Resum
© 2014 Elsevier Ltd. In this work we present a comprehensive computational framework to help in the clinical assessment of cancer response from a pair of time consecutive oncological PET-CT scans. In this scenario, the design and implementation of a supervised machine learning system to predict and quantify cancer progression or response conditions by introducing a novel feature set that models the underlying clinical context is described. Performance results in 100 clinical cases (corresponding to 200 whole body PET-CT scans) in comparing expert-based visual analysis and classifier decision making show up to 70% accuracy within a completely automatic pipeline and 90% accuracy when providing the system with expert-guided PET tumor segmentation masks.
| Idioma original | Anglès |
|---|---|
| Pàgines (de-a) | 92-99 |
| Revista | Computers in Biology and Medicine |
| Volum | 55 |
| DOIs | |
| Estat de la publicació | Publicada - 1 de des. 2014 |