AstraZeneca, Gaithersburg, MD.
AstraZeneca, Waltham, MA.
JCO Clin Cancer Inform. 2024 Aug;8:e2400038. doi: 10.1200/CCI.24.00038.
Understanding the real-world experience of patients with early breast cancer (eBC) is imperative for optimizing outcomes and evolving patient care. However, there is a lack of patient-level data, hindering clinical development. This social listening study was performed to understand patient insights into symptoms and impacts of hormone therapy (HT) for eBC using posts from patient forums on breastcancer.org to inform future clinical research.
Natural language processing (NLP) and machine learning techniques were used to identify themes related to eBC from a sample of 500,000 posts. After relevant data selection, 362,074 eBC posts were retained for further analysis of symptoms and impacts related to HT, as well as insights into symptom severity, pain locations, and symptom management using exercise and yoga.
Overall, 32 symptoms and nine impacts had significant associations with ≥one HT. Hot flush (relative risk [RR], 6.70 [95% CI, 3.36 to 13.36]), arthralgia (RR, 6.67 [95% CI, 3.53 to 12.59]), weight increased (RR, 4.83 [95% CI, 3.20 to 7.28]), mood swings (RR, 7.36 [95% CI, 5.75 to 9.42]), insomnia (RR, 4.76 [95% CI, 3.14 to 7.22]), and depression (RR, 3.05 [95% CI, 1.71 to 5.44]) demonstrated the strongest associations. Severe headache, dizziness, back pain, and muscle spasms showed significant associations with ≥one HT despite their low overall prevalence in eBC posts.
The social listening approach allowed the identification of real-world insights from posts specific to eBC HT from a large-scale online breast cancer forum that captured experiences from a uniquely diverse group of patients. Using NLP has a potential to scale analysis of patient feedback and reveal actionable insights into patient experiences of treatment that can inform the development of future therapies and improve the care of patients with eBC.
了解早期乳腺癌(eBC)患者的真实体验对于优化治疗效果和改进患者护理至关重要。然而,目前缺乏患者层面的数据,这阻碍了临床研究的发展。本项社会聆听研究旨在利用 breastcancer.org 上的患者论坛帖子,通过自然语言处理(NLP)和机器学习技术,了解患者对 eBC 激素治疗(HT)的症状和影响的见解,为未来的临床研究提供信息。
从 50 万帖子中,使用 NLP 和机器学习技术来识别与 eBC 相关的主题。经过相关数据选择,保留了 362,074 个 eBC 帖子,用于进一步分析与 HT 相关的症状和影响,以及对症状严重程度、疼痛部位的见解,以及使用运动和瑜伽进行症状管理。
总体而言,有 32 种症状和 9 种影响与至少一种 HT 有显著关联。热潮红(相对风险 [RR],6.70 [95% CI,3.36 至 13.36])、关节痛(RR,6.67 [95% CI,3.53 至 12.59])、体重增加(RR,4.83 [95% CI,3.20 至 7.28])、情绪波动(RR,7.36 [95% CI,5.75 至 9.42])、失眠(RR,4.76 [95% CI,3.14 至 7.22])和抑郁(RR,3.05 [95% CI,1.71 至 5.44])与 HT 的关联最强。尽管在 eBC 帖子中,严重头痛、头晕、背痛和肌肉痉挛的总体发生率较低,但它们与至少一种 HT 有显著关联。
通过社会聆听方法,从一个大规模的在线乳腺癌论坛中,从与 eBC HT 相关的帖子中获取了真实世界的见解,该论坛从一个独特的多样化患者群体中捕捉到了患者的体验。使用 NLP 有潜力对患者反馈进行分析,并揭示有关治疗体验的可操作见解,为未来疗法的发展提供信息,并改善 eBC 患者的护理。