Publication date: Available online 6 November 2017
Source:Radiotherapy and Oncology
Author(s): Aniek J.G. Even, Bart Reymen, Matthew D. La Fontaine, Marco Das, Felix M. Mottaghy, José S.A. Belderbos, Dirk De Ruysscher, Philippe Lambin, Wouter van Elmpt
Background and purposeWe aimed to identify tumour subregions with characteristic phenotypes based on pre-treatment multi-parametric functional imaging and correlate these subregions to treatment outcome. The subregions were created using imaging of metabolic activity (FDG-PET/CT), hypoxia (HX4-PET/CT) and tumour vasculature (DCE-CT).Materials and methods36 non-small cell lung cancer (NSCLC) patients underwent functional imaging prior to radical radiotherapy. Kinetic analysis was performed on DCE-CT scans to acquire blood flow (BF) and volume (BV) maps. HX4-PET/CT and DCE-CT scans were non-rigidly co-registered to the planning FDG-PET/CT. Two clustering steps were performed on multi-parametric images: first to segment each tumour into homogeneous subregions (i.e. supervoxels) and second to group the supervoxels of all tumours into phenotypic clusters. Patients were split based on the absolute or relative volume of supervoxels in each cluster; overall survival was compared using a log-rank test.ResultsUnsupervised clustering of supervoxels yielded four independent clusters. One cluster (high hypoxia, high FDG, intermediate BF/BV) related to a high-risk tumour type: patients assigned to this cluster had significantly worse survival compared to patients not in this cluster (p = 0.035).ConclusionsWe designed a subregional analysis for multi-parametric imaging in NSCLC, and showed the potential of subregion classification as a biomarker for prognosis. This methodology allows for a comprehensive data-driven analysis of multi-parametric functional images.
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Medicine by Alexandros G. Sfakianakis,Anapafseos 5 Agios Nikolaos 72100 Crete Greece,00302841026182,00306932607174,alsfakia@gmail.com,
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Τρίτη 7 Νοεμβρίου 2017
Clustering of multi-parametric functional imaging to identify high-risk subvolumes in non-small cell lung cancer
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Publication date: September 2017 Source: European Journal of Surgical Oncology (EJSO), Volume 43, Issue 9 http://ift.tt/2gezJ2D
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Publication date: January–February 2018 Source: Materials Today, Volume 21, Issue 1 Author(s): David Bradley http://ift.tt/2BP...
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