From multisource data to clinical decision aids in radiation oncology: The need for a clinical data science community

Joanna Kazmierska, Andrew Hope, Emiliano Spezi, Sam Beddar, William H Nailon, Biche Osong, Anshu Ankolekar, Ananya Choudhury, Andre Dekker, Kathrine Røe Redalen, Alberto Traverso

Research output: Contribution to journalReview articlepeer-review

Abstract

Big data are no longer an obstacle; now, by using artificial intelligence (AI), previously undiscovered knowledge can be found in massive data collections. The radiation oncology clinic daily produces a large amount of multisource data and metadata during its routine clinical and research activities. These data involve multiple stakeholders and users. Because of a lack of interoperability, most of these data remain unused, and powerful insights that could improve patient care are lost. Changing the paradigm by introducing powerful AI analytics and a common vision for empowering big data in radiation oncology is imperative. However, this can only be achieved by creating a clinical data science community in radiation oncology. In this work, we present why such a community is needed to translate multisource data into clinical decision aids.

Original languageEnglish
Pages (from-to)43-54
Number of pages12
JournalRadiotherapy & Oncology
Volume153
Early online date13 Oct 2020
DOIs
Publication statusE-pub ahead of print - 13 Oct 2020

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