feasibility of acquiring and modeling the topics of a major online breast cancer support forum. Breast cancer patient support forums were selected to discover the hidden, less obvious aspects of disease management and recovery.MethodsFirst, manual topic categorization was performed using qualitative content analysis (QCA) of each individual forum board. Second, we requested permission from the Breastcancer.org Community for a more in-depth analysis of the postings. Topic modeling was then performed using open source software Machine Learning Language Toolkit, followed by multiple linear regression (MLR) analysis to detect highly correlated topics among the different website forums.ResultsQCA of the forums resulted in 20 categories of user discussion. The final topic model organized >4 million postings into 30 manageable topics. Using qualitative analysis of the topic models and statistical analysis, we grouped these 30 topics into 4 distinct clusters with similarity scores of ≥0.80; these clusters were labeled Symptoms & Diagnosis, Treatment, Financial, and Family & Friends. A clinician review confirmed the clinical significance of the topic clusters, allowing for future detection of actionable items within social media postings. To identify the most significant topics across individual forums, MLR demonstrated that 6 topics—based on the Akaike information criterion values ranging from −642.75 to −412.32—were statistically significant.ConclusionsThe developed method provides an insight into the areas of interest and concern, including those not ascertainable in the clinic. Such topics included support from lay and professional caregivers and late side effects of therapy that consumers discuss in social media and may be of interest to clinicians. The developed methods and results indicate the potential of social media to inform the clinical workflow with regards to the impact of recovery on daily life.

Highlights

  • MethodsHealth care is currently undergoing transformation by capitalizing on information technology and patient-consumer engagement and activation through health information technology such as patient portals and mHealth apps

  • This study explores approaches for analyzing the social media data and extract potential valuable information on managing health and well-being beyond the context of health care

  • The research team performed via qualitative content analysis (QCA) a manual categorization of topics discussed in the 5 selected public websites

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Summary

Introduction

MethodsHealth care is currently undergoing transformation by capitalizing on information technology and patient-consumer engagement and activation through health information technology such as patient portals and mHealth apps. Social media retains large amounts of valuable information about consumers’ contextual and environmental (day-to-day) factors while managing their health and well-being; such issues form a major foundation of human health. Analyzing those free-text data to discover these hidden aspects of health consumers’ lives and understand their health information needs beyond those routinely addressed by health care providers is challenging [3]. Conclusions: The developed method provides an insight into the areas of interest and concern, including those not ascertainable in the clinic Such topics included support from lay and professional caregivers and late side effects of therapy that consumers discuss in social media and may be of interest to clinicians. The developed methods and results indicate the potential of social media to inform the clinical workflow with regards to the impact of recovery on daily life

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