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

机译:来自社交媒体的乳腺癌症状群和使用改进的K-Medoid聚类的研究数据

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摘要

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. The present study 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 50,426 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 to 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 re-assigning some of the negative-ASW (average silhouette width) symptoms to other clusters after initial K-Medoid clustering. This retains an overall non-decreasing 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 (GI) 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.
机译:大多数癌症患者,包括乳腺癌患者,在接受积极治疗的同时会出现多种症状。某些症状往往同时出现,并且可能与之相关,例如潮热和盗汗。共同出现的症状可能对患者的功能,心理健康和生活质量产生倍增作用。肿瘤学中的症状簇最初被描述为三个或更多相关症状的组合。一些作者建议症状群可能有实际应用,例如制定更有效的治疗干预措施,以解决症状的综合影响,而不是分别治疗每种症状。大多数试图确定乳腺癌幸存者中的簇的研究都依赖于传统研究。诸如在线健康相关论坛之类的社交媒体以线程和帖子的形式包含了大量用户生成的内容,并且可以用作识别和表征癌症患者中症状群的数据源。本研究旨在确定使用社交媒体和改进的K-Medoid聚类分析方法从社会媒体和研究数据中得出的乳腺癌幸存者症状群集的模式。作为研究的一部分,从Medhelp.com总共收集了50,426条公开可用的消息,并收集了653个问卷。与研究数据相比,由社交媒体建立的症状网络稀疏,这使得社交媒体数据更易于划分。拟议的修订的K-Medoid聚类通过在初始K-Medoid聚类后将一些负ASW(平均轮廓宽度)症状重新分配给其他聚类,从而有助于改善聚类性能。这样就保留了总体上不降低的ASW,并避免了陷入局部最优的问题。总体ASW,单个ASW和对最终聚类解决方案的改进解释表明有所改进。聚类结果表明,在社交媒体数据和临床数据之间,某些症状聚类是一致的,例如胃肠道(GI)相关症状,更年期症状,情绪变化症状,认知障碍和疼痛相关症状。我们建议综合利用两种数据源。社交媒体数据可以为解释研究数据得出的聚类结果提​​供背景,而研究数据可以弥补使用社交媒体数据发现的准确性和召回率较低的风险。

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