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Decision support systems for personalized and participative radiation oncology.

Authors :
Lambin, Philippe
Zindler, Jaap
Vanneste, Ben G.L.
De Voorde, Lien Van
Eekers, Daniëlle
Compter, Inge
Panth, Kranthi Marella
Peerlings, Jurgen
Larue, Ruben T.H.M.
Deist, Timo M.
Jochems, Arthur
Lustberg, Tim
van Soest, Johan
de Jong, Evelyn E.C.
Even, Aniek J.G.
Reymen, Bart
Rekers, Nicolle
van Gisbergen, Marike
Roelofs, Erik
Carvalho, Sara
Source :
Advanced Drug Delivery Reviews. Jan2017, Vol. 109, p131-153. 23p.
Publication Year :
2017

Abstract

A paradigm shift from current population based medicine to personalized and participative medicine is underway. This transition is being supported by the development of clinical decision support systems based on prediction models of treatment outcome. In radiation oncology, these models ‘learn’ using advanced and innovative information technologies (ideally in a distributed fashion — please watch the animation: http://youtu.be/ZDJFOxpwqEA ) from all available/appropriate medical data (clinical, treatment, imaging, biological/genetic, etc.) to achieve the highest possible accuracy with respect to prediction of tumor response and normal tissue toxicity. In this position paper, we deliver an overview of the factors that are associated with outcome in radiation oncology and discuss the methodology behind the development of accurate prediction models, which is a multi-faceted process. Subsequent to initial development/validation and clinical introduction, decision support systems should be constantly re-evaluated (through quality assurance procedures) in different patient datasets in order to refine and re-optimize the models, ensuring the continuous utility of the models. In the reasonably near future, decision support systems will be fully integrated within the clinic, with data and knowledge being shared in a standardized, dynamic, and potentially global manner enabling truly personalized and participative medicine. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
0169409X
Volume :
109
Database :
Academic Search Index
Journal :
Advanced Drug Delivery Reviews
Publication Type :
Academic Journal
Accession number :
121220748
Full Text :
https://doi.org/10.1016/j.addr.2016.01.006