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Open AccessJournal ArticleDOI

Symptom clusters in women with breast cancer: an analysis of data from social media and a research study

TLDR
Comparing and contrasts symptom cluster patterns derived from messages on a breast cancer forum with those from a symptom checklist completed by breast cancer survivors participating in a research study shows the copious amount of data generated by social media outlets can augment findings from traditional data sources.
Abstract
User-generated content on social media sites, such as health-related online forums, offers researchers a tantalizing amount of information, but concerns regarding scientific application of such data remain. This paper compares and contrasts symptom cluster patterns derived from messages on a breast cancer forum with those from a symptom checklist completed by breast cancer survivors participating in a research study. Over 50,000 messages generated by 12,991 users of the breast cancer forum on MedHelp.org were transformed into a standard form and examined for the co-occurrence of 25 symptoms. The k-medoid clustering method was used to determine appropriate placement of symptoms within clusters. Findings were compared with a similar analysis of a symptom checklist administered to 653 breast cancer survivors participating in a research study. The following clusters were identified using forum data: menopausal/psychological, pain/fatigue, gastrointestinal, and miscellaneous. Study data generated the clusters: menopausal, pain, fatigue/sleep/gastrointestinal, psychological, and increased weight/appetite. Although the clusters are somewhat different, many symptoms that clustered together in the social media analysis remained together in the analysis of the study participants. Density of connections between symptoms, as reflected by rates of co-occurrence and similarity, was higher in the study data. The copious amount of data generated by social media outlets can augment findings from traditional data sources. When different sources of information are combined, areas of overlap and discrepancy can be detected, perhaps giving researchers a more accurate picture of reality. However, data derived from social media must be used carefully and with understanding of its limitations.

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A systematic review of natural language processing and text mining of symptoms from electronic patient-authored text data

TL;DR: Though there are computational challenges with accessing ePAT, the depth of information provided directly from patients offers new horizons for precision medicine, characterization of sub-clinical symptoms, and the creation of personal health libraries as outlined by the National Library of Medicine.
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Mining social media data: How are research sponsors and researchers addressing the ethical challenges?:

TL;DR: There is a deficit in ethical guidance for research involving data extracted from social media, and a pressing need to raise awareness of their ethical challenges and provide actionable recommendations for ethical research practice.
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A systematic literature review of machine learning in online personal health data.

TL;DR: It is indicated that ML can be effectively applied to UGC in facilitating the description and inference of personal health and future research needs to focus on mitigating bias introduced when building study cohorts, creating features from free text, improving clinical creditability of UGC, and model interpretability.
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Mining of Textual Health Information from Reddit: Analysis of Chronic Diseases With Extracted Entities and Their Relations

TL;DR: This study showed that people are eager to share their personal experience with chronic diseases on social media platforms despite possible privacy and security issues.
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Symptom Clusters in Breast Cancer Survivors: A Latent Class Profile Analysis.

TL;DR: Results suggest that certain factors place patients at high risk for symptom burden, which can guide tailored interventions in prevention and treatment strategies that target a group of symptoms.
References
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Social Media Update 2016

TL;DR: Pew Research Center has documented the wide variety of ways in which Americans use social media to seek out information and interact with others, and half of the public has turned to these sites to learn about the 2016 presidential election.

Computer and Internet Use in the United States: 2003

TL;DR: The presence and use of computers has grown considerably over the past few decades, and nowadays, people use computers for an even wider range of uses including online banking, entertainment, socializing, and accessing health care.
Journal ArticleDOI

The Scientific Research Potential of Virtual Worlds

TL;DR: This article uses Second Life and World of Warcraft as two very different examples of current virtual worlds that foreshadow future developments, introducing a number of research methodologies that scientists are now exploring, including formal experimentation, observational ethnography, and quantitative analysis of economic markets or social networks.
Journal Article

Symptom clusters and their effect on the functional status of patients with cancer.

TL;DR: This study provides beginning insights into the effect of a symptom cluster on patients' functional status and healthcare professionals need to be aware of the presence of symptom clusters and their possible synergistic adverse effect on Patients' future morbidity.
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