| Literature DB >> 27979370 |
Dirk De Ruysscher1, Gilles Defraene2, Bram L T Ramaekers3, Philippe Lambin4, Erik Briers5, Hilary Stobart6, Tim Ward7, Søren M Bentzen8, Tjeerd Van Staa9, David Azria10, Barry Rosenstein10, Sarah Kerns11, Catharine West12.
Abstract
The optimal design and patient selection for interventional trials in radiogenomics seem trivial at first sight. However, radiogenomics do not give binary information like in e.g. targetable mutation biomarkers. Here, the risk to develop severe side effects is continuous, with increasing incidences of side effects with higher doses and/or volumes. In addition, a multi-SNP assay will produce a predicted probability of developing side effects and will require one or more cut-off thresholds for classifying risk into discrete categories. A classical biomarker trial design is therefore not optimal, whereas a risk factor stratification approach is more appropriate. Patient selection is crucial and this should be based on the dose-response relations for a specific endpoint. Alternatives to standard treatment should be available and this should take into account the preferences of patients. This will be discussed in detail.Entities:
Keywords: Biomarkers; Patient selection; Radiogenomics; Trial design
Mesh:
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Year: 2016 PMID: 27979370 PMCID: PMC5557371 DOI: 10.1016/j.radonc.2016.11.003
Source DB: PubMed Journal: Radiother Oncol ISSN: 0167-8140 Impact factor: 6.280