Automated extraction of treatment patterns from social media posts: an exploratory analysis in renal cell carcinoma

Author:

Ramagopalan Sreeram V1,Malcolm Bill2,Merinopoulou Evie3,McDonald Laura1,Cox Andrew3

Affiliation:

1. Centre for Observational Research & Data Sciences, Bristol-Myers Squibb, Uxbridge UB8 1DH, UK

2. Worldwide Health Economics & Outcomes Research, Bristol-Myers Squibb, Uxbridge UB8 1DH, UK

3. Real-World Evidence, Evidera, London W6 8DL, UK

Abstract

Aim: The use of health-related social media forums by patients is increasing and the size of these forums creates a rich record of patient opinions and experiences, including treatment histories. This study aimed to understand the possibility of extracting treatment patterns in an automated manner for patients with renal cell carcinoma, using natural language processing, rule-based decisions, and machine learning. Patients & methods: Obtained results were compared with those from published observational studies. Results: 42 comparisons across seven therapies, three lines of treatment, and two-time periods were made; 37 of the social media estimates fell within the variation seen across the published studies. Conclusion: This exploratory work shows that estimating treatment patterns from social media is possible and generates results within the variation seen in published studies, although further development and validation of the approach is needed.

Publisher

Future Medicine Ltd

Subject

Cancer Research,Oncology,General Medicine

Reference30 articles.

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2. National Voices and Nesta. Peer Support: what is it and does it work? Summarising evidence from more than 1000 studies (2015). www.nationalvoices.org.uk/sites/default/files/public/publications/peer_support_-_what_is_it_and_does_it_work.pdf

3. Individual and social benefits of online discussion forums

4. Ennis-O'Connor M. How online patient communities are changing the face of cancer care (2014). https://blogs.bmj.com/ebn/2014/03/03/how-online-patient-communities-are-changing-the-face-of-cancer-care/

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