An overview of real-world data infrastructure for cancer research
Authors
Price, GarethPeek, N.
Eleftheriou, I.
Spencer, K.
Paley, L.
Hogenboom, J.
van Soest, J.
Dekker, A.
van Herk, Marcel
Faivre-Finn, Corinne
Affiliation
Division of Cancer Sciences, University of Manchester, Manchester, UK; The Christie NHS Foundation Trust, Manchester, UK.Issue Date
2024
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Show full item recordAbstract
AIMS: There is increasing interest in the opportunities offered by Real World Data (RWD) to provide evidence where clinical trial data does not exist, but access to appropriate data sources is frequently cited as a barrier to RWD research. This paper discusses current RWD resources and how they can be accessed for cancer research. MATERIALS AND METHODS: There has been significant progress on facilitating RWD access in the last few years across a range of scales, from local hospital research databases, through regional care records and national repositories, to the impact of federated learning approaches on internationally collaborative studies. We use a series of case studies, principally from the UK, to illustrate how RWD can be accessed for research and healthcare improvement at each of these scales. RESULTS: For each example we discuss infrastructure and governance requirements with the aim of encouraging further work in this space that will help to fill evidence gaps in oncology. CONCLUSION: There are challenges, but real-world data research across a range of scales is already a reality. Taking advantage of the current generation of data sources requires researchers to carefully define their research question and the scale at which it would be best addressed.Citation
Price G, Peek N, Eleftheriou I, Spencer K, Paley L, Hogenboom J, et al. An Overview of Real-World Data Infrastructure for Cancer Research. Clinical oncology (Royal College of Radiologists (Great Britain)). 2024 Mar 19. PubMed PMID: 38631976. Epub 2024/04/18. eng.Journal
Clinical Oncology (Royal College of Radiologists)DOI
10.1016/j.clon.2024.03.011PubMed ID
38631976Additional Links
https://dx.doi.org/10.1016/j.clon.2024.03.011Type
ArticleLanguage
enae974a485f413a2113503eed53cd6c53
10.1016/j.clon.2024.03.011
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