A Comparative Study of a Novel AE-nLMS Filter and Two Traditional Filters in Predicting Respiration Induced Motion of the Tumor

Prediction of tumor motion is one of the important steps in active tracking of tumor and dynamic delivery of radiation dose to tumor. In this paper, we have presented a novel adaptive acceleration-enhanced normalized least mean squares (AE-nLMS) prediction filter based on the adaptive normalized least mean squares (nLMS) filter with predicted acceleration and ratio between the real and predicted acceleration taken into account. We have compared the performances of nLMS, artificial neural network (ANN), and AE-nLMS filter for predicting the respiration motion during normal and irregular respiration. The results revealed that the ANN filter has the best performance in the prediction of normal respiration motion, whereas the AE-nLMS filter outperformed other filters in the prediction of irregular respiration motion.

[1]  Alexander Schlaefer,et al.  A Fast Lane Approach to LMS prediction of respiratory motion signals , 2008, Biomed. Signal Process. Control..

[2]  Gregory C Sharp,et al.  Prediction of respiratory tumour motion for real-time image-guided radiotherapy. , 2004, Physics in medicine and biology.

[3]  Yan Yu,et al.  Partial transmission high-speed continuous tracking multi-leaf collimator for 4D adaptive radiation therapy , 2007, 2007 IEEE 7th International Symposium on BioInformatics and BioEngineering.

[4]  Yan Yu,et al.  Dynamics-based decentralized control of robotic couch and multi-leaf collimators for tracking tumor motion , 2008, 2008 IEEE International Conference on Robotics and Automation.