| Literature DB >> 27238760 |
Sivanagaraja Tatinati1, Kianoush Nazarpour2, Wei Tech Ang3, Kalyana C Veluvolu4.
Abstract
Successful treatment of tumors with motion-adaptive radiotherapy requires accurate prediction of respiratory motion, ideally with a prediction horizon larger than the latency in radiotherapy system. Accurate prediction of respiratory motion is however a non-trivial task due to the presence of irregularities and intra-trace variabilities, such as baseline drift and temporal changes in fundamental frequency pattern. In this paper, to enhance the accuracy of the respiratory motion prediction, we propose a stacked regression ensemble framework that integrates heterogeneous respiratory motion prediction algorithms. We further address two crucial issues for developing a successful ensemble framework: (1) selection of appropriate prediction methods to ensemble (level-0 methods) among the best existing prediction methods; and (2) finding a suitable generalization approach that can successfully exploit the relative advantages of the chosen level-0 methods. The efficacy of the developed ensemble framework is assessed with real respiratory motion traces acquired from 31 patients undergoing treatment. Results show that the developed ensemble framework improves the prediction performance significantly compared to the best existing methods.Entities:
Keywords: Ensemble learning; Motion-adaptive radiotherapy; Nonlinear mapping; Respiratory motion prediction
Mesh:
Year: 2016 PMID: 27238760 DOI: 10.1016/j.medengphy.2016.04.021
Source DB: PubMed Journal: Med Eng Phys ISSN: 1350-4533 Impact factor: 2.242