scispace - formally typeset
Open AccessJournal ArticleDOI

Breast Cancer Symptom Clusters Derived From Social Media and Research Study Data Using Improved $K$ -Medoid Clustering

TLDR
The clustering results suggest that some symptom clusters are consistent across social media data and clinical data, such as gastrointestinal related symptoms, menopausal symptoms, mood-change symptoms, cognitive impairment, and pain-related symptoms.
Abstract
Most cancer patients, including patients with breast cancer, experience multiple symptoms simultaneously while receiving active treatment. Some symptoms tend to occur together and may be related, such as hot flashes and night sweats. Co-occurring symptoms may have a multiplicative effect on patients’ functioning, mental health, and quality of life. Symptom clusters in the context of oncology were originally described as groups of three or more related symptoms. Some authors have suggested symptom clusters may have practical applications, such as the formulation of more effective therapeutic interventions that address the combined effects of symptoms rather than treating each symptom separately. Most studies that have sought to identify clusters in breast cancer survivors have relied on traditional research studies. Social media, such as online health-related forums, contain a bevy of user-generated content in the form of threads and posts, and could be used as a data source to identify and characterize symptom clusters among cancer patients. This paper seeks to determine patterns of symptom clusters in breast cancer survivors derived from both social media and research study data using improved $K$ -medoid clustering. A total of 50426 publicly available messages were collected from Medhelp.com and 653 questionnaires were collected as part of a research study. The network of symptoms built from social media was sparse compared with that of the research study data, making the social media data easier to partition. The proposed revised $K$ -medoid clustering helps to improve the clustering performance by reassigning some of the negative-average silhouette width (ASW) symptoms to other clusters after initial $K$ -medoid clustering. This retains an overall nondecreasing ASW and avoids the problem of trapping in local optima. The overall ASW, individual ASW, and improved interpretation of the final clustering solution suggest improvement. The clustering results suggest that some symptom clusters are consistent across social media data and clinical data, such as gastrointestinal related symptoms, menopausal symptoms, mood-change symptoms, cognitive impairment, and pain-related symptoms. We recommend an integrative approach taking advantage of both data sources. Social media data could provide context for the interpretation of clustering results derived from research study data, while research study data could compensate for the risk of lower precision and recall found using social media data.

read more

Citations
More filters
Journal ArticleDOI

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.
Journal ArticleDOI

Fast Reduced Set-Based Exemplar Finding and Cluster Assignment

TL;DR: A new fast exemplar-based clustering approach is proposed for a dataset with an arbitrary shape and number of clusters and theoretically analyze the proposed FEF from the perspective of the generalization performance of clustering and demonstrates the power of the proposed approach on several benchmarking datasets.
Journal ArticleDOI

A Data-Driven Pattern Extraction Method for Analyzing Bidding Behaviors in Power Markets

TL;DR: A data-driven analysis framework for bidding behavior is proposed in which a data standardization processing method is proposed that addresses the particularities of the bidding data and provides a fundamental dataset for further market analyses.

DeepHealth: Deep Learning for Health Informatics

TL;DR: This article presents a comprehensive review of research applying deep learning in health informatics with a focus on the last five years in the fields of medical imaging, electronic health records, genomics, sensing, and online communication health, as well as challenges and promising directions for future research.
Proceedings ArticleDOI

Survey on recent cancer classification systems for cancer diagnosis

TL;DR: Survey of latest research study that makes use of online and offline data for cancer classification using data mining technique for cancer detection or classification is made.
References
More filters
Journal ArticleDOI

Significance of Symptom Clustering in Palliative Care of Advanced Cancer Patients

TL;DR: Survival, functional performance, bone metastasis, and fluid accumulation were significantly associated with symptom clustering in six groups of patients, and the severity of psychological distress also related to their physical deterioration.
Journal ArticleDOI

Symptom clusters in patients with advanced-stage cancer referred for palliative radiation therapy in an outpatient setting.

TL;DR: More work needs to be done on symptom cluster research, especially in setting a consensus in methodology, as well as investigating the presence of symptom clusters in patients with advanced cancer.
Journal ArticleDOI

Potential for Electronic Health Records and Online Social Networking to Redefine Medical Research

TL;DR: The future confluence of health information technologies will enable researchers and clinicians to reveal novel therapies and insights into treatments and disease management, as well as environmental and genomic interactions, at an unprecedented population scale.
Journal ArticleDOI

Electronic health records in the age of social networks and global telecommunications.

TL;DR: This proposed framework includes 7 components based on resources and knowledge that exist today, and may contribute to current efforts to provide the public with access to tools that meet the public’s needs and expectations.
Journal Article

Symptom clusters in patients with newly-diagnosed brain tumors.

TL;DR: The results suggest that interventions that target both cognitive function and mood should be considered in this patient population, and further research on symptom clusters in brain tumor patients is needed.
Related Papers (5)